This study proposes a new framework to evolve efficacious yet parsimonious neural architectures for the movement prediction of stock market indices using technical indicators as inputs. In the light of a sparse signal-to-noise ratio under the Efficient Market hypothesis, developing machine learning methods to predict the movement of a financial market using technical indicators has shown to be a challenging problem. To this end, the neural architecture search is posed as a multi-criteria optimization problem to balance the efficacy with the complexity of architectures. In addition, the implications of different dominant trading tendencies which may be present in the pre-COVID and within-COVID time periods are investigated. An $\epsilon-$ constraint framework is proposed as a remedy to extract any concordant information underlying the possibly conflicting pre-COVID data. Further, a new search paradigm, Two-Dimensional Swarms (2DS) is proposed for the multi-criteria neural architecture search, which explicitly integrates sparsity as an additional search dimension in particle swarms. A detailed comparative evaluation of the proposed approach is carried out by considering genetic algorithm and several combinations of empirical neural design rules with a filter-based feature selection method (mRMR) as baseline approaches. The results of this study convincingly demonstrate that the proposed approach can evolve parsimonious networks with better generalization capabilities.
翻译:这项研究提出一个新的框架,以利用技术指标作为投入,为股票市场指数的流动预测制定有效但又模糊的神经结构。鉴于高效市场假设下的信号到噪音比率稀少,因此,开发机器学习方法,使用技术指标预测金融市场的动态是一个具有挑战性的问题。为此,神经结构搜索是一个多标准最优化问题,以平衡结构的功效和结构的复杂性。此外,还调查了COVID前和COVID时段内可能存在的各种主要贸易趋势的影响。提议设立一个美元-美元制约框架,作为补救方法,以提取可能相互冲突的COVID前数据背后的任何一致信息。此外,还提议为多标准神经结构搜索建立一个新的搜索模式,即双维成型螺旋(2DS),明确将孔状作为粒群中的额外搜索层面。通过考虑遗传算法和若干基于实验性神经系统能力的拟议组合,对拟议方法进行了详细的比较评价。这一方法的精细分析,将实验性神经系统设计方法与模型设计方法的精细分析方法结合起来。