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SBERT JSNLI Base

Developed by MU-Kindai
This is a model based on sentence-transformers, capable of mapping sentences and paragraphs into a 768-dimensional dense vector space for tasks such as sentence similarity calculation, clustering, and semantic search.
Downloads 343
Release Time : 12/27/2022

Model Overview

This model is specifically designed to calculate semantic similarity between sentences and paragraphs by converting text into 768-dimensional vectors, supporting various natural language processing tasks.

Model Features

High-Dimensional Vector Representation
Converts text into 768-dimensional dense vectors, effectively capturing semantic information
Semantic Similarity Calculation
Accurately calculates semantic similarity between sentences or paragraphs
Versatile Applications
Supports various downstream tasks such as clustering and semantic search

Model Capabilities

Sentence vectorization
Semantic similarity calculation
Text clustering
Semantic search
Feature extraction

Use Cases

Information Retrieval
Semantic Search System
Build a search system based on semantics rather than keywords
Improves relevance and accuracy of search results
Text Analysis
Document Clustering
Automatically classify and cluster large volumes of documents
Discovers themes and patterns within document collections
Question Answering Systems
Question-Answer Matching
Match user questions with candidate answers in a knowledge base
Improves accuracy of question-answering systems
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