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arxiv 2310.09838 v1 pith:2YBZZ22N submitted 2023-10-15 cs.AI cs.CVcs.LG

Explaining How a Neural Network Play the Go Game and Let People Learn

classification cs.AI cs.CVcs.LG
keywords gamehumanplayersencodedknowledgelearnmodelnetwork
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The AI model has surpassed human players in the game of Go, and it is widely believed that the AI model has encoded new knowledge about the Go game beyond human players. In this way, explaining the knowledge encoded by the AI model and using it to teach human players represent a promising-yet-challenging issue in explainable AI. To this end, mathematical supports are required to ensure that human players can learn accurate and verifiable knowledge, rather than specious intuitive analysis. Thus, in this paper, we extract interaction primitives between stones encoded by the value network for the Go game, so as to enable people to learn from the value network. Experiments show the effectiveness of our method.

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