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S Scibert Snli Multinli Stsb

Developed by pritamdeka
A model based on sentence-transformers that maps sentences and paragraphs into a 768-dimensional dense vector space, suitable for tasks such as clustering or semantic search.
Downloads 891
Release Time : 3/2/2022

Model Overview

This model is based on the SciBERT architecture, trained on SNLI, MultiNLI, and STSB datasets, capable of generating high-quality sentence embeddings for sentence similarity calculation and semantic search.

Model Features

High-quality Sentence Embeddings
Capable of generating 768-dimensional dense vector representations that capture the semantic information of sentences.
Multi-task Training
The model is trained on multiple datasets including SNLI, MultiNLI, and STSB, providing stronger generalization capabilities.
Easy Integration
Can be easily integrated into existing systems through the sentence-transformers library.

Model Capabilities

Sentence similarity calculation
Semantic search
Text clustering
Feature extraction

Use Cases

Information Retrieval
Semantic Search
This model can be used to build a semantic search engine that returns results semantically similar to the query.
Compared to traditional keyword search, it better understands user intent.
Text Analysis
Document Clustering
Group similar documents together for content management and analysis.
More accurate clustering based on semantic similarity rather than surface features.
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