Abstract

The literature provides strong evidence that stock price values can be predicted from past price data. Principal component analysis (PCA) identifies a small number of principle components that explain most of the variation in a data set. This method is often used for dimensionality reduction and analysis of the data. In this paper, we develop a general method for stock price prediction using time-varying covariance information. To address the time-varying nature of financial time series, we assign exponential weights to the price data so that recent data points are weighted more heavily. Our proposed method involves a dimension-reduction operation constructed based on principle components. Projecting the noisy observation onto a principle subspace results in a well-conditioned problem. We illustrate our results based on historical daily price data for 150 companies from different market-capitalization categories. We compare the performance of our method to two other methods: Gauss-Bayes, which is numerically demanding, and moving average, a simple method often used by technical traders and researchers. We investigate the results based on mean squared error and directional change statistic of prediction, as measures of performance, and volatility of prediction as a measure of risk.

Highlights

  • Predicting future stock price values is a very challenging task

  • In this paper we introduced a new method for predicting future stock price values based on covariance information

  • We develop this method based on a filtering operation using principle components to overcome the numerical complications of conditional mean

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Summary

Introduction

Predicting future stock price values is a very challenging task. There is a big body of literature on different methods and different predictors to incorporate into those methods to predict the future values as closely as possible. The literature provides strong evidence that past price/ return data can be used to predict future stock prices. Some other studies show there is a positive correlation for returns over the period of weeks or months [2]. Studies demonstrate stock return correlation over the period of multiple months or years. Fama and French report that the auto-correlation is stronger for longer periods, three to five years, compared to daily or weekly periods [3]. Cutler et al report positive auto-correlation over the horizon of several months and negative auto-correlation over the horizon of three to five years [4].

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