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Xlm Roberta Base Cls Depression

Developed by malexandersalazar
A multilingual depression detection model based on XLM-RoBERTa, supporting text classification in 6 languages for identifying depression indicators
Downloads 120
Release Time : 1/3/2025

Model Overview

This model utilizes natural language processing technology to accurately identify depression indicators in six languages, providing a supportive tool for mental health monitoring

Model Features

Multilingual Support
Supports text processing in 6 languages (English, German, French, Italian, Portuguese, Spanish)
High-Performance Detection
Achieves cutting-edge accuracy in depression detection (test set precision 0.9799)
Responsible AI Design
Focuses on mental health sensitivity design, including ethical usage guidelines
Hybrid Dataset Training
Integrates Claude 3.5 generated data with public emotion datasets, covering multi-dimensional features

Model Capabilities

Multilingual Text Classification
Depression Indication Identification
Mental Health Status Assessment

Use Cases

Mental Health Support
Online Psychological Counseling Screening
Used for preliminary screening of users' depression tendencies on counseling platforms
98.67% accuracy, effectively identifying potential depression risks
Mental Health Research Tool
Serves as an auxiliary tool for studying linguistic characteristics of depression
Provides multilingual depression expression analysis capabilities
Social Media Monitoring
Depression Risk Content Identification
Monitors expressions on social media that may reflect depressive states
97.99% precision, reducing false positives
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