Mpnet Personality
A model based on sentence-transformers for mapping personality-related texts into a 768-dimensional vector space, suitable for personality psychology tasks.
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Release Time : 4/8/2024
Model Overview
This model is fine-tuned from all-mpnet-base-v2 and is specifically designed to process personality-related items or texts, capable of encoding personality-related content without considering direction (e.g., negation).
Model Features
Personality Text Encoding
Optimized specifically for personality-related texts, effectively encoding the content of personality items and scales.
Directionless Encoding
The model encodes personality text content without being affected by direction (e.g., negation), focusing solely on the semantic content of the text.
High Correlation Prediction
Predicts correlations between items on standard personality scales with Pearson's r ~ 0.6 and correlations between scales with r ~ 0.7.
Model Capabilities
Personality text feature extraction
Sentence similarity calculation
Personality item clustering
Personality scale mapping
Use Cases
Psychological Research
Personality Item Clustering
Clustering a large number of personality items into meaningful groups for psychological research.
Effectively identifies semantic similarities between items.
Personality Scale Mapping
Mapping different personality scales onto a unified personality construct space.
Predicts scale correlations with Pearson's r ~ 0.7.
Psychological Assessment Tool Development
Personality Assessment Tool Development
Assists in developing new personality assessment tools by analyzing semantic similarity to optimize item selection.
Predicts correlations for common training items up to r ~ 0.9.
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