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Product Review Sentiment Analyzer

Developed by arpitk
A sentiment analysis model based on DistilBERT for classifying product reviews as positive, negative, or neutral
Downloads 163
Release Time : 3/17/2025

Model Overview

This model is based on the DistilBERT base model and fine-tuned on the Yelp product review dataset, specifically designed for analyzing the sentiment tendency of product reviews.

Model Features

Efficient and Lightweight
Based on the DistilBERT architecture, it is 40% smaller than the standard BERT model while maintaining 95% of its performance.
Multi-sentiment Classification
Capable of classifying reviews into positive, negative, and neutral categories, providing more detailed analysis.
Business Applicability
Specially optimized for product reviews, suitable for e-commerce platforms and business analysis scenarios.

Model Capabilities

Text sentiment analysis
Product review classification
Sentiment tendency prediction

Use Cases

E-commerce Platforms
Review Sentiment Analysis
Automatically analyze the sentiment tendency of user reviews on products
Accuracy rate of 90%
Product Feedback Summary
Summarize the sentiment distribution of a large number of user reviews
Helps merchants understand product strengths and weaknesses
Market Research
Competitor Analysis
Compare the sentiment tendency of user reviews for different products
Provides market competition insights
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