SETN:利用文本和网络信息增强股票嵌入功能

Takehiro Takayanagi, Hiroki Sakaji, Kiyoshi Izumi
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引用次数: 0

摘要

股票嵌入是一种股票向量表示方法。财富管理领域对股票向量表示(即股票嵌入)的需求日益增长,该方法已被应用于各种任务,如股票价格预测、投资组合优化和类似的基金识别。股票嵌入的优点是可以量化股票之间的相对关系,并且可以从文本和网络数据等非结构化数据中提取有用的信息。在本研究中,我们提出了增强文本和网络信息的股票嵌入(SETN),使用基于变换器的领域自适应预训练模型来嵌入文本信息,并使用图神经网络模型来掌握网络信息。我们在相关公司信息提取任务中评估了所提模型的性能。我们还证明,与基线方法相比,通过所提模型获得的股票嵌入在创建主题基金方面表现更好,这为财富管理行业的各种应用提供了一条前景广阔的途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SETN: Stock Embedding Enhanced with Textual and Network Information
Stock embedding is a method for vector representation of stocks. There is a growing demand for vector representations of stock, i.e., stock embedding, in wealth management sectors, and the method has been applied to various tasks such as stock price prediction, portfolio optimization, and similar fund identifications. Stock embeddings have the advantage of enabling the quantification of relative relationships between stocks, and they can extract useful information from unstructured data such as text and network data. In this study, we propose stock embedding enhanced with textual and network information (SETN) using a domain-adaptive pre-trained transformer-based model to embed textual information and a graph neural network model to grasp network information. We evaluate the performance of our proposed model on related company information extraction tasks. We also demonstrate that stock embeddings obtained from the proposed model perform better in creating thematic funds than those obtained from baseline methods, providing a promising pathway for various applications in the wealth management industry.
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