用大数据预测金融市场:深度学习

Afan Hasan, O. Kalipsiz, S. Akyokuş
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引用次数: 15

摘要

深度学习对从大量未标记/无监督的数据中学习很有吸引力,这使得它对从大数据中提取有意义的表示和模式很有吸引力。从最简单的定义来看,深度学习就是将机器学习方法应用于大数据。本研究探讨了如何将层次深度学习模型应用于金融领域的预测和分类等问题。证券的设计与定价、投资组合的构建、风险管理和股票市场预测是金融学中重要的预测问题。这类问题包括数据和事件之间关系复杂的大型数据集。用一个完整的经济模型来表示这些复杂的关系是非常困难的,有时甚至是不可能的。深度学习方法通过表示数据之间的复杂关系,可以产生比金融领域的标准方法更有用的结果。在本研究中,我们将深度学习方法引入并应用于股票市场预测问题,并取得了成功的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting financial market in big data: Deep learning
Deep Learning is appealing for learning from large amounts of unlabeled/unsupervised data, making it attractive for extracting meaningful representations and patterns from big data. Deep learning, by its simplest definition, is expressed as the application of machine learning methods to the big data. In this study, it was investigated how to apply hierarchical deep learning models for the problems in finance such as prediction and classification. The Design and pricing of securities, construction of portfolios, risk management and stock market forecasting are some of important prediction problems in finance. These kind of problems include large data sets with complex relationship among data and events. It is very difficult or sometimes impossible to represent these complex relationships in a full economic model. Deep learning methods, by representing complex relationships among data, allows the production of more useful results than standard methods in finance. In this study, we introduced and applied deep learning methods to stock market prediction problem and obtained successful results.
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