Rating detection by reviews using ML and NLP towards mobile phone recommendation
Date
2023-01Publisher
Brac UniversityAuthor
Sarker, Md WafiAl Nahian, Sheikh Sanzid
Khan, Anjumand Moshtari
Oraib, Abdullah
Islam, Sikder Mohidul
Metadata
Show full item recordAbstract
Product recommendation is a type of marketing tool that has become increasingly
important for businesses as well as in purchasing goods in the digital age. Prod uct recommendation is the process of suggesting items to customers based on their
previous purchases or choices and is a form of personalization where the goal is to
provide relevant, valuable, and timely information to customers to help them make
decisions about what to buy. The purpose of product recommendations is to in crease customer engagement, loyalty, and ultimately, sales while ensuring customers
help buying products according to their preference. By providing customers with
personalized product recommendations, businesses are able to increase customer
satisfaction and loyalty, as well as drive sales. On the other way, customers also
feel secure while purchasing products according to their personality and choices.
This paper builds a product recommendation system by analyzing the techniques
of Machine Learning and Natural Language Processing. The focus of the research
is on recommending mobile phone products to users based on their preferences and
interests. The system was advanced and examined using a dataset of mobile phone
specifications and user reviews. The study’s findings demonstrate that the sug gested recommendation system may offer users accurate and pertinent ideas; but,
due to dataset restrictions, the system cannot be expanded to include other kinds of
products. However, the proposed system can be used for taking personalized require ments and finding a better result for them with improved accuracy and precision
which ultimately will enhance customer satisfaction.