释放金融风险预测的声音力量:理论驱动的深度学习设计方法

IF 7 2区 管理学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Yi Yang, Yu Qin, Yangyang Fan, Zhongju Zhang
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引用次数: 1

摘要

非结构化多媒体数据(文本和音频)为金融行业在投资组合和风险管理等领域获得可操作的决策提供了前所未有的机会。然而,由于方法论上的巨大挑战,非结构化多媒体数据的商业价值前景尚未实现。在本研究中,我们使用设计科学方法开发了DeepVoice,这是一种新颖的非语言预测分析系统,用于季度收益电话会议的财务风险预测。DeepVoice预测财务风险的方法,不仅是利用经理人在财报电话会议上说的话(口头语言线索),还包括经理人说话的方式(声音线索)。DeepVoice的设计解决了与非语言交流分析相关的几个挑战。我们还提出了一个两阶段的深度学习模型,以有效地整合管理者的顺序语音和语言线索。使用标准普尔500指数公司四年来的6,047个收益电话样本(录音和文本文本)的独特数据集,我们表明DeepVoice产生的风险预测误差明显低于以前的努力。这种改善还可以转化为期权交易中可观的经济收益。讨论了分析声音线索的理论和实践意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unlocking the Power of Voice for Financial Risk Prediction: A Theory-Driven Deep Learning Design Approach
Unstructured multimedia data (text and audio) provides unprecedented opportunities to derive actionable decision-making in the financial industry, in areas such as portfolio and risk management. However, due to formidable methodological challenges, the promise of business value from unstructured multimedia data has not materialized. In this study, we use a design science approach to develop DeepVoice, a novel nonverbal predictive analysis system for financial risk prediction, in the setting of quarterly earnings conference calls. DeepVoice forecasts financial risk by leveraging not only what managers say (verbal linguistic cues) but also how managers say it (vocal cues) during the earnings conference calls. The design of DeepVoice addresses several challenges associated with the analysis of nonverbal communication. We also propose a two-stage deep learning model to effectively integrate managers’ sequential vocal and verbal cues. Using a unique dataset of 6,047 earnings call samples (audio recordings and textual transcripts) of S&P 500 firms across four years, we show that DeepVoice yields remarkably lower risk forecast errors than that achieved by previous efforts. The improvement can also translate into nontrivial economic gains in options trading. The theoretical and practical implications of analyzing vocal cues are discussed.
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来源期刊
Mis Quarterly
Mis Quarterly 工程技术-计算机:信息系统
CiteScore
13.30
自引率
4.10%
发文量
36
审稿时长
6-12 weeks
期刊介绍: Journal Name: MIS Quarterly Editorial Objective: The editorial objective of MIS Quarterly is focused on: Enhancing and communicating knowledge related to: Development of IT-based services Management of IT resources Use, impact, and economics of IT with managerial, organizational, and societal implications Addressing professional issues affecting the Information Systems (IS) field as a whole Key Focus Areas: Development of IT-based services Management of IT resources Use, impact, and economics of IT with managerial, organizational, and societal implications Professional issues affecting the IS field as a whole
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