Online shopping has become
very popular all over the world, although in Bangladesh it is at its
early stages but people of Bangladesh are becoming familiar with this.
Day by day online market is becoming more challenging due to the open
platform, where product quality and customer satisfaction are the most
important factors for building a reliable stand in this very challenging
and competitive market. In Bangladesh an extensive number of
populations are not aware of online shopping, so in many cases they
aren't able to identify the reliable online platform for shopping. In
recent times many online companies are making frauds with the people of
Bangladesh “Evaly“ ”Alesha Mart“ are two of them. In this research we
employed a customer review system, which will be a probable solution for
overthrowing the problem. Our aim for this research is to monitor
reviews given by the customer after buying some product from an online
market, where we can easily find out what are the companies or shops are
making frauds with the people. So, we created our own “PR” (Product
Review) dataset containing 4,000 reviews both in Bangla and Phonetic
Bangla from various e-commerce websites, online store pages, social
media platforms, and YouTube videos. We manually labeled the collected
data into “positive” and “negative”. Using TF-IDF we extract features
from the data and train our model using supervised machine learning
algorithms. The results showed that SVM had the highest accuracy in both
the Bangla and Phonetic Bangla datasets, with 82% and 94% respectively.