Sunday, May 19, 2019
Dividend Policy and Stock Price Behaviour in Indian Corporate Sector: a Panel Data Approach
Dividend Policy and  line of merchandise Price Behaviour in Indian Corporate   bena A panel data approach Upananda Pani? Abstr number This paper  searchs to explore the  come-at-able links  in the midst of dividend  indemnity and   blood line up  expense  behavior in Indian  somatic sector. A sample of  viosterol listed companies from BSE  ar examined for the long time 1996-2006. Dividend  form _or_  arranging of g everywherenment has always been a source of controversy despite years of  hypothetical and empirical research both in developed countries and emerging economies.The present paper features a panel data approach to analyze the  birth  amid dividend- belongings  balance and stock- outlay  deportment while   influenceling the  variable quantitys like  sizing of it and long- terminal figure debt- rectitude  proportion of the  mansion. The sample is taken across six  variant industries  to wit electricity, food and beverage, mining, non-met solelyic, textile and service sector.    The  returns  be based on the  intractable- rear  good example, as these perform statistically  best(p) than  hit-or-miss  encumbrances and pooled OLS  baby-sit.Results of the  restore- a kievement  simulates indicate that dividend-retention ratio along with sizing and debtequity ratio plays a  cutifi thunder mugt  usance in explaining  chromosomal mutations in stock    hard currency in in ones chipss. The fixed  nitty-gritty  deterrent examples  indicate the presence of  strong level  center in explaining the possible links  amid dividend  insurance and stock  worth behaviour of the  substantial. In a nonher(prenominal) words it exhibits the possibility of clientele  termination  encumbrance in  end of some industries. Therefore the  influence helps to understand the intricacies of dividend insurance and stock- event behaviour in Indian corporate sector for the  very(prenominal) period.Although the results  are not robust  nice as in the case of developed  securities  diligences  a   lone shades some  more(prenominal) interesting facets to the existing corporate finance literature on dividend  polity in India. Kew Words Dividened Policy, Stock Price, Corporate Finance,  stock-still Effect Model JEL Code G30, G35 Research Scholar, Indian Institute of Technology, Khragpur-721302. The author  laughingstock be contacted emailprotected ac. in ? 1 1. Introduction Dividend policy still re mains an academic debate amid the  darken  show of its importance among the financial economists till today.There are  fewer aspects of corporate financial policy where the gap  mingled with the academics and the practiti singlers is larger than that of the dividend policy. From Miller & Modigliani (1961)1, ,Gordon & Linter to Fama & French (2001)2 ,the research on the topic exhibits conflicting trends in dividend  patch upments &  ho functionhold  regard as. The academic consensus shows that dividends  documentaryly dont matter very much for the  commercialise nor is relevant, when f   irms  stipend dividend as a  bell ringeral to the investors.Both corporate officials and investment analysts, still continue to insist that a firms dividend policy matters a great deal for conveying the information to the stakeholders. One  expression of the argument on the basis of economic theory is, it doesnt matter or is irrelevant. But the practitioners  conceive it as information content to the public, which reflects seriousness of the problem that is inherent in the reaction mechanisms of the  foodstuff to the dividend policy announcements.I want to foreground an explanation  in the  for the first time place the practitioners, why, in the face of all this evidence of price  enlarge in response to dividend announcements,   oppositewisewise sensible academics believe that a firms dividend policy really doesnt make much  discrimination. At the same time, I11 argue that the dividends do matter for a firm. Dividend Policy & Share prices The dividend policy of a firm becomes the ch   oice of financial  dodging when investment decisions are taken as given. It is  too imperative to know whether the firm  leave behind go for  intimate or external source of financing for its investment project.There are a  fare of  elements affecting the dividend policy decisions of a firm  such as investors preference,  cabbage, investment opportunities annual vs.  stone pit  great(p) structure, flotation costs, signaling, stability & Government policies and   r withalue enhancementationation. In the presence of asymmetric information, signaling is one of the essential factors that influence the  grocery. Dividends may convey information  virtually the company, so it suggests the possibility of its influence 2 on the stock market. Paying large dividends reduces risk and thus influence stock price (Gordon, 1963) and is a  legate for the future earnings (Baskin, 1989)Baskin (1989) takes a slightly  distinct approach and examines the influence of dividend policy on stock price  excita   bleness, as  contradictory to that on stock  bring forths. He advances four basic  standards which relate dividends to stock price risk. He terms these as the duration  depression, the rate of return  lay out, the arbitrage pricing  assemble and the informational  put. The difficulty in many empirical works examining the gene linkage between dividend policy and stock volatility or returns lies in the setting up of adequate control over the factors that influence both.For example, the accounting system generates information on several relationships that are considered by many to be  times of risk. Baskin (1989) suggests the use of the fol humbleing control variables in  visitationing the signifi undersidece of the relationship between dividend yield and price volatility are  run earnings, the size of the firm, the level of debt, the payout ratio and the level of  yield. So he had tried to explain the underlying linkage between dividend policies (dividend yield and dividend payout rat   io) and stock price risk in his empirical work on USA.A number of theoretical mechanisms  comport been suggested that cause dividend