论文标题

基于深层模糊自组织地图的财务交易决策

Financial Trading Decisions based on Deep Fuzzy Self-Organizing Map

论文作者

Dehao, Pei, Chao, Luo

论文摘要

财务数据的波动性特征将在不同时期发生很大变化,这是影响机器学习在定量交易中应用的主要因素之一。因此,为了有效区分金融市场的波动模式,可以为交易决策提供有意义的信息。在本文中,提出了一种基于与GRU网络相关的深层模糊自组织地图(DFSOM)的新型智能交易系统,其中提出了DFSOM,用于将财务数据聚类以一种不受欢迎的方式获取多重波动模式。首先,为了捕获趋势特征并逃避财务数据中高声音的效果,处理了扩展的烛台图表而不是原始数据的图像,并将获得的功能应用于以下无监督的学习,其中烛台图是带有价格和音量信息的。其次,通过使用烛台功能,构建了两层深度模糊的自组织映射以进行聚类,其中两层模型以多个时间尺度进行聚类以改善时间相关信息的处理。第三,GRU网络用于实现预测任务,该任务是基于构建智能交易模型的。通过使用各种实际财务数据集来验证所提出方法的可行性和有效性。

The volatility features of financial data would considerably change in different periods, that is one of the main factors affecting the applications of machine learning in quantitative trading. Therefore, to effectively distinguish fluctuation patterns of financial markets can provide meaningful information for the trading decision. In this article, a novel intelligent trading system based on deep fuzzy self-organizing map (DFSOM) companied with GRU networks is proposed, where DFSOM is utilized for the clustering of financial data to acquire multiple fluctuation patterns in an unsupervised way. Firstly, in order to capture the trend features and evade the effect of high noises in financial data, the images of extended candlestick charts instead of raw data are processed and the obtained features are applied for the following unsupervised learning, where candlestick charts are produced with both price and volume information. Secondly, by using the candlestick features, a two-layer deep fuzzy self-organizing map is constructed to carry out the clustering, where two-layer models carry out the clustering in multiple time scales to improve the processing of time-dependent information. Thirdly, GRU networks are used to implement the prediction task, based on which an intelligent trading model is constructed. The feasibility and effectiveness of the proposed method are verified by using various real financial data sets.

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