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Research on a stock-matching trading strategy based on bi-objective optimization

机译:基于双目标优化的股票匹配交易策略研究

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摘要

In recent years, with strict domestic financial supervision and other policy-oriented factors, some products are becoming increasingly restricted, including nonstandard products, bank-guaranteed wealth management products, and other products that can provide investors with a more stable income. Pairs trading, a type of stable strategy that has proved efficient in many financial markets worldwide, has become the focus of investors. Based on the traditional Gatev-Goetzmann-Rouwenhorst (GGR, Gatev et al. 2006) strategy, this paper proposes a stock-matching strategy based on bi-objective quadratic programming with quadratic constraints (BQQ) model. Under the condition of ensuring a long-term equilibrium between paired-stock prices, the volatility of stock spreads is increased as much as possible, improving the profitability of the strategy. To verify the effectiveness of the strategy, we use the natural logs of the daily stock market indices in Shanghai. The GGR model and the BQQ model proposed in this paper are back-tested and compared. The results show that the BQQ model can achieve a higher rate of returns.
机译:近年来,在严格的国内金融监管和其他政策导向的因素的作用下,一些产品受到越来越多的限制,包括非标准产品,银行担保的理财产品以及其他可以为投资者提供更稳定收入的产品。配对交易是一种稳定的策略,已在全球许多金融市场中证明是有效的,已成为投资者关注的焦点。基于传统的Gatev-Goetzmann-Rouwenhorst(GGR,Gatev等人,2006年)策略,提出了一种基于带有二次约束(BQQ)模型的双目标二次规划的股票匹配策略。在确保成对股票价格之间长期保持平衡的条件下,尽可能提高股票价差的波动性,从而提高该策略的盈利能力。为了验证该策略的有效性,我们使用了上海每日股市指数的自然对数。对本文提出的GGR模型和BQQ模型进行了回测和比较。结果表明,BQQ模型可以实现更高的回报率。

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