Feb. 6, 2024, 5:45 a.m. | Filip \'Uradn\'ik David Sychrovsk\'y Jakub \v{C}ern\'y Martin \v{C}ern\'y

cs.LG updates on arXiv.org arxiv.org

Cooperative game theory has diverse applications in contemporary artificial intelligence, including domains like interpretable machine learning, resource allocation, and collaborative decision-making. However, specifying a cooperative game entails assigning values to exponentially many coalitions, and obtaining even a single value can be resource-intensive in practice. Yet simply leaving certain coalition values undisclosed introduces ambiguity regarding individual contributions to the collective grand coalition. This ambiguity often leads to players holding overly optimistic expectations, stemming from either inherent biases or strategic considerations, frequently …

applications artificial artificial intelligence bias coalition collaborative cs.gt cs.lg decision diverse diverse applications domains game games game theory intelligence machine machine learning making optimism practice theory value values

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