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# eval-f-score (F-Score HuggingFace Dataset Sentiment Analysis Eval)
You can run this example with:
```bash
npx promptfoo@latest init --example eval-f-score
cd eval-f-score
```
This project evaluates GPT-4o-mini's zero-shot performance on IMDB movie review sentiment analysis using promptfoo. Each model response includes:
- Sentiment classification
- Confidence score (1-10)
- Reasoning for the classification
## Quick Start
Set your OpenAI API key and run the evaluation:
```bash
promptfoo eval
```
## Dataset
The evaluation uses the IMDB dataset from HuggingFace's datasets library, sampled to 100 reviews. The dataset is preprocessed into a CSV with two columns:
- `text`: The movie review content
- `sentiment`: The label ("positive" or "negative")
To modify the sample size or generate a new dataset, you can use `prepare_data.py`. First, install the Python dependencies:
```bash
pip install -r requirements.txt
```
Then run the preparation script:
```bash
python prepare_data.py
```
## Metrics Overview
The evaluation implements F-score and related metrics using promptfoo's assertion system:
1. **Base Metrics** calculated for each test case using JavaScript assertions:
```yaml
- type: javascript
value: "output.sentiment === 'positive' && context.vars.sentiment === 'positive' ? 1 : 0"
metric: true_positives
```
2. **Derived Metrics** calculated from base metrics after the evaluation completes:
```yaml
- name: precision
value: true_positives / (true_positives + false_positives)
- name: f1_score
value: 2 * true_positives / (2 * true_positives + false_positives + false_negatives)
```
The evaluation tracks:
- **True/False Positives/Negatives**: Base metrics for classification
- **Precision**: TP / (TP + FP)
- **Recall**: TP / (TP + FN)
- **F1 Score**: 2 × (precision × recall) / (precision + recall)
- **Accuracy**: (TP + TN) / Total