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Exploring the dynamic model of the returns from value stocks and growth stocks using time series mining

机译:使用时间序列挖掘探索价值股票和成长股票收益的动态模型

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This study considered that value stocks and growth stocks are 2-dimensional concepts. We defined the book-to-market ratio as the value factor and the return on equity as the growth factor. We used these 2 factors to divide stocks into 4 types: high-value, low-value, high-growth, and low-growth stocks. Furthermore, we explored the change in stock prices and stock returns for these 4 categories before and after the formation of investment portfolios. We also established a dynamic model showing the returns from value stocks and growth stocks, called the exponential decay model. Finally, we used Taiwan Stock Exchange data to examine effectiveness of the model during the period from 1995 to 2009. The results are as follows: first, high-value stocks and low-value stocks exhibit a significantly over-reacting phenomenon. Second, high-growth stocks and low-growth stocks exhibit an obviously under-reacting phenomenon. Third, in each current quarter, high-value stocks exhibit the lowest returns; however, in the subsequent quarter, they have the highest returns, and then demonstrate a slow declining trend in the following quarters. These results showed that the stock market can exhibit a dramatic response to extraordinary information and proved that the stock market requires considerable time to correct themselves from an excessive reaction, thus high-value stocks exhibited a higher return. Fourth, in each current quarter, high-growth stocks had the highest return, followed by a rapidly decreasing trend in the following quarters. The t + 3 quarter returns were lower than those of low-growth stocks. This result demonstrated that the stock market does not exhibit an adequate reaction, but still remains rather efficient for routine financial information. Finally, regardless of value stocks or growth stocks, exponential decay models could accurately match with the data.
机译:这项研究认为,价值存量和增长存量是二维概念。我们将市帐率定义为价值因子,并将股本回报率定义为增长因子。我们使用这两个因素将股票分为4种类型:高价值,低价值,高增长和低增长股票。此外,我们探讨了在投资组合形成之前和之后这四类股票的价格和股票收益的变化。我们还建立了一个动态模型来显示价值股票和增长股票的收益,称为指数衰减模型。最后,我们使用台湾证券交易所的数据检验了该模型在1995年至2009年期间的有效性。结果如下:首先,高价值股票和低价值股票表现出明显的过度反应现象。其次,高增长股票和低增长股票表现出明显的反应不足现象。第三,在每个季度中,高价值股票的收益最低。但是,在接下来的一个季度中,它们的回报率最高,然后在接下来的几个季度中呈现缓慢下降的趋势。这些结果表明,股票市场可以对非凡的信息表现出戏剧性的反应,并证明股票市场需要大量的时间来纠正自己的过度反应,因此高价值股票表现出更高的回报。第四,在每个季度中,高增长股票的回报率最高,随后几个季度迅速下降。 t + 3季度的回报率低于低增长股票的回报率。该结果表明股票市场没有表现出足够的反应,但是对于常规财务信息仍然相当有效。最后,无论价值股票还是增长股票,指数衰减模型都可以与数据准确匹配。

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