Knowledge Graph Reasoning with Reinforcement Learning for Explainable Fact-checking
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Manual fact checking can not keep up with the pace at which false claims are produced
and spread across the web. Computers are much faster at checking facts than
humans. Automated fact checking usually involves comparing a fact claim to some set of
knowledge. This comparison is oftentimes carried out by a machine learning algorithm.
An effective way of representing knowledge that is also highly machine-readable is
Knowledge Graphs. This study frames the problem of computational fact-checking as a
reinforcement learning based knowledge graph reasoning problem. The experimental
results reveal that reasoning over a knowledge graph is an effective way of producing
human readable explanations in the form of paths and classifications for fact claims.
The paths may aid fact-checking professionals with highly readable clues, improving
trust and transparency in AI systems. The artificial intelligence aims to compute a path
that either proves or disproves a factual claim, but does not provide a verdict itself. A
verdict is reached by a voting mechanism which utilizes paths produced by the artificial
intelligence. These paths can be presented to a human reader so that they themselves
can decide whether or not the provided evidence is convincing or not. Understanding
between AI and humans makes for trust and cooperation.
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Explainable Machine Learning, Fact-checking, Knowledge graph, Reinforcement learning