4.6 Article

Detecting Fake Reviews in Google Maps-A Case Study

期刊

APPLIED SCIENCES-BASEL
卷 13, 期 10, 页码 -

出版社

MDPI
DOI: 10.3390/app13106331

关键词

fake review detection; Google Maps; natural language processing; Polish language; machine learning; random forest

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Many customers rely on online reviews to make informed decisions, but fake reviews are becoming increasingly common, leading to a need for effective detection methods. This article presents a case study on detecting fake reviews in Google Maps places in Poland. The study includes the construction and validation of a dataset containing 18 thousand fake and genuine reviews, and the training of machine learning models to detect fake reviews and accounts. The results show promising initial recognition scores and can contribute to future research on detecting fake reviews on the Internet.
Many customers rely on online reviews to make an informed decision about purchasing products and services. Unfortunately, fake reviews, which can mislead customers, are increasingly common. Therefore, there is a growing need for effective methods of detection. In this article, we present a case study showing research aimed at recognizing fake reviews in Google Maps places in Poland. First, we describe a method of construction and validation of a dataset, named GMR-PL (Google Maps Reviews-Polish), containing a selection of 18 thousand fake and genuine reviews in Polish. Next, we show how we used this dataset to train machine learning models to detect fake reviews and the accounts that published them. We also propose a novel metric for measuring the typicality of an account name and a metric for measuring the geographical dispersion of reviewed places. Initial recognition results were promising: we achieved an F1 score of 0.92 and 0.74 when detecting fake accounts and reviews, respectively. We believe that our experience will help in creating real-life review datasets for other languages and, in turn, will help in research aimed at the detection of fake reviews on the Internet.

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