A comparison of classification methods for predicting deception in computer-mediated communication
成果类型:
Article; Proceedings Paper
署名作者:
Zhou, L; Burgoon, JK; Twitchell, DP; Qin, TT; Nunamaker, JF Jr
署名单位:
University System of Maryland; University of Maryland Baltimore; University of Arizona
刊物名称:
JOURNAL OF MANAGEMENT INFORMATION SYSTEMS
ISSN/ISSBN:
0742-1222
DOI:
10.1080/07421222.2004.11045779
发表日期:
2004
页码:
139-165
关键词:
interpersonal deception
DISCRIMINANT-ANALYSIS
Neural Networks
richness
cues
摘要:
The increased chance of deception in computer-mediated communication and the potential risk of taking action based on deceptive information calls for automatic detection of deception. To achieve the ultimate goal of automatic prediction of deception, we selected four common classification methods and empirically compared their performance in predicting deception. The deception and truth data were collected during two experimental studies. The results suggest that all of the four methods were promising for predicting deception with cues to deception. Among them, neural networks exhibited consistent performance and were robust across test settings. The comparisons also highlighted the importance of selecting important input variables and removing noise in an attempt to enhance the performance of classification methods. The selected cues offer both methodological and theoretical contributions to the body of deception and information systems research.