Leveraging Stacking Framework for Fake Review Detection in the Hospitality Sector

Author:

Ashraf Syed Abdullah12ORCID,Javed Aariz Faizan1,Bellary Sreevatsa1,Bala Pradip Kumar1ORCID,Panigrahi Prabin Kumar3ORCID

Affiliation:

1. Department of Information Systems & Business Analytics, Indian Institute of Management Ranchi, Prabandhan Nagar, Nayasarai Road, Ranchi 835303, Jharkhand, India

2. Department of Analytics & Operations, Delhi School of Business, Outer Ring Rd, AU Block, Jal Board Colony, Pitampura, New Delhi 110034, Delhi, India

3. Department of Information Systems, Indian Institute of Management Indore, Prabandh Shikhar, Rau-Pithampur Road, Indore 453556, Madhya Pradesh, India

Abstract

Driven by motives of profit and competition, fake reviews are increasingly used to manipulate product ratings. This trend has caught the attention of academic researchers and international regulatory bodies. Current methods for spotting fake reviews suffer from scalability and interpretability issues. This study focuses on identifying suspected fake reviews in the hospitality sector using a review aggregator platform. By combining features and leveraging various classifiers through a stacking architecture, we improve training outcomes. User-centric traits emerge as crucial in spotting fake reviews. Incorporating SHAP (Shapley Additive Explanations) enhances model interpretability. Our model consistently outperforms existing methods across diverse dataset sizes, proving its adaptable, explainable, and scalable nature. These findings hold implications for review platforms, decision-makers, and users, promoting transparency and reliability in reviews and decisions.

Publisher

MDPI AG

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