K

Kpf Sbert 128d V1

Developed by bongsoo
This is a sentence embedding model based on sentence-transformers, capable of mapping sentences and paragraphs into a 128-dimensional dense vector space, suitable for tasks such as clustering or semantic search.
Downloads 759
Release Time : 3/16/2023

Model Overview

This model compresses the output of the kpf BERT model to 128 dimensions and is trained on a combination of NLI (3) + STS (10) + NLI (3) + STS (10) data, specifically designed for sentence similarity calculation and feature extraction.

Model Features

Efficient Dimensionality Compression
Compresses BERT model output to 128 dimensions, reducing computational resource requirements while preserving semantic information
Multi-task Training
Trained on a combination of Natural Language Inference (NLI) and Semantic Textual Similarity (STS) data to enhance model generalization
Semantic Search Optimization
Specifically optimized for sentence similarity calculation, ideal for building semantic search systems

Model Capabilities

Sentence embedding
Semantic similarity calculation
Text feature extraction
Clustering analysis

Use Cases

Information Retrieval
Semantic Search System
Build a search system based on semantics rather than keyword matching
Improves the relevance and accuracy of search results
Text Analysis
Document Clustering
Automatically group semantically similar documents
Enables unsupervised document classification and organization
Question Answering Systems
Question Matching
Identify semantically similar questions
Improves the coverage and accuracy of QA systems
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