Financial fraud detection using vocal, linguistic and financial cues
作者:
Highlights:
• We investigate whether a prediction model for corporate financial fraud that jointly considers numeric financial information as well as both linguistic and vocalic aspects of corporate executive speech improves predictive accuracy.
• Optimization results reveal that only a subset of the complete set of numeric, linguistic and vocalic predictors enhance overall predictive accuracy.
• These results should assist investors, financial analysts and regulators in identifying the most effective markers of corporate fraud.
摘要
Corporate financial fraud has a severe negative impact on investors and the capital market in general. The current resources committed to financial fraud detection (FFD), however, are insufficient to identify all occurrences in a timely fashion. Methods for automating FFD have mainly relied on financial statistics, although some recent research has suggested that linguistic or vocal cues may also be useful indicators of deception. Tools based on financial numbers, linguistic behavior, and non-verbal vocal cues have each demonstrated the potential for detecting financial fraud. However, the performance of these tools continues to be poorer than desired, limiting their use on a stand-alone basis to help identify companies for further investigation. The hypothesis investigated in this study is that an improved tool could be developed if specific attributes from these feature categories were analyzed concurrently. Combining features across categories provided better fraud detection than was achieved by any of the feature categories alone. However, performance improvements were only observed if feature selection was used suggesting that it is important to discard non-informative features.
论文关键词:Automated deception detection,Financial fraud,Corporate executive speech
论文评审过程:Received 13 May 2013, Revised 11 February 2015, Accepted 6 April 2015, Available online 14 April 2015.
论文官网地址:https://doi.org/10.1016/j.dss.2015.04.006