Optimizing restaurant recommendations through sentiment analysis
Abstract
"The rapid growth of the food industry and dining-out culture has led to a vast growth
in the number of restaurants over the years. As a result, customers are overwhelmed
with too many options to purchase their meals from. Using sentiment analysis, this
study’s goal would therefore be to create a data-driven recommendation system that
can provide customers with the best restaurants that serve their preferred cuisine.
Unlike previous research, this study includes a model that analyzes reviews in four
languages namely English, Bangla, Code Switch (Bangla and English) and Code
Mix (Banglish) from a multitude of food and applications. A customer’s choice of
restaurant will depend on multiple factors such as the recommendations of friends or
food critics, their culinary preference, pricing, location, the general reputation of the
restaurant and so on. This study proposes a novel approach that uses sentiment anal-
ysis based on primarily sourced restaurant reviews and ratings to provide person-
alized restaurant recommendations to interested customers. The assessment of our
proposed model will be wide-ranging, through sentiment analysis applying multiple
BERT model variants such as BERT for English annotated reviews, BanglaBERT
for Bengali reviews, BanglishBERT for Code-Mixed reviews and XLM-RoBERTa
for Code-Switched reviews with 79% , 74%, 75% and 77% best model accuracies
respectively. Furthermore, this research investigates the analysis of various LSTM
architectures, including Attention-LSTM, Bi-LSTM, and a Transformer-based T5
model. Utilizing customer reviews for a variety of restaurants, the efficiency of the
model across multiple languages and types of sentiment analysis tasks will be eval-
uated throughout the entire set of experiments. The results of this study should
provide a time efficient solution for food enthusiasts and the general consumer to be
introduced to the finest restaurants with the best gastronomic delights, magnificent
ambience and atmosphere and the best customer service.
"