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Actively Interacting with Experts: A Probabilistic Logic Approach

机译:与专家进行积极互动:一种概率逻辑方法

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Machine learning approaches that utilize human experts combine domain experience with data to generate novel knowledge. Unfortunately, most methods either provide only a limited form of communication with the human expert and/or are overly reliant on the human expert to specify their knowledge upfront. Thus, the expert is unable to understand what the system could learn without their involvement. Allowing the learning algorithm to query the human expert in the most useful areas of the feature space takes full advantage of the data as well as the expert. We introduce active advice-seeking for relational domains. Relational logic allows for compact, but expressive interaction between the human expert and the learning algorithm. We demonstrate our algorithm empirically on several standard relational datasets.
机译:利用人类专家的机器学习方法将领域经验与数据相结合,以产生新的知识。不幸的是,大多数方法或者仅提供与人类专家的有限形式的交流和/或过度依赖人类专家预先指定他们的知识。因此,专家在不参与的情况下将无法理解系统可以学到什么。允许学习算法在特征空间的最有用区域中查询人类专家会充分利用数据以及专家的优势。我们介绍了针对关系领域的积极建议。关系逻辑允许人类专家和学习算法之间的紧凑而富有表现力的交互。我们在几个标准关系数据集上经验证明了我们的算法。

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