多词汇分类和基于价值的情感分析作为深度神经网络股价预测的特征

Decis. Sci. Pub Date : 2023-02-15 DOI:10.3390/sci5010008
S. Velu, Vinayakumar Ravi, Kayalvily Tabianan
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引用次数: 3

摘要

这项工作的目标是通过将一个额外的因素——在这个例子中,一组精心挑选的推文——纳入一个多空重复神经通道,来增强现有的金融市场预测框架。为了产生这种预测的属性,本研究使用了一种独特的态度分析方法,将心理标签和代表情绪强度的效价评级相结合。这两个词汇都产生了额外的性质,如2级极化、3级极化、总反应性和总价。明确标记到数据库中的情感极性与创新词汇方法的结果形成鲜明对比。将这些概念的结果与所研究股票的实际市场利率进行对比,是本分析的最后一步。采用均方根误差(RMSE)、精确度和平均绝对百分比误差(MAPE)对结果进行评价。在大多数市场预测的实例中,附加一个额外的因素已被证明可以降低RMSE并提高长序列预测的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Lexicon Classification and Valence-Based Sentiment Analysis as Features for Deep Neural Stock Price Prediction
The goal of the work is to enhance existing financial market forecasting frameworks by including an additional factor–in this example, a collection of carefully chosen tweets—into a long-short repetitive neural channel. In order to produce attributes for such a forecast, this research used a unique attitude analysis approach that combined psychological labelling and a valence rating that represented the strength of the sentiment. Both lexicons produced extra properties such 2-level polarization, 3-level polarization, gross reactivity, as well as total valence. The emotional polarity explicitly marked into the database contrasted well with outcomes of the innovative lexicon approach. Plotting the outcomes of each of these concepts against actual market rates of the equities examined has been the concluding step in this analysis. Root Mean Square Error (RMSE), preciseness, as well as Mean Absolute Percentage Error (MAPE) were used to evaluate the results. Across most instances of market forecasting, attaching an additional factor has been proven to reduce the RMSE and increase the precision of forecasts over lengthy sequences.
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