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S BioBert Snli Multinli Stsb

Developed by pritamdeka
This is a model based on sentence-transformers that can map sentences and paragraphs into a 768-dimensional dense vector space, suitable for tasks such as sentence similarity calculation and semantic search.
Downloads 987
Release Time : 3/2/2022

Model Overview

This model is specifically designed for vector representation of sentences and paragraphs, supporting the conversion of text into high-dimensional vectors for similarity comparison and semantic search.

Model Features

High-dimensional Vector Representation
Maps sentences and paragraphs into a 768-dimensional dense vector space, facilitating semantic comparison and search.
Sentence Similarity Calculation
Supports calculating semantic similarity between sentences, suitable for information retrieval and clustering tasks.
Based on BioBERT
The model is based on the BioBERT architecture, potentially offering advantages in biomedical text processing.

Model Capabilities

Sentence vectorization
Semantic similarity calculation
Text clustering
Semantic search

Use Cases

Information Retrieval
Document Similarity Search
Quickly find documents semantically similar to a query sentence within a large corpus.
Improves search efficiency and accuracy
Text Clustering
Similar Sentence Clustering
Automatically group semantically similar sentences for data analysis and organization.
Simplifies text data analysis workflow
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