# Non-Fine-Tuned Gemma-7B CEFR Evaluation This repository contains the evaluation results of the base `unsloth/gemma-7b-bnb-4bit` model for CEFR-level sentence generation, without fine-tuning, as part of an ablation study. The model is evaluated using a fine-tuned classifier from `Mr-FineTuner/Skripsi_validator_best_model`. - **Base Model**: unsloth/gemma-7b-bnb-4bit - **Evaluation Details**: - Dataset: Rebalanced test dataset (`test_merged_output.txt`), which was also used to train and evaluate the classifier, potentially introducing bias. - No fine-tuning performed; base model used directly. - Classifier: MLP classifier trained on `train_merged_output.txt`, `dev_merged_output.txt`, and `test_merged_output.txt` for CEFR level prediction. - **Evaluation Metrics (Exact Matches)**: - CEFR Classifier Accuracy: 0.167 - Precision (Macro): 0.028 - Recall (Macro): 0.167 - F1-Score (Macro): 0.048 - **Evaluation Metrics (Within ±1 Level)**: - CEFR Classifier Accuracy: 0.500 - Precision (Macro): 0.375 - Recall (Macro): 0.500 - F1-Score (Macro): 0.400 - **Other Metrics**: - Perplexity: 55.377 - Diversity (Unique Sentences): 0.100 - Inference Time (ms): 5461.263 - Model Size (GB): 4.2 - Robustness (F1): 0.045 - **Confusion Matrix (Exact Matches)**: - CSV: [confusion_matrix_exact.csv](confusion_matrix_exact.csv) - Image: [confusion_matrix_exact.png](confusion_matrix_exact.png) - **Confusion Matrix (Within ±1 Level)**: - CSV: [confusion_matrix_within1.csv](confusion_matrix_within1.csv) - Image: [confusion_matrix_within1.png](confusion_matrix_within1.png) - **Per-Class Confusion Metrics (Exact Matches)**: - A1: TP=0, FP=0, FN=10, TN=50 - A2: TP=0, FP=0, FN=10, TN=50 - B1: TP=10, FP=50, FN=0, TN=0 - B2: TP=0, FP=0, FN=10, TN=50 - C1: TP=0, FP=0, FN=10, TN=50 - C2: TP=0, FP=0, FN=10, TN=50 - **Per-Class Confusion Metrics (Within ±1 Level)**: - A1: TP=0, FP=0, FN=10, TN=50 - A2: TP=10, FP=0, FN=0, TN=50 - B1: TP=10, FP=30, FN=0, TN=20 - B2: TP=10, FP=0, FN=0, TN=50 - C1: TP=0, FP=0, FN=10, TN=50 - C2: TP=0, FP=0, FN=10, TN=50 - **Note on Bias**: - The test dataset used for evaluation (`test_merged_output.txt`) was part of the training and evaluation data for the classifier (`Mr-FineTuner/Skripsi_validator_best_model`). This may lead to inflated performance metrics due to the classifier's familiarity with the dataset. For a more robust evaluation, a new dataset not used in classifier training is recommended. - **Usage**: ```python from transformers import AutoModelForCausalLM, AutoTokenizer model = AutoModelForCausalLM.from_pretrained("unsloth/gemma-7b-bnb-4bit") tokenizer = AutoTokenizer.from_pretrained("unsloth/gemma-7b-bnb-4bit") # Example inference prompt = "<|user|>Generate a CEFR B1 level sentence.<|end|>" inputs = tokenizer(prompt, return_tensors="pt") outputs = model.generate(**inputs, max_length=50) print(tokenizer.decode(outputs[0], skip_special_tokens=True)) ``` Uploaded using `huggingface_hub`.