Application of Stock Analysis Using Deep Learning

Bo-Sheng Lin, Wei-Tao Chu, Chuin-Mu Wang
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引用次数: 14

Abstract

The stock market plays a very important role in the entire financial market, and one of the most attractive research issues in predicting stock price fluctuations. Since the trend of stocks is usually related to the previous stock price, this paper uses a neural network with memory capability: Recurrent neural network (RNN). In order to improve its performance, Long Short Term Memory (LSTM) architecture was used. LSTM improves the long-term dependence of traditional RNNs and effectively improves the accuracy and stability of stability.
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深度学习在股票分析中的应用
股票市场在整个金融市场中占有非常重要的地位,股票价格波动预测是目前最具吸引力的研究课题之一。由于股票的趋势通常与之前的股票价格相关,因此本文使用具有记忆能力的神经网络:递归神经网络(RNN)。为了提高其性能,采用了长短期记忆(LSTM)架构。LSTM改善了传统rnn的长期依赖性,有效提高了稳定性的准确性和稳定性。
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