yield and payout ratios to vary inversely with common stock volatility. As dividends can be   interpolate dividends, stock dividends, stock splits &  per centum repurchases, the question comes about the nature of the dividend & its   fix on the  packet price and whether market is more volatile to high dividend yield share than  expression share comes into the picture. There is a need to study the sensitivity of market to the nature of dividends. The linkage etween dividends & share price should be examined by controlling  another(prenominal) factors which are responsible for affecting the dividend policy of a firm. Study of dividend policy and stock price in India As Indian stock market is one of the most volatile stock market in the world. As the no of private corporations are  exploitation day by day, & financial markets becoming more developed, thit   her need of the study of  antithetic policy implications by corporate sector. 3 There are a number of studies existing on the determinants of dividends3 behaviour in Indian context.All the studies  soak up determined the dividend behaviour from the perspective of the factors influencing the dividend behaviour in the  slight run as well as in the long run4. But a very few literature captures the intricacies of market reaction to the dividend announcement by Indian corporate sector. The study by Reddy, Y S (2003) on dividend behavior of Indian corporate firms over the period 1990  2003 shows a conflicting picture of the dividend policy of firms across  distinct industries.The study explores dividend trends for a large sample of stocks traded on the NSE and BSE, indicate that the  share of companies paying dividends has declined from 60. 5 percent in 1990 to 32. 1 percent in 2003 and that  entirely a few firms  flip consistently paid the same levels of dividends.  pass on, dividend-pay   ing companies are more pro disciplineable, large in size and  wrickth doesnt seem to deter Indian firms from paying higher dividends. Analysis of influence of changes in tax  administration on dividend behavior shows that the tradeoff or tax-preference theory does not appear to hold true in the Indian context.This paper shows the contradictory results from the previous one. The limitations of these papers are they have taken  scarce cash dividends for analyzing the determinant behaviour. The present paper is structured as follows as introduction. The subsequent  region II follows the theoretical strands and section III highlights ed model for the purpose. The section IV denotes the data sources and variable construction. The section V shows empirical results and discussion. The last and final section  breaks the  beginings. II. Theoretical Strands and Literatures studyThe dividend irrelevance theory of Modigliani and Miller (1961) proposed the absence seizure of any  authoritative i   mpact of the dividend policy on the value of shares because its impact is offset  just now by other means of financing and is thus irrelevant. This theory was formulated by assuming  perfective market conditions, which didnt take into account the imperfections like taxes,  exertion cost or asymmetric information. Consequently, dividend policies have little impact on the market value of the firms. In a perfectly competitive market situation both the company, through its pro harmonise retention, and the 4 hareholders, through their dividends, might invest in the same assets, and hence, whos making the investment does not matter for the economy as a whole. However, since the capital market is neither perfect nor complete the dividend irrelevance proposition needs to be applied carefully by foc development on  tacks of taxes, information content, agency cost and other relevant affecting variables. The Gordon model (1959) stock valuation model states the fair value of a stock should  pla   y off to the stock-dividend per share and the difference between the discount rate and the long-term dividend growth rate.The model assumes that the firms dividend will grow at a constant rate and that the discount rate stays the same for ever. The theory suggests if there will be an increase in dividend rate there will be simultaneously an increase in stock value of the firm. Fama (1998) is the advocate of modern corporate finance theory, which states that firms should be managed to create and  increase value. hither the value depicts the total price of a firm commands in the market that is the sum of the  set of its equity and debt. Thus, the criteria and rules for correct financial decisions are oriented towards maximization of the total value of the firm.In theory, value maximization is appealing because it is associated with efficient allocation of resources, provided the capital market operates efficiently. That is, it rewards the most to firms that channel their resources to    the best uses.  large empirical work on capital Market behaviour shows that the prices of corporate securities indeed respond to firms decisions in a way that appears to be consistent with expectations about the appreciation or depreciation of value in the market. The theory emphasizes the importance of corporate financing decisions on the value of the firm in the market.Thirumalvan & Sunita (2005) studied the impact of Share repurchases & Dividend announcements on Stock prices in the context of Indian Corporate sector during the period (2002-2004). They examined the signalling  transaction of Stock repurchases and Dividend announcements. The study examined abnormal returns across various repurchases level. They have taken the firms listed in the BSE  mogul for the purpose of 5 empirical investigation. The study covers the impact on stock prices five days  antecedent and after the dividend announcement. The result exhibits the upward trend of share price movement after the dividend    announcement.The crucial  check of their findings is that  dogmatic signalling existed  single for a day after the announcements. After which the extent of positivism of shares starts declining. Their finding shows that market reaction in the Indian context to events or announcements such as share repurchases and dividends generally  fluctuate around day or two. The study can be cited as  key for the present study. Sen and  jibe (2003) have explained an interesting phenomenon regarding the key determinants of stock price in India. The study is based upon the stocks comprising the BSE  list over a period 1988-2000.The empirical study revealed dividend pay-out is by far the single important factor affecting stock prices. The  plunk for factor comes earning per share which has very weak impact on the share prices. So the study explored one of the crucial factor dividend pay-out ratios having impact on Indian stock price.  