Abstract

Time series prediction has been widely applied to the finance industry in applications such as stock market price and commodity price forecasting. Machine learning methods have been widely used in financial time series prediction in recent years. How to label financial time series data to determine the prediction accuracy of machine learning models and subsequently determine final investment returns is a hot topic. Existing labeling methods of financial time series mainly label data by comparing the current data with those of a short time period in the future. However, financial time series data are typically non-linear with obvious short-term randomness. Therefore, these labeling methods have not captured the continuous trend features of financial time series data, leading to a difference between their labeling results and real market trends. In this paper, a new labeling method called “continuous trend labeling” is proposed to address the above problem. In the feature preprocessing stage, this paper proposed a new method that can avoid the problem of look-ahead bias in traditional data standardization or normalization processes. Then, a detailed logical explanation was given, the definition of continuous trend labeling was proposed and also an automatic labeling algorithm was given to extract the continuous trend features of financial time series data. Experiments on the Shanghai Composite Index and Shenzhen Component Index and some stocks of China showed that our labeling method is a much better state-of-the-art labeling method in terms of classification accuracy and some other classification evaluation metrics. The results of the paper also proved that deep learning models such as LSTM and GRU are more suitable for dealing with the prediction of financial time series data.

Highlights

  • A time series is a set of observations, each one being recorded at a specific time [1]

  • This paper proposed a novel data labeling method called CTL to extract the continuous trend feature of financial time series data

  • In the feature preprocessing stage, this paper proposed a new method that can avoid the problem of look-ahead bias encountered in the traditional data standardization or normalization process

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Summary

Introduction

A time series is a set of observations, each one being recorded at a specific time [1]. In the course of financial market development, a large number of studies have shown that the market is non-linear and chaotic [3,4,5], especially for the financial time series data such as the values of stocks, foreign exchanges, and commodities in the financial market that are sensitive to external impact and tend to fluctuate violently. Such time series data often have strong non-linear characteristics [6]. How to better predict the trend of financial market is of great significance for reducing investment risk and making financial decisions

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