style='font-family:Verdana;'>accuracy of four valuation multiples across three sectors for India'/> Predicting Accuracy of Valuation Multiples Using Value Drivers: Evidence from Indian Listed Firms
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Predicting Accuracy of Valuation Multiples Using Value Drivers: Evidence from Indian Listed Firms

机译:使用价值驱动力预测估值倍数的准确性:来自印度上市公司的证据

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The objective of this research study is twofold: 1) to evaluate the prediction style="font-family:""> style="font-family:Verdana;">accuracy of four valuation multiples across three sectors for Indian listed firms and 2) to identify the fundamental drivers for these multiples. The valuation multiples identified for this study are: price to earnings (P/E), price to book value (P/BV), price to sales (P/S) and enterprise value to earnings before interest, depreciation, tax and amortization (EV/EBIDTA) and the sectors taken are steel, banking and automobile. Multiple regression methodology is followed with the valuation multiple as dependent variable and the value drivers as independent variables, to get predicted multiples on 470 firm observations. By regressing the multiples on fundamental variables, the best suited multiple for each sector and the key drivers of the multiple are obtained. The empirical findings based on root mean square error (RMSE) and Theil coefficient reveal that least prediction errors are observed in P/S and EV/EBIDTA for the automobile sector, EV/EBIDTA for the steel sector and P/BV for the banking sector. It is also observed that the significant variables that explain these multiples are beta, return on equity (ROE), return on capital employed (ROC), dividend payout ratio (D/P) and net profit margins (NPM). These findings are in line with the derivation of fundamental drivers for each multiple as explained in Gordon model. Damodaran: 2007 style="font-family:Verdana;"> [1] style="font-family:Verdana;">. The present work contributes to emerging market literature on equity valuations and attempts to compare valuations based on market approach using value drivers. A comparison of forecasts with actuals helps in recommendations to buy/sell/accumulate/hold for equity investors and is also pertinent for market participants and financial regulators.
机译:这项研究的目的是双重的:1)评估预测 style =“ font-family:”“> style =” font-family:Verdana;“>的准确性印度上市公司在三个部门的四个估值倍数; 2)确定这些倍数的基本驱动因素。本研究确定的估值倍数是:市盈率(P / E),市净率(P / BV),销售价格(P / S)和企业息税折旧摊销前利润(EV / EBIDTA)以及钢铁,银行和汽车行业,采用多元回归方法,将估值倍数作为因变量,将价值驱动力作为独立变量,以得到470个企业观察值的预测倍数,通过对基本变量的倍数进行回归,得出每个部门的最适合倍数和该倍数的关键驱动力。 (RMSE)和Theil coe有效的揭示了在汽车行业的P / S和EV / EBIDTA,钢铁行业的EV / EBIDTA和银行业的P / BV中,观察到的预测误差最少。还观察到,解释这些倍数的重要变量是beta,净资产收益率(ROE),使用资本回报率(ROC),股息支付比率(D / P)和净利润率(NPM)。这些发现与戈登模型中解释的每个倍数的基本动因推导相一致。 Damodaran:2007年 style =“ font-family:Verdana;”> [1] style =“ font-family:Verdana;”>。本文为新兴市场上有关股票估值的文献做出了贡献,并尝试使用价值驱动力基于市场方法比较估值。将预测值与实际值进行比较有助于为股票投资者提供购买/出售/累积/持有建议,并且也与市场参与者和金融监管机构有关。

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