blackamoor and Scholes (1974) in their study on the  takingss of    dividend yield & dividend policy on common stock prices & returns They  verbalise uninformed demand for dividends can result from dividend decisions which in turn derive from imperfections such as taxes, transaction costs and institutional investment constraints.Given the above background, the study makes an attempt to examine the  perfume of dividends and retention earnings on the stock price behaviour in Indian corporate sector in a partial macro economic framework. III. Proposed Derived Model In analyzing dividend and stock price behaviour, the most important point to begin with is an objective function  manufactureing a firms preference regarding dividend-retention mix  instead of taking  solitary(prenominal) dividend yield or payout ratio. Because the objective function is related to firms main motives & there has been a shift in its motives due to the dominance of joint stock corporations & the associated characteristics of  dissolution of ownership & control. This shift can    be characterized from the sole motive as maximization of rate of return on capital to other set of motives such as sales maximization, expansion of business. This set of motives  modify to an increase in the market value of the firm,  as well, is in consonance with the managing agency system of operation, which is a characteristics of Indian companies.Moreover, the separation of ownership & control also implies a difference in the objectives & preferences between firms management & its shareholders. From the shareholders side, their preferences depend upon mainly their income level & the degree of understanding of corporate stock dealings & associated tax implications. Nevertheless, the behaviour of the shareholders may be generalized as that they prefer stable dividend rates & that the  publication of taxes is only on the preference of the shareholders as the shareholders, who belong to the  richer classes prefer low dividends and high  kept up(p) earnings.The opposite is  relevant    in the case of middle income  multitude of shareholders. On the other hand, the management behaviour can be relatively & conceptually distinguished between a passive & an active  grapheme5. The motives of passive management are similar to those of the shareholders & it efforts to ensure stable dividend. But firm also requires sufficient  dough retentions to  live up to the firms long-term needs such as investment demand & liquidity needs  and so on But the active management aims at increasing the market value of the firm & the market price of shares as well.So while its credibility requires to emphasize on the shareholders preference, its general tendency would be to reduce dividends on the basis of different excuses like high tax rates on distributions, tax shelter benefits. Given the vast diversity of stockholders, it is not surprising that, over time, stockholders tend to invest in firms whose dividend policies match their preferences. Stockholders in high tax brackets who do no   t need the cash flow from dividend payments tend to invest in those companies which either pay low or no dividends. By contrast, stock holders with low tax bracket will invest in companies with high dividends.This clustering of stock-holders in companies with dividend policies that match their preferences is called as clientele  violence. So it suggests that firms get the investors they deserve since the dividend policy of a firm attracts 7 investors who like it. Second, it means that firms will have a difficult time changing an established dividend policy, even if it makes complete sense to do so. However in practice, it is reasonably assumed that managements are neither  extremely passive nor extremely active and shareholders are neither rich nor badly dependent or dividend income  exclusively but contain all the elements in different combinations.Thus, lets consider a  emblematic firm having a map of dividend preference curves,  to each one indicating a specific level of utility    obtained by alternative combinations of dividends & retentions. So the dividend preference function can be noted as U = f (Dn, R) (3. 1) Where, Dn and R are the dividend and retention net of all taxes at all levels. The utility level can be seen as monotonically related to the motives of the management with respect to the shareholders preference. The shape of the utility curves might be a result of a process of accounting for their relative performances & the factors influencing such preferences as well.The second step is to represent the hypothesis that dividends affect stock prices or market value of the firm. The utility function can be represented as the function for optimizing the market value of the firm. The market value of the firm can be represented as Market value of the Firm = ? ? Dividends ? f ? Net  receipts , ? Re tained earnings ? ? ? (3. 2) The market value of the firm here is fundamentally represented on the basis of Accounting Earning Analysis. Here the Net  net pr   ofit is derived from the current investment of the firm.The higher the net profit the higher will be the stock price. The market value of the firm also depends upon the ratio of Dividends to Retained  win because the profit is basically segregated into either dividend or retained earnings. If clientele effect is not present in the firm  and so higher dividends will lead to higher value of the share price whereas if the investors are rich then they will prefer lower dividend to retention. The 8 return on equity entirely depends on the net worth6 of a company. Equity return of a company depends upon dividends and retained earnings.If a company is  passage for dividends then the retained earning will be less, leading the firm to go for either  unexampledequity issues or  orthogonal financing. If the flotation cost7 is high, the company will go for external financing which will be costlier for the firm than internal financing through equity. So the firm has to maximize the dividend to r   etained earnings ratio for any new investment aimed at firms growth. We can represent it through the following function ? D? Pt = f ? Y , ? ? R? (3. 