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Explainable Biomedical Recommendations via Reinforcement Learning Reasoning on Knowledge Graphs

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arxiv 2111.10625 v2 pith:ILYRXAHH submitted 2021-11-20 cs.LG cs.AIcs.SI

Explainable Biomedical Recommendations via Reinforcement Learning Reasoning on Knowledge Graphs

classification cs.LG cs.AIcs.SI
keywords approachbiomedicaldatasetsexplanationsgraphsknowledgereasoningrecommendations
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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For Artificial Intelligence to have a greater impact in biology and medicine, it is crucial that recommendations are both accurate and transparent. In other domains, a neurosymbolic approach of multi-hop reasoning on knowledge graphs has been shown to produce transparent explanations. However, there is a lack of research applying it to complex biomedical datasets and problems. In this paper, the approach is explored for drug discovery to draw solid conclusions on its applicability. For the first time, we systematically apply it to multiple biomedical datasets and recommendation tasks with fair benchmark comparisons. The approach is found to outperform the best baselines by 21.7% on average whilst producing novel, biologically relevant explanations.

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