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Stock Trading and Stock Returns: Understanding the Distributional Properties of the Numbers-The Evidence from India Nifty Fifty

机译:股票交易和股票收益:了解数字的分布特性-来自印度的证据

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Benford's law which studied the distributional properties of numbers observed that data patterns follow a certain frequency. The application of the Benford law to accounting numbers was tested by Dan Amiram, Zahn Bozanic, and Ethan Roven (2015), and was proven that accounting numbers follow the same frequency. There are several theories that advocated a strong relationship between accounting numbers and stock returns. Taking this as a base, the study aims to investigate whether Benford's law, which was proven to be working for accounting numbers, would also work for stock trading and stock returns. The study uses data from National Stock exchange of Nifty Fifty stocks. Initially, data of daily stock returns and daily stock trade for five years from 2012 to 2016 are observed for the theoretical distribution. Later, the daily stock returns and daily trading activity for the results announcement months of April and May covering the five years were observed. It was examined whether data of stock returns and trading activity followed the distribution of Prob (d) = log_(10) (1+ (l/d)), for d = 1, 2, 3 ....9. Later the frequency pattern of stock returns and trading activity is tested by KS statistic to conclude whether data followed the same frequency as Benford's law. The Kernel density estimates were also used to confirm the results.
机译:研究数字分布特性的本福德定律发现,数据模式遵循一定的频率。丹·阿米拉姆(Dan Amiram),赞恩·博赞尼(Zahn Bozanic)和伊桑·罗文(Ethan Roven)(2015)检验了本福德法对会计数字的适用性,并证明会计数字遵循相同的频率。有几种理论主张会计数字与股票收益之间存在牢固的关系。以此为基础,该研究旨在调查被证明适用于会计数字的本福德定律是否也适用于股票交易和股票收益。该研究使用了来自Nifty 50种股票的美国国家证券交易所的数据。最初,我们观察了2012年至2016年这5年的每日股票收益和每日股票交易数据,以进行理论分布。之后,观察了涵盖五年的4月和5月结果公告月份的每日股票回报和每日交易活动。对于d = 1、2、3 .... 9,检查了股票收益和交易活动的数据是否遵循Prob(d)= log_(10)(1+(l / d))的分布。随后,KS统计量检验了股票收益率和交易活动的频率模式,以得出数据是否遵循与本福德定律相同的频率的结论。内核密度估计值也用于确认结果。

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