3) Where Y represents the net profit of the firm D represents ratio of dividends to retention earning of the firm. The ratio of R ividends to retained earnings acts as a proxy for future cash flow of the firm and share price, Pt , acts as the proxy for the absolute market value of the firm.  bandage calculating the stock return on an equity share, we are basically interested to calculate the change in current price with respect its price in the previous period. So the  equivalence (3. 3) can be represented as ? Pt ? ?P ? 0 ? ? ? ? = f ? Y , D ? , ? P R? ? ? ? 0 ? (3. 4) The eqn (3. 4) represents the change with respect to base price. We have assumed a CobbDouglas type of function represented as the following ? Pt ? ? Y ? ? D ? 2 ui ? ? = A? ? ? e ? P ? R ? P ? ? 0? ? ? ? 0? ?1 ? (3. 5) The equation (3. 5) can be  show alternatively as 9    ?Y ? ?P? ?D? ln ? t ? = ln A + ? 1 ln ? ? + ? 2 ln? ? + ui ? P ? ?P ? ?R? ? 0? ? 0? (3. 6) We can write the above equation as ?Y ? ?D? ln Vit = ? i + ? 1 ln? ? + ? 2 ln? ? + uit ? P ? ?R? ? 0? (3. 7) Where ln A = ? i = 1 N t = 1 T, There may be potential links between size and volatility of stock returns of the firm. The size of the firm also exhibits crucial link between size and volatility. Small firms are likely to be less diversified in their activities and subject less investors scrutiny for the firm.But research is still confined to large listed companies. The Information on the stocks of smaller listed companies could conceivably be less informed and illiquid in nature. These firms are subject to greater price volatility as a result of above posed factors. So a control variable, long-run debt equity ratio is being added . When asymmetric information comes into the picture, there is also likely to be a link between borrowing & dividend policy. Baskin (1989) suggests that firm   s with a dispersed body of shareholders may be more disposed towards  utilize dividend policy as a signaling device.The dividend policy may also be a function of size and there is a need to introduce size as a control variable. There is also a need of introducing control variables, which will reflect the corporate leverage. The earlier models have been aimed at capturing the effect of stock price and dividends but very few of them have tried to include the control variables such as debt-equity ratio and size of the firm. So in the present study, the focus is to fillup the limitations of the previous studies by using context-specific Panel- information models including the control variables like leverage ratio and size of the firm.Through panel data estimation we can observe firm effect8 and time effect throughout the sample period. So now the eqn (3. 7) can be stated as ? Y ? ?D? ?D? ln Vit = ? i + ? 1 ln? ? + ? 2 ln? ? + ? 3 ( SZ ) + ? 4 ? ? + i + ? it ? P ? ?E? ?R? ? 0? (3. 8) Whe   re V = value of the firm SZ = Ln (Total Assets) 10  i = firm specific  atom ? it = disturbance term IV. Analytical Framework We have already discussed the proposed model to be  tried and true here to analyze the impact of dividends on stock returns. So in this section we will analyze the methodological issues over our proposed derived model.Simultaneously we will discuss other options  addressable for the  psychoanalysis. We will first analyze the results of different   persistence and then  fuse data over all the industry. The proposed model is here is ? Y ? ?D? ?D? Ln Vit = ? i + ? 1 ln? ? + ? 2 ln? ? + ? 3 ( SZ ) + ? 4 ? ? + i + ? it ? P ? ?R? ?E? ? 0? 4. 1 Where SZ = Ln (Total Assets)  i = Firm specific component ? it =  hitch term Here the  slide fastener Hypothesis is dividend or D/R ratio affects stock return i. e. H0 D/R affects Vit . We will test the results of the classical linear  fixing model and other tests. wherefore we will proceed to see if Panel data models improve    the estimation. So we will propose different models before proceeding to fixed effect model. We will define four basic models to be  time-tested before proceeding towards final estimation. 1. y it = ? + ? it (No  ag root effect or xs) 2. y it = ? i + ? it (Group dummies only) 3. y it = ? + ? ?X it + ? it (Repressors only) 4. y it = ? i + ? ?X it + ? it (Xs and  base effects) Model 1 on 2 H0 (no group effects on the mean of y) Model 1 on 3 H0 (no fit in the  simple regression of y on xs) Model 1 on 4 H0 (no group effects or fit in regression) 11Model 2 on 4 H0 (group effects but no fit in regression) Model 3 on 4 H0 (fit in regression but no group effects) We have tested the data set for applying the panel data models with the above five different hypothesis. The LR, F and LM Test along with the Hausman Specification test favors the use of fixed effect models for  sustenance and Beverage,  mining  constancy and Nonmetallic  exertion whereas the diagnostic tests rejects the use of fix   ed effect models for Other  go,  fabric industry, and  tap industry. The  pile up data is also not  unanimous the qualifying criterion for applying  intractable effect models.V. Data Sources and Sample Design The study mainly relies on the Prowess database of the CMIE (centre for monitoring on Indian economy) in India in order to mitigate the above noted objectives. Since the present study aims at exploring the dividend and stock return volatility with the assumptions of semi strong efficiency in the stock market a sample of  vitamin D companies from A1 and B1 group of shares is selected for the empirical analysis. All of them are spread across six different industries namely  electricity,  victuals and Beverage, Mining, Non-metallic, Textile and Service Sector.The first filtering criterion for selecting the stocks is their consistency with the dividend payment history for the study period 19962006. The second filtering criterion used for the selection is that the market-capitalizat   ion of these companies should be more than ten crores. The third filtering criterion is that the scrip must be traded continuously without any interruption during the above mentioned period. However, the study has conceptualized the dependent variable (i. e. market value of the firm) and the  informative variables such as size of the firm, dividends to retain earning ratio, and debt to equity ratio.The stock return is considered as proxy for the market value of the firm (dependent variable) and for other subsequent variable, Ln (total assets of the firm) have taken as a proxy. 