{ "title": "Robustness", "header": [ { "value": "Model", "markdown": false, "metadata": {} }, { "value": "Mean win rate", "description": "How many models this model outperforms on average (over columns).", "markdown": false, "lower_is_better": false, "metadata": {} }, { "value": "NaturalQuestions (closed-book) - F1 (Robustness)", "description": "The NaturalQuestions [(Kwiatkowski et al., 2019)](https://aclanthology.org/Q19-1026/) benchmark for question answering based on naturally-occurring queries through Google Search. The input does not include the Wikipedia page with the answer.\n\nF1: Average F1 score in terms of word overlap between the model output and correct reference.\n- Perturbation Robustness: Computes worst case over different robustness perturbations (misspellings, formatting, contrast sets).", "markdown": false, "lower_is_better": false, "metadata": { "metric": "F1", "run_group": "NaturalQuestions (closed-book)", "perturbation": "Robustness" } }, { "value": "HellaSwag - EM (Robustness)", "description": "The HellaSwag benchmark for commonsense reasoning in question answering [(Zellers et al., 2019)](https://aclanthology.org/P19-1472/).\n\nExact match: Fraction of instances that the predicted output matches a correct reference exactly.\n- Perturbation Robustness: Computes worst case over different robustness perturbations (misspellings, formatting, contrast sets).", "markdown": false, "lower_is_better": false, "metadata": { "metric": "EM", "run_group": "HellaSwag", "perturbation": "Robustness" } }, { "value": "OpenbookQA - EM (Robustness)", "description": "The OpenbookQA benchmark for commonsense-intensive open book question answering [(Mihaylov et al., 2018)](https://aclanthology.org/D18-1260/).\n\nExact match: Fraction of instances that the predicted output matches a correct reference exactly.\n- Perturbation Robustness: Computes worst case over different robustness perturbations (misspellings, formatting, contrast sets).", "markdown": false, "lower_is_better": false, "metadata": { "metric": "EM", "run_group": "OpenbookQA", "perturbation": "Robustness" } }, { "value": "TruthfulQA - EM (Robustness)", "description": "The TruthfulQA benchmarking for measuring model truthfulness and commonsense knowledge in question answering [(Lin et al., 2022)](https://aclanthology.org/2022.acl-long.229/).\n\nExact match: Fraction of instances that the predicted output matches a correct reference exactly.\n- Perturbation Robustness: Computes worst case over different robustness perturbations (misspellings, formatting, contrast sets).", "markdown": false, "lower_is_better": false, "metadata": { "metric": "EM", "run_group": "TruthfulQA", "perturbation": "Robustness" } }, { "value": "MMLU - EM (Robustness)", "description": "The Massive Multitask Language Understanding (MMLU) benchmark for knowledge-intensive question answering across 57 domains [(Hendrycks et al., 2021)](https://openreview.net/forum?id=d7KBjmI3GmQ).\n\nExact match: Fraction of instances that the predicted output matches a correct reference exactly.\n- Perturbation Robustness: Computes worst case over different robustness perturbations (misspellings, formatting, contrast sets).", "markdown": false, "lower_is_better": false, "metadata": { "metric": "EM", "run_group": "MMLU", "perturbation": "Robustness" } } ], "rows": [ [ { "value": "EleutherAI/pythia-2.8b", "description": "", "markdown": false }, { "markdown": false }, { "description": "No matching runs", "markdown": false }, { "description": "No matching runs", "markdown": false }, { "description": "No matching runs", "markdown": false }, { "description": "No matching runs", "markdown": false }, { "value": 0.24035087719298245, "description": "min=0.16, mean=0.24, max=0.36, sum=1.202 (5)", "style": { "font-weight": "bold" }, "markdown": false, "run_spec_names": [ "mmlu:subject=abstract_algebra,method=multiple_choice_joint,model=EleutherAI_pythia-2.8b,data_augmentation=canonical", "mmlu:subject=college_chemistry,method=multiple_choice_joint,model=EleutherAI_pythia-2.8b,data_augmentation=canonical", "mmlu:subject=computer_security,method=multiple_choice_joint,model=EleutherAI_pythia-2.8b,data_augmentation=canonical", "mmlu:subject=econometrics,method=multiple_choice_joint,model=EleutherAI_pythia-2.8b,data_augmentation=canonical", "mmlu:subject=us_foreign_policy,method=multiple_choice_joint,model=EleutherAI_pythia-2.8b,data_augmentation=canonical" ] } ] ], "links": [ { "text": "LaTeX", "href": "benchmark_output/runs/classic_pythia-2.8b-step2000/groups/latex/knowledge_robustness.tex" }, { "text": "JSON", "href": "benchmark_output/runs/classic_pythia-2.8b-step2000/groups/json/knowledge_robustness.json" } ], "name": "robustness" }