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Sup Simcse Ja Large

Developed by cl-nagoya
This is a Japanese sentence embedding model trained using the supervised SimCSE method, specifically designed for generating high-quality sentence representations.
Downloads 2,315
Release Time : 10/2/2023

Model Overview

The model is fine-tuned on the JSNLI dataset using the supervised SimCSE method, capable of converting Japanese sentences into high-dimensional vector representations, suitable for tasks such as sentence similarity calculation.

Model Features

Supervised SimCSE Training
Trained using the supervised SimCSE method, optimizing sentence representations with natural language inference labels from the JSNLI dataset.
High-Quality Japanese Embeddings
Specially optimized for Japanese text, capable of generating high-quality sentence embedding vectors.
Large Model Capacity
Based on the BERT-large architecture, offering stronger representation capabilities.

Model Capabilities

Japanese text embedding
Sentence similarity calculation
Semantic search

Use Cases

Information Retrieval
Semantic Search
Using sentence embeddings for semantic similarity search
Can find semantically similar documents that may not necessarily contain the same keywords
Text Analysis
Text Clustering
Clustering similar texts based on sentence embeddings
Can identify groups of semantically similar texts
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