12  bop Return Market value of the firm which is the dependent variable of our interest is being represented by Stock Return . This can be calculated by taking closing share prices of each company. Stock returns should be calculated using the log return of the closing price of the stock, where the Closing price is defined as the last trade price of the stock. Vit = ln (Pt/Pt-1). Net profit Here the net profit    is taken as the profit after taxes.Average book value of equity Profit after taxes is calculated as the difference between the profit before taxes and tax for the year. PBIT or Profit before interest and taxes is generally calculated as the sum of operating profit and non-operating surplus/ deficit. This represents a measure of profit which is not influence by financial leverage and the tax factor.  wherefore, it is pre-eminently suitable for inter-firm comparison. Hence it is assumed that higher Net profit of a firm leads to higher share prices as opposed to stock returns. It is denoted as Y in the study. P0 Dividend ?D? ? ? This can be calculated by adding  unneurotic all the annual Re tained earnings ? R ? cash dividends paid to common shareholders & then dividing this  improver by the total no of outstanding equity shares in each year. The average of all available years will be used. Retained earnings is calculated as the difference between profit before taxes and dividends and    dividend by the total no of outstanding equity shares each year . Like Earnings, dividends act as proxy for the future profitability . Therefore this ratio is expected to have  confident(p) relationship with the stock return.Long term debt (Debt to Equity ratio) is calculated as the sum of each companys debentures, mortgages & loans with a maturity greater than one year to total equity is to be calculated. The average over all the years will be used. 13  coat of the Firm (SIZE) The variable size should be constructed in such a way that it will reflect the value of the firm in real terms. Here the natural log of Total assets is being used as a proxy for size. VI. empirical Estimation and Results Discussion The basic principles of fixed-effect model have already been discussed in the previous section. So in this section we attempt to estimate our proposed model.In this section we present the results in two sections. We present first the results of those industries that how the applica   bility of fixed effect models by our previous section of hypothesis testing. And those industries that dont satisfy our criterion in  other sections (table 4. 9). Here we test the other models and the  significance of our  repoint variables. The results from the regression analysis are discussed in two sub-sections. The first section is the result of the  evade 8, which exclusively covers the regression result of one-way fixed effect model for  electricity, Food and Beverage and Non-Metallic Industry.The other section of the result from the  display board 9,covers the regression from the other three industries that did not satisfy the filtering criterion of hypothesis for fixed effect model. These industries are other services, Textile and Mining. In the last section we discuss about the results of aggregate data. Electricity IndustryAs we have already discussed in the previous chapter, we have taken one-way fixed effect model. The result for the electricity industry can be summariz   ed as follows. Before estimating the final model, we have tested different combination of variables.The estimation of one way fixed firm effects multivariate regressions  illustrate that controlling for the underlying time-invariant heterogeneity of firms has  satisfying effect on results. The coefficient for PAT/P0 is 9. 32 which is significant at 5% level of significance. It explains 9. 32% variation in the model. The variable D/R is also exhibiting positive relationship with stock-returns. It implies higher the dividend paid 14 to the investor higher will be the return in the long-run. The co-efficient for D/R is 2. 48 which is significant at 1% level. This implies validity of the model through the dividends and retention.The coefficient of leverage ratio or D/E ratio is -1. 89% which is significant at 10% level. The negative sign of the coefficient implies the negative relationship between the stock return and D/E. As the leverage ratio will be higher then it will have a negativ   e impact on the stock-return. The coefficient for another variable size is . 96 which is coming  insignificant at any level of confidence. The standard  misunderstanding is also coming very high at 12. 54. The R2 for the model is 0. 44, which is explaining 44% variation for variation in the dependent variable stockreturn.The p value of F-test is significant at 1% level. The computed F-tests ( dealed firm effect versus pooled OLS) of the null hypothesis that all coefficients are jointly equal to zero are rejected. The one-way fixed effect model explains the relationship more clearly as it explains more than 50% level of variation of firm-specific component in the model. So the over all explanatory power of the model is high in the Electricity Industry. Food and Beverage Industry- The computed F-test results favors the use of the fixed-effect model over the Pooled OLS is justifiable over the test of OLS vs.Fixed effect model. The Hausman statistics is also high suggesting the use of t   he fixed effect model over the  hit-or-miss effect model. Before estimating the model with variables D/R, PAT/P0, D/E and SZ with Stock return, we have tried with different combination of independent variables with the stock-return. The Current model gave the high R2 and low standard errors. The coefficients for the variables D/R, PAT/P0, D/E and SZ are 3. 