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Distilbert Base Uncased Finetuned Cust Similarity 2

Developed by shafin
A model based on sentence-transformers that maps sentences and paragraphs to a 128-dimensional vector space, suitable for semantic search and clustering tasks
Downloads 35
Release Time : 5/29/2022

Model Overview

This model is a sentence embedding model based on the DistilBERT architecture, specifically fine-tuned for sentence similarity tasks. It converts text into 128-dimensional dense vector representations, facilitating semantic similarity calculations and text clustering.

Model Features

Efficient Vector Representation
Converts text into compact 128-dimensional vector representations, balancing computational efficiency and semantic expressiveness
Lightweight Architecture
Based on the DistilBERT architecture, reducing model parameters while maintaining performance
Semantic Similarity Calculation
Optimized specifically for sentence similarity tasks, accurately capturing semantic relationships between texts

Model Capabilities

Text vectorization
Semantic similarity calculation
Text clustering
Semantic search

Use Cases

Information Retrieval
Similar Document Retrieval
Finding semantically similar documents in a document library
Improves retrieval accuracy and recall rate
Recommendation Systems
Content Recommendation
Recommending semantically similar content based on user historical behavior
Enhances user experience and click-through rate
Text Analysis
Text Clustering
Automatically grouping large volumes of text by semantic similarity
Discovers topic distributions in text collections
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