Automatic trading method based on piecewise aggregate approximation and multi-swarm of improved self-adaptive particle swarm optimization with validation
作者:
Highlights:
• A novel method for decision support in automatic stock trading is proposed.
• The method aims to tackle the problem of the high variability of the results of competing methods.
• The method works by discovering the best patterns of the stock for deciding on buying and selling operations.
• To tackle the high variance problem, the proposed method employs multi-swarms with early stopping using a validation set.
• Experiments show that our approach outperforms alternative approaches on S&P100 stocks.
摘要
Financial time series represent the stock prices over time and exhibit behavior similar to a data stream. Many works report on the use of data mining techniques to predict the future direction of stock prices and to discover patterns in the time series data to provide decision support for trading operations. Traditional optimization methods do not take into account the possibility that the function to be optimized, namely, the final financial balance for operations considering some stock, may have multiple peaks, i.e., be represented by multimodal functions. However, multimodality is a known feature of real-world financial time series optimization problems. To deal with this issue, this article proposes the PAA-MS-IDPSO-V approach (Piecewise Aggregate Approximation - Multi-Swarm of Improved Self-adaptive Particle Swarm Optimization with Validation). The proposed method aims to find patterns in financial time series to support investment decisions. The approach uses multi-swarms to obtain a better particle initialization for the final optimization phase since it aims to tackle multimodal problems. Furthermore, it uses a validation set with early stopping to avoid overfitting. The patterns discovered by the method are used together with investment rules to support decisions and thus help investors to maximize the profit in their operations in the stock market. The experiments reported in this paper compare the results obtained by the proposed model with the Buy-and-Hold, PAA-IDPSO approaches and another approach found in the literature. We report on experiments conducted with S&P100 index stocks and using the Friedman Non-Parametric Test with the Nemenyi post-hoc Test both with 95% confidence level. The results show that the proposed model outperformed the competing methods and was able to considerably reduce the variance for all stocks.
论文关键词:Multi-swarm optimization,Pattern discovery,Data mining,Time series representation,Stock market,Particle swarm optimization
论文评审过程:Received 18 January 2017, Revised 11 October 2017, Accepted 12 October 2017, Available online 17 October 2017, Version of Record 14 November 2017.
论文官网地址:https://doi.org/10.1016/j.dss.2017.10.005