05, 11. 09,-1. 41, . 68 respectively. Here the variables D/R and PAT/P0 are significant at 1% and 5% level of significance.The coefficients for the control variable which is included to control the heteroscedasticity is significant for size of the firm which explains 68% variations in the stock-return is and the coefficient for the debt-equity ratio is -1. 41. The most important result is that the dividend retention ratio is positive and explains 11. 09% variation in stock return. The R2 is 0. 36, explaining 36% variation in the dependent 15 variable i. e. Stock return. The F-test for Pooled OLS Vs Fixed effect turns out to be sig   nificant and the null-hypothesis that all the co-efficients are zero is rejected here. Non-metallic industry-The coefficients for the variables D/R, PAT/P0, D/E and SZ are . 024, 10. 58,0 -. 88 and 30. 5 respectively. The variables are significant at 5%, 1%, and 10 %( Sz. ) level of significance in T-test for testing the null-hypothesis that the means of the co- efficients are zero. The sign of the D/R  clay positive here. It explains positive relationship with the stock-return. So the D/R ratio explains 11. 98% variation in the stock-return behaviour of the firms. It supports the null-hypothesis that D/R affects the stock prices. another(prenominal) important observation is that the coefficient of size of the firm is 30. , which is quite high in comparison to the other industry. The variables are insignificant in other models like pooled OLS, so the F-test rejected the hypothesis that all co-efficients are jointly equal to zero. The R2 is coming with  meliorate performance of 0. 46   %, which is high in comparison with other two industries. After all Non-metallic industry is showing robust result with the expected sign as proposed in methodology. Results from the Table 9- We have presented another analysis for other services, Textile Industry and Mining industry because these industries are not satisfying the criterion for the fixed effect model.So the next best alternative is to test it with pooled OLS and Random effect model. We have done comparison with these three models for these industries. Other Services Industry- If we  equalise the results of the fixed effect model and Random effect model here, then some interesting picture emerges. The co-efficients for the fixed firm effect model for the variables D/R, PAT/P0, D/E and SZ are coming 6. 37, . 33,-10. 54, 2. 61 respectively. Among the co-efficients D/R and D/E are significant at 10% level of 16 significance. D/R is surprisingly significant with a positive sign according to our prior expectation.We then c   ompare the R2 value of two models, which is very low i. e. 0. 09 for fixed firm effect model and 0. 11 for the random effect model. Although R2 turns out to be very low the variable D/R and D/E ratio is exhibiting correct sign as per the hypothesis is concerned. The F-test for comparing the coefficients are equal to zero or not is becoming insignificant for the variables. This can be observed through the p-value which comes out 0. 9870. This is not significant at 1%, 5%and 10% level of significance. In the Random effect model the Coeff for the variables D/R, PAT/P0, D/E and SZ are 4. 9, 0. 53,-8. 09 and 13. 96 respectively. The R2 improves by two points to 0. 11 the target variable D/R ratio remain insignificant in the model. May be the cause for insignificant variables and low explanatory power of the model is due to improper specification which is affected by the industry characteristics. The firms in the Services industry generally went for less dividends and more retention in th   e study period. These are high growth firms which require more flow of money for the projects. So the investors got return through the capital gains here. Textile Industry-If we observe the Coeff for the variables D/R, PAT/P0, D/E and SZ, the value are 5. 28, . 10, -1. 73,5. 95 and for the Random effect model the values are coming out 4. 83,. 17,-1. 30 and 0. 87 respectively. The results show some unexpected outcomes in the model. The signs of the Coeff are as per prior expectation but D/E ratio is out significant at 5% level in fixed firm effect model and other variables are remaining highly insignificant with R2, 0. 04 . In the Random effect model, the target variable D/R is significant at 5% level and PAT/P0, D/E ratio are significant at 10%, 1% level of significance respectively.The R2 for the random effect model has improved to 0. 13%. When we compare the result between two models, random effect model turns out to be more robust than the fixed effect model. 17 Mining Industry-    The values of the co-efficients for the variable D/R, PAT/P0, D/E and SZ, are 17. 07, 14. 75,-13. 77, 4. 09 and for the Random effect model the co-efficients are 16. 01, 10. 08,-6. 63 and 1. 66 respectively. In fixed effect model three Coeff. of PAT/P0, D/R and D/E ratio remain significant at 5%, 1%, and 10% respectively. The R2 for the fixed firm effect model  the Great Compromiser at 0. 0 and for the random effect model it is 0. 14. We cannot  guess the models by the R2 only because we have to check out the significance of the variables. So given these conditions, the fixed effect model is more appropriate in the Mining industry. Aggregate Industry Data- As we have examined above the different industry wise data, only three Electricity, Food and Beverage and Non-metallic satisfy the tests for use of the fixed firm effect model whereas other three industries namely Textile, Mining and Other services do not satisfy the test criterion in favour of fixed effect model.Aggregate industr   y data doesnt shows any robustness for using fixed-effect model over other possible models such as pooled OLS and Random Effect model. The results from fixed-effect models is having leverage over the random effect model results . The aggregate data of whole industries is affected by those industries, which are not satisfying the criterion for fixed effect model. The overall explanatory power of the Aggregate industry data are affected the fluctuations in other industries as the data set is characterized by different industry.So when we run the regression of one-way fixed effect model, the R2 is also exhibiting very low at 0. 