Title
A Framework for Automated Rating of Online Reviews Against the Underlying Topics
Abstract
Even though the most online review systems offer star rating in addition to free text reviews, this only applies to the overall review. However, different users may have different preferences in relation to different aspects of a product or a service and may struggle to extract relevant information from a massive amount of consumer reviews available online. In this paper, we present a framework for extracting prevalent topics from online reviews and automatically rating them on a 5-star scale. It consists of five modules, including linguistic pre-processing, topic modelling, text classification, sentiment analysis, and rating. Topic modelling is used to extract prevalent topics, which are then used to classify individual sentences against these topics. A state-of-the-art word embedding method is used to measure the sentiment of each sentence. The two types of information associated with each sentence -- its topic and sentiment -- are combined to aggregate the sentiment associated with each topic. The overall topic sentiment is then projected onto the 5-star rating scale. We use a dataset of Airbnb online reviews to demonstrate a proof of concept. The proposed framework is simple and fully unsupervised. It is also domain independent, and, therefore, applicable to any other domains of products and services.
Year
DOI
Venue
2017
10.1145/3077286.3077291
ACM Southeast Regional Conference
Field
DocType
ISBN
Data mining,Latent Dirichlet allocation,Computer science,Sentiment analysis,Rating scale,Proof of concept,Natural language processing,Artificial intelligence,Word embedding,Topic model,Sentence
Conference
978-1-4503-5024-2
Citations 
PageRank 
References 
0
0.34
14
Authors
3
Name
Order
Citations
PageRank
Xiangfeng Dai111.37
Irena Spasić235432.55
Frederic Andres35112.80