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Bert Tiny Cognitive Bias

Developed by amedvedev
This is a miniature BERT model designed to identify and classify cognitive distortions, capable of detecting 7 common types of cognitive distortions in text.
Downloads 172
Release Time : 4/7/2023

Model Overview

The model is based on the BERT architecture, specifically designed for text classification tasks, particularly for identifying cognitive distortion patterns in psychology. It can help recognize 7 common cognitive distortions such as personalization, emotional reasoning, and overgeneralization.

Model Features

Cognitive Distortion Identification
Accurately identifies 7 common types of cognitive distortions, including personalization, emotional reasoning, etc.
High-Precision Classification
Achieves an F1 score above 0.8 in various cognitive distortion recognitions, with particularly high accuracy in emotional reasoning and 'should' statements.
Lightweight Model
Based on the BERT-tiny architecture, requiring relatively low computational resources.

Model Capabilities

Text Classification
Cognitive Distortion Detection
Psychological Text Analysis

Use Cases

Mental Health
Psychological Counseling Assistance
Helps psychological counselors quickly identify clients' cognitive distortion patterns
Improves counseling efficiency and aids in developing intervention plans
Self-Cognition Improvement
Used by individuals to identify cognitive biases in their own thinking
Promotes the formation of healthier thinking patterns
Education
Psychology Teaching
Used in psychology courses to demonstrate examples of cognitive distortions
Helps students understand the concept of cognitive distortions
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