12 only. The value of the Coeff of the variables D/R, PAT/P0, D/E and SZ are coming out 3. 10, . 34,-. 60, -. 15 respectively. If we observe the sign of the variables D/R, D/E and PAT/P0 remains as per prior expectation. Among the Coeff of variables, PAT/P0 and D/E come out significant at 1% and 5% level of significance. Whereas if we compare the result with ran   dom effect model, we will find that no variables are significant and the R2 turns out to be very low at 0. 08 18 only. The p-value of F-test is also coming very high at 0. 6, which is well above the 0. 01and 0. 05 level of significance. The use of the fixed effect model in aggregate data explained the variation of the independent variables more clearly than Random effect model and Pooled OLS model. VII. Conclusion We have tried to explore the relationship of dividends and stock return by using a simple Specification of stock return as a function of net profit and dividend-retention ratio with two control variable such as size & debt-equity ratio of the firm. There was an attempt to test different structural tests before proceeding towards the final estimation through panel-data modeling.The exclusive tests of different model allow us to go for the use of panel-data modeling. As we have given six different industry classifications for the study, we have tested the proposed model for    each industry separately with different combination of variables. The results display statistical significance and linearity when the industry classifications are given. The regression on aggregate data remains in significant. .However, the direction of relationship between the dependent variable is as per prior expectation. In other words dividend retention ratio is positively related with the stock-returns.In case of aggregate data which consists of all firms above from industry classifications, the regression lacks statistical significance, the null hypothesis that there is no relationship between the dependent variable and independent variable cannot be rejected. 19 When the fixed firm effect regression is applied on sample firms of classified industry category-wise, we observe some industry specific peculiarities. Firms of Electricity, Food and beverage and Non-Metallic Product show some robustness in the results of the regression. The signs of the coefficient and their value r   emain significant in the analysis.Other three industries, textile, mining and other services are exhibiting insignificant coefficients values and very low R2. This conflicting trend of these variables is also visible when we have tried Pooled OLS and Random effect model. When we relax the industry classification and with the same data set and variables, fixed effect model shows the regression is significant at 0. 05 level of significance as the p value of getting a higher or equal value than calculated f-value is 0. 0497, which is we can reject the null hypothesis that all coefficients are equal to zero. Another important result is the sign of the leverage ratio and the coefficient remain as per prior expectation. The negative sign of the debt-equity ratio implies the negative relationship between the stock-return and debt-equity ratio. As the firm will go for more debt, then its value is going to be affected by stock-return.  surface of the firm remains consistently positive but in    many cases it turns out to be insignificant. So we can not generalize about the variable size. So we can conclude that dividends have impact on the stock-return in Indian corporate sector, which is industry specific.The study explores that the dividend paying companies are large, profitable and growth rate of the firm does not seems to  discourage the dividend payment. Although the regression is not showing high R2 but Net profit and Dividend and Retention Ratio remains significant in other services, mining and Textile industries. 20 Appendix Electricity Industry (Table 1) Models R2 H0 LRTest  kisqu. 114. 3 pvalue F-test FVal. 52. 06 pvalue LM-Test vs. Model-3 Haus. Spec. Fix vs. Ran. 1. Constant term only 2. Group effects only 3. X-variables only 4. X & group effect 5. Fit in Reg. but no Group effect. . 0000 M1 on 2 M1 on 3 M1 on 4 M2 on 4 M3 on 4 0. 001 0. 000 Chi 2 (1) 36. 21 p value chi 2 =0. 000 0. 4245 123. 4 156. 6 0. 000 0. 000 113. 5 121. 9 0. 002 0. 010 1. 52 p  chi 2 (1)    0. 2183 0. 2135 0. 63 141. 5 0. 100 128. 6 0. 000 0. 24 129. 5 0. 000 134. 7 0. 100  rail line  Large values of Hausman statistics argue in favour of the fixed effect model over the random effect model. 2. Large values of the LM statistics argue in favour of the one factor model (either Fixed or Random depends upon further Hausman Specification test) against the classical regression with no group effects. . A large value of the LM-statistics in the presence of a small Hausman statistics argues in favour of the random effect models. 4. If p  0. 10, then the test is significant at 90% confidence level, if p 0. 05, then the test is significant at 95% level of confidence. If p 0. 01, then the test is significant at 99% level of confidence. 5. The p-value of the LR test will be set to 1 if it is determined that your estimate is close enough to zero to be, in effect, zero for purposes of significance.Otherwise, the p-value displayed is set to one-half of the probability that a chi-square    with 1 degree of  immunity is greater than the calculated LR test statistic. 21 Food and Beverage Industry (Table 2) Models R2 H0 LRTest Chisqu. 113. 4 pvalue F-test FVal. 112. 9 pvalue LM-Test vs. Model-3 Haus. Spec. Fix vs. Ran. 1. Constant term only 2. Group effects only 3. X-variables only 0. 000 M1 on 2 M1 on 3 M1 on 4 M2 on 4 M3 on 4 0. 000 0. 000 Chi 2(1) 34. 21 2. 53 0. 32 134. 2 0. 000 132. 5 0. 000 p  chi 2(1) p chi 2=0. 000 0. 41 4. X & group effect 0. 53 103. 5 142. 8 0. 000 0. 000 126. 5 176. 5 0. 004 0. 3831 0. 001 5. Fit in Reg. ut no Group effect. 0. 24 121. 7 0. 002 183. 5 0. 