Leveraging Financial Social Media Data for Corporate Fraud Detection
成果类型:
Article
署名作者:
Dong, Wei; Liao, Shaoyi; Zhang, Zhongju
署名单位:
Chinese Academy of Sciences; University of Science & Technology of China, CAS; City University of Hong Kong; Arizona State University; Arizona State University-Tempe; Arizona State University; Arizona State University-Tempe
刊物名称:
JOURNAL OF MANAGEMENT INFORMATION SYSTEMS
ISSN/ISSBN:
0742-1222
DOI:
10.1080/07421222.2018.1451954
发表日期:
2018
页码:
461-487
关键词:
Deception
text
management
FRAMEWORK
BEHAVIOR
words
news
cues
摘要:
Corporate fraud can lead to significant financial losses and cause immeasurable damage to investor confidence and the overall economy. Detection of such frauds is a time-consuming and challenging task. Traditionally, researchers have been relying on financial data and/or textual content from financial statements to detect corporate fraud. Guided by systemic functional linguistics (SFL) theory, we propose an analytic framework that taps into unstructured data from financial social media platforms to assess the risk of corporate fraud. We assemble a unique data set including 64 fraudulent firms and a matched sample of 64 nonfraudulent firms, as well as the social media data prior to the firm's alleged fraud violation in Accounting and Auditing Enforcement Releases (AAERs). Our framework automatically extracts signals such as sentiment features, emotion features, topic features, lexical features, and social network features, which are then fed into machine learning classifiers for fraud detection. We evaluate and compare the performance of our algorithm against baseline approaches using only financial ratios and language-based features respectively. We further validate the robustness of our algorithm by detecting leaked information and rumors, testing the algorithm on a new data set, and conducting an applicability check. Our results demonstrate the value of financial social media data and serve as a proof of concept of using such data to complement traditional fraud detection methods.