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Minilm L6 Keyword Extraction

Developed by valurank
This is a sentence embedding model based on the MiniLM architecture that can map text to a 384-dimensional vector space and is suitable for semantic search and clustering tasks.
Downloads 13.19k
Release Time : 5/20/2022

Model Overview

This model is a sentence transformer specifically designed to convert sentences and paragraphs into dense vector representations and supports English text processing.

Model Features

Efficient vector representation
Convert text into 384-dimensional dense vectors while retaining semantic information.
Large-scale training
Fine-tuned on a dataset of over 1 billion sentence pairs.
Contrastive learning
Trained with a contrastive learning objective to optimize the calculation of sentence pair similarity.

Model Capabilities

Sentence vectorization
Semantic similarity calculation
Text clustering
Information retrieval

Use Cases

Information retrieval
Semantic search
Use sentence embeddings to improve the relevance ranking of search engines.
Improve the relevance and accuracy of search results
Text analysis
Document clustering
Group similar documents for content management and analysis.
Automatically discover themes and patterns in document collections
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