Online deception detection refueled by real world data collection
arXiv preprint arXiv:1707.09406, 2017•arxiv.org
The lack of large realistic datasets presents a bottleneck in online deception detection
studies. In this paper, we apply a data collection method based on social network analysis to
quickly identify high-quality deceptive and truthful online reviews from Amazon. The dataset
contains more than 10,000 deceptive reviews and is diverse in product domains and
reviewers. Using this dataset, we explore effective general features for online deception
detection that perform well across domains. We demonstrate that with generalized features …
studies. In this paper, we apply a data collection method based on social network analysis to
quickly identify high-quality deceptive and truthful online reviews from Amazon. The dataset
contains more than 10,000 deceptive reviews and is diverse in product domains and
reviewers. Using this dataset, we explore effective general features for online deception
detection that perform well across domains. We demonstrate that with generalized features …
The lack of large realistic datasets presents a bottleneck in online deception detection studies. In this paper, we apply a data collection method based on social network analysis to quickly identify high-quality deceptive and truthful online reviews from Amazon. The dataset contains more than 10,000 deceptive reviews and is diverse in product domains and reviewers. Using this dataset, we explore effective general features for online deception detection that perform well across domains. We demonstrate that with generalized features - advertising speak and writing complexity scores - deception detection performance can be further improved by adding additional deceptive reviews from assorted domains in training. Finally, reviewer level evaluation gives an interesting insight into different deceptive reviewers' writing styles.
arxiv.org
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