The thesis considers the problem of evaluating a degree of market efficiency. In a weak form of the Efficient Market Hypothesis (EMH), it is impossible to predict a future price of an asset based on prices available at the current time. The Shannon entropy is used as a measure of the randomness of price returns. To determine the degree of market efficiency, I propose a method for filtering out data regularities. Data regularities are empirical properties of price returns that make prices more predictable. I investigate price staleness that generates 0-returns as one of the data regularities. I show that inefficient time intervals have a larger amount of 0-returns than efficient time intervals. Then, I propose a method for filtering out spurious 0-returns.First, I investigate Exchange Traded Funds (ETFs) traded at the New York Stock Exchange. With a significance level of 1% for testing EMH , the degree of inefficiency of the ETF market for weekly time intervals at a one-minute frequency is equal to 1.35%. The degree of market inefficiency calculated for monthly intervals is about 11%. I find statistically significant co-inefficiency for all considered lengths of time intervals: weeks, months, quarters.Second, I investigate the efficiency of the Moscow stock exchange. The degree of inefficiency for the Moscow Stock Exchange is 82%. I show that months where the randomness of the stock prices attains its minimum group together. I determine what behavior of prices repeats most often for inefficient time intervals. With the Kullback-Leibler distance, I cluster stocks into three groups. For instance, I show that banks and gas companies cluster together. I introduce the discretization describing co-movement of prices. Estimating the entropy of the obtained symbolic sequences, I point out that market inefficiency displays some dependence from the sector to which companies belong.Third, I propose a hypothesis testing procedure to test the null hypothesis of equality of entropies. I find the optimal length of the rolling window used for estimating the time-varying Shannon entropy by optimizing a novel self-consistent criterion. I use the novel methodology to test for time-varying regimes of entropy. I empirically show the existence of periods of market inefficiency for meme stocks.Finally, I consider the ultra-high frequency of price returns. I find theoretical quantiles of gamma distribution that help to quickly test for randomness of the data.
Shannon entropy and high frequency financial time series
SHTERNSHIS, Andrey
2023
Abstract
The thesis considers the problem of evaluating a degree of market efficiency. In a weak form of the Efficient Market Hypothesis (EMH), it is impossible to predict a future price of an asset based on prices available at the current time. The Shannon entropy is used as a measure of the randomness of price returns. To determine the degree of market efficiency, I propose a method for filtering out data regularities. Data regularities are empirical properties of price returns that make prices more predictable. I investigate price staleness that generates 0-returns as one of the data regularities. I show that inefficient time intervals have a larger amount of 0-returns than efficient time intervals. Then, I propose a method for filtering out spurious 0-returns.First, I investigate Exchange Traded Funds (ETFs) traded at the New York Stock Exchange. With a significance level of 1% for testing EMH , the degree of inefficiency of the ETF market for weekly time intervals at a one-minute frequency is equal to 1.35%. The degree of market inefficiency calculated for monthly intervals is about 11%. I find statistically significant co-inefficiency for all considered lengths of time intervals: weeks, months, quarters.Second, I investigate the efficiency of the Moscow stock exchange. The degree of inefficiency for the Moscow Stock Exchange is 82%. I show that months where the randomness of the stock prices attains its minimum group together. I determine what behavior of prices repeats most often for inefficient time intervals. With the Kullback-Leibler distance, I cluster stocks into three groups. For instance, I show that banks and gas companies cluster together. I introduce the discretization describing co-movement of prices. Estimating the entropy of the obtained symbolic sequences, I point out that market inefficiency displays some dependence from the sector to which companies belong.Third, I propose a hypothesis testing procedure to test the null hypothesis of equality of entropies. I find the optimal length of the rolling window used for estimating the time-varying Shannon entropy by optimizing a novel self-consistent criterion. I use the novel methodology to test for time-varying regimes of entropy. I empirically show the existence of periods of market inefficiency for meme stocks.Finally, I consider the ultra-high frequency of price returns. I find theoretical quantiles of gamma distribution that help to quickly test for randomness of the data.File | Dimensione | Formato | |
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https://hdl.handle.net/20.500.14242/123610
URN:NBN:IT:SNS-123610