A Theoretically Grounded Benchmark for Evaluating Machine Commonsense
Henrique Santos, Ke Shen, Alice M. Mulvehill, Yasaman Razeghi, Deborah, L. McGuinness, Mayank Kejriwal

TL;DR
This paper introduces TG-CSR, a theoretically grounded benchmark for evaluating machine commonsense reasoning across diverse aspects, addressing limitations of existing benchmarks and emphasizing systematic and robust evaluation.
Contribution
The paper presents TG-CSR, a new benchmark based on a theoretical framework, designed to evaluate multiple facets of commonsense reasoning with few-shot learning capabilities.
Findings
Benchmark is challenging for advanced language models.
Preliminary results show models struggle with diverse commonsense aspects.
Benchmark promotes systematic evaluation beyond dataset fitting.
Abstract
Programming machines with commonsense reasoning (CSR) abilities is a longstanding challenge in the Artificial Intelligence community. Current CSR benchmarks use multiple-choice (and in relatively fewer cases, generative) question-answering instances to evaluate machine commonsense. Recent progress in transformer-based language representation models suggest that considerable progress has been made on existing benchmarks. However, although tens of CSR benchmarks currently exist, and are growing, it is not evident that the full suite of commonsense capabilities have been systematically evaluated. Furthermore, there are doubts about whether language models are 'fitting' to a benchmark dataset's training partition by picking up on subtle, but normatively irrelevant (at least for CSR), statistical features to achieve good performance on the testing partition. To address these challenges, we…
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Taxonomy
TopicsTopic Modeling · Natural Language Processing Techniques · Biomedical Text Mining and Ontologies
