Prediction and Portfolio Optimization in Quantitative Trading Using Machine Learning Techniques

Van-Dai Ta, Chuan-Ming Liu, Direselign Addis
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引用次数: 12

Abstract

Quantitative trading is an automated trading system in which the trading strategies and decisions are conducted by a set of mathematical models. Quantitative trading applies a wide range of computational approaches such as statistics, physics, or machine learning to analyze, predict, and take advantage of big data in finance for investment. This work studies core components of a quantitative trading system. Machine learning offers a number of important advantages over traditional algorithmic trading. With machine learning, multiple trading strategies are implemented consistently and able to adapt to real-time market. To demonstrate how machine learning techniques can meet quantitative trading, linear regression and support vector regression models are used to predict stock movement. In addition, multiple optimization techniques are used to optimize the return and control risk in trading. One common characteristic for both prediction models is they effectively performed in short-term prediction with high accuracy and return. However, in short-term prediction, the linear regression model is outperform compared to the support vector regression model. The prediction accuracy is considerably improved by adding technical indicators to dataset rather than adjusted price and volume. Despite the gap between prediction modeling and actual trading, the proposed trading strategy achieved a higher return than the S&P 500 ETF-SPY.
机器学习技术在定量交易中的预测和投资组合优化
定量交易是一种自动交易系统,其中交易策略和决策是由一组数学模型进行的。量化交易应用广泛的计算方法,如统计学、物理学或机器学习来分析、预测,并利用金融中的大数据进行投资。本文研究了量化交易系统的核心组成部分。与传统的算法交易相比,机器学习提供了许多重要的优势。通过机器学习,多种交易策略被一致地实施,并能够适应实时市场。为了演示机器学习技术如何满足定量交易,我们使用线性回归和支持向量回归模型来预测股票走势。此外,在交易过程中运用了多种优化技术来优化收益和控制风险。这两种预测模型的一个共同特点是它们都能有效地进行短期预测,具有较高的准确性和收益率。然而,在短期预测中,线性回归模型优于支持向量回归模型。通过在数据集中加入技术指标,而不是调整价格和数量,预测精度得到了显著提高。尽管预测模型与实际交易之间存在差距,但所提出的交易策略取得了比标普500 ETF-SPY更高的回报。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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