基于上下文感知的金融意见挖掘深度嵌入网络

Liang Zhang, Keli Xiao, Hengshu Zhu, Chuanren Liu, Jingyuan Yang, Bo Jin
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引用次数: 18

摘要

随着人工智能的最新进展,金融文本挖掘在理论研究和实践影响方面获得了新的潜力。金融文本挖掘的一个重要研究问题是如何准确地识别纯文本单词背后的实际金融意见(例如,看涨或看跌)。传统方法主要将此任务视为基于机器学习算法的文本分类问题。然而,它们中的大多数都严重依赖于从文本中提取的手工特征。事实上,这方面的一个关键问题是,金融意见的潜在全球和地方背景通常无法完全捕捉。为此,我们提出了一个上下文感知的金融文本挖掘深度嵌入网络,命名为CADEN,通过对全局和局部上下文信息进行联合编码。特别是,我们捕获并包含一个态度感知的用户嵌入来增强我们模型的性能。我们通过基于真实世界数据集和几个最先进的投资者情绪识别基线的广泛实验验证了我们的方法。我们的结果表明,我们的方法在从不同格式的文本中识别财务意见方面始终表现优异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CADEN: A Context-Aware Deep Embedding Network for Financial Opinions Mining
Following the recent advances of artificial intelligence, financial text mining has gained new potential to benefit theoretical research with practice impacts. An essential research question for financial text mining is how to accurately identify the actual financial opinions (e.g., bullish or bearish) behind words in plain text. Traditional methods mainly consider this task as a text classification problem with solutions based on machine learning algorithms. However, most of them rely heavily on the hand-crafted features extracted from the text. Indeed, a critical issue along this line is that the latent global and local contexts of the financial opinions usually cannot be fully captured. To this end, we propose a context-aware deep embedding network for financial text mining, named CADEN, by jointly encoding the global and local contextual information. Especially, we capture and include an attitude-aware user embedding to enhance the performance of our model. We validate our method with extensive experiments based on a real-world dataset and several state-of-the-art baselines for investor sentiment recognition. Our results show a consistently superior performance of our approach for identifying the financial opinions from texts of different formats.
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