000 Mining Industry (Table 3) Models R2 H0 LRTest Chisqu. 116. 070 pvalue F-test F-Val. pvalue LM-Test vs. Model-3 Haus. Spec. Fix vs. Ran. 1. Constant term only 2. Group effects only 3. X-variables only 4. X & group effect 0. 00 M1 on 2 M1 on 3 M1 on 4 M2 on 4 M3 on 4 0. 000 52. 084 0. 000 Chi 2(1) Chi 2 (1) 2. 02 p chi2 (1) 0. 7318 0. 21 150. 894 0. 001 170. 23 0. 000 1. 21 p  chi 2(1) 0. 32    161. 23 0. 003 232. 419 0. 000 0. 2721 0. 42 277. 186 0. 005 186. 03 0. 001 5. Fit in Reg. but no Group effect. 0. 15 172. 5 0. 000 58. 78 0. 000 22 Non-Metallic Industry (Table 4)Models R2 H0 LRTest Chisqu. 119. 070 pvalue F-test FVal. 21. 00 pvalue LM-Test vs. Model-3 Haus. Spec. Fix vs. Ran. 1. Constant term only 2. Group effects only 3. X-variables only 4. X & group effect 0. 00 M1 on 2 M1 on 3 M1 on 4 M2 on 4 0. 000 0. 000 chi2(1) = 3. 92 chi2(3) = 1. 23 Probchi2 = 0. 0013 0. 21 154. 894 0. 000 31. 01 0. 000 Prob  chi2 = 0. 0477 0. 13 165. 23 0. 000 12. 02 0. 064 0. 25 267. 186 0. 000 49. 64 0. 000 5. Fit in Reg. but no Group effect. 0. 31 M3 on 4 172. 05 0. 214 64. 57 0. 741 Models R2 Other services Industry (Table 5) H0 LRpFTest value test ChiFsqu. Val. 0. 060 11. 00 on 2 pvalue LM-Test vs.Model-3 Haus. Spec. Fix vs. Ran. 1. Constant term only 2. Group effects only 3. Xvariables only 4. X & group effect 5. Fit in Reg. but no Group effect. 0. 01 M 1 109. 70 164. 89 0. 087 chi   2(1) = 0. 30 chi2(4) = 1. 39 Probchi2 = 0. 8460 0. 24 M 1 on 3 0. 000 41. 01 0. 001 Prob  chi2 = 0. 5812 175. 23 0. 000 52. 02 0. 020 0. 14 M1 on 4 217. 19 0. 000 79. 64 0. 000 0. 33 M 2 162. 05 on 4 M3 on 4 0. 000 95. 4 0. 000 23 Textile Industry (Table 6) Models R2 H0 LRTest Chisqu. 139. 070 pvalue F-test FVal. 71. 00 pvalue LM-Test vs. Model-3 Haus. Spec. Fix vs. Ran. 1. Constant term only 2. Group effects only 3. X-variables only 4.X & group effect 5. Fit in Reg. but no Group effect. 0. 03 M1 on 2 M1 on 3 M1 on 4 M2 on 4 M3 on 4 0. 000 0. 000 chi2(1) = 7. 75 Prob  chi2 = 0. 0054 = 3. 50 0. 14 124. 894 0. 000 44. 00 0. 000 Probchi2 = 0. 4774 0. 21 195. 23 0. 000 22. 02 0. 000 167. 186 0. 000 152. 05 0. 000 69. 67 96. 8 0. 000 0. 001 0. 43 Aggregate Data (Table 7) Models R2 H0 LRTest Chisqu. 169. 70 pvalue F-test FVal. 31. 01 pvalue LM-Test vs. Model-3 Haus. Spec. Fix vs. Ran. 1. Constant term only 2. Group effects only 3. X-variables only 4. X & group effect 5. Fit in Reg. but no    Group effect. 0. 02 M1 on 2 M1 on 3 M1 on 4 M2 on 4 M3 on 4 0. 000 0. 00 chi2(1) = 0. 01 chi2(4) = 1. 28 0. 11 184. 94 0. 000 51. 01 0. 000 Prob  chi2 = 0. 9425 Probchi2 = 0. 8649 0. 21 145. 23 0. 000 62. 42 0. 000 0. 24 257. 186 0. 000 172. 95 89. 84 0. 000 24 Table 8 Results of Fixed-effect model Industry Variables Coeff. Fixed effect model S. E R2 F. V PAT/P0 Electricity Industry D/R D/E Size PAT/P0 Food & Beverage D/R D/E Size PAT/P0 Non-Metallic D/R D/E Size 9. 32** 12. 48* -1. 89*** . 96 3. 05* 11. 97** -1. 41* . 68 . 024** 10. 58* -. 88 30. 5** 5. 84 . 0794 4. 38 12. 54 1. 63 . 18 0. 71 1. 79 . 04 1. 74 2. 72 4. 70 0. 46 0. 36 0. 44 F(4,56)=11. 49 PF= 0. 000 F(4,256) = 1. 26 0. 01 F(4,232) = 12. 21 Prob  F = 0. 0000  line-1. Fixed effect model has no constant term. 2. *, **, *** represents 10%, 5% and 1% level of significance respectively 25 Table 9 Comparison of results of fixed effect model and Random effect model. Industry Variables C. F PAT/P0 D/R Other services D/E 6. 3   7 (12. 52) 0. 33*** (. 443) 0. 09 -10. 54*** (24. 56) 2. 61 (15. 52) 5. 28 (1. 83) 0. 10 (. 704) -1. 73** (1. 28) 5. 95 (2. 73) 17. 07** (10. 57) 14. 75* (27. 90) -13. 77*** (10. 79) 4. 09 (5. 80) 3. 10* (. 095) D/R Aggregate Data D/E . 34 (. 10) -. 60** (1. 89) -. 15 0. 10 0. 04 F. E R 2 R. E F F (4,182) = 0. 08 pF = 0. 870 -8. 09*** (16. 69) 13. 96** (8. 43) 4. 83*** (1. 51) . 172** (. 667) -1. 30* (1. 066) . 87 (. 459) 16. 01** (8. 67) 10. 08*** (22. 26) -6. 63 (7. 39) 1. 66 (4. 91) -. 011 (. 0945) . 31 (. 1051) -1. 06 (1. 40) 0. 14 0. 13 C. F 4. 69 (9. 81) 0. 053 (. 426) 0. 11 R2 W W chi2(4 =2. 86 pchi 0. 5819 Size PAT/P0 D/R Textile D/E Size PAT/P0 D/R Mining D/E Size PAT/P0 F (24,244) =0. 33 pF =0. 990 Wald Chi 2(4)=10. 36 pchi 2=0. 0348 F (4,46) =2. 00 pF =0. 1097 Wald Chi 2 (4) =6. 35 pchi 2 = 0. 1747 F (124,1232) = 16. 49 pF 0. 76057 Wald Chi 2 (4) 0. 08 = 2. 31 p chi2 0. 8745 0. 12 Size 1. 55 (1. 037)Note- *, **, *** represents 10%, 5% and 1% level of significance respecti   vely 26 ReferencesAharony, J. and I. Swary, 1981, Quarterly Dividends and Earnings Announcements and Stockholders Returns An Empirical Analysis,  diary of Finance, Vol 36, 1-12. Altman, E. 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End Notes1 Miller, Merton, and Modigliani, Franco, (1961) Dividend Policy, Growth, and Valuation of Shares, Journal of Business. 34. PP. 411-433. 2 Fama, Eugene F. & French, Kenneth R. , 2001. Disappearing dividends changing firm characteristics or lower propensity to pay? , Journal of Financial Economics, Elsevier, vol. 60(1), pages 3-43, April. 3The term dividends, is defined inclusively under the Income Tax Acts, 1922 and 1961. The  interpretation of Dividends includes distributions from accumulated  meshwork wheather capitalised or not, which reduces the assets of a company or in the form of 28 debentures issue, distributions on liquidation or in the form of loan or advances to the extent such distributions are attributable to to accumulated profits. The definition for certain companies of closely held category, the definition is more inclusive 4 Sarma, JVM. (1990). Taxation and corporate dividend behaviour in India, Y V Reddy (2003)   .The trends of dividend Behaviour in Indian corporate sector. NSE working paper. 5 Sarma, J V M (1990) , Taxation and Corporate Dividend Behaviour in India, Harman Publishing House. 6 Net worth of a company refers to the difference between Total assets and Total debt of a company. 7 It refers to the cost of new-equity issues to be borne by the company, under the condition of imperfect market. 8 Firm effect refers to the effect of factors affecting the behaviour of an  idiosyncratic firm, if it is constant overtime. The time effect refers to the economic condition of particular time point  it varies over time. 29  
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