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Combining data and knowledge by maxent-optimization of probability distributions

机译:通过最大化概率分布来结合数据和知识

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We present a project for probabilistic reasoning based on the concept of maximum entropy and the induction of probabilistic knowledge from data.The basic knowledge source is a database of 15000 patient records which we use to compute probabilistic rules.These rules are combined with explicit probabilistic rules from medical experts which cover cases not represented in the database.Based on this set of rules the inference engine PIT(Probability Induction Tool),which uses the well-known principle of Maximum Entropy [5],provides a unique probability model while keeping the necessary additional assumptions as minimal and clear as possible.PIT is used in the medical diagnosis project LEXMED [4] for the identification of acute appendicitis.Based on the probability distribution computed by PIT,the expert system proposes treatments with minimal average cost.First clinical performance results are very encouraging.
机译:我们基于最大熵的概念和数据中的概率知识的归纳提出了一个概率推理项目。基本知识源是一个15000个患者记录的数据库,用于计算概率规则。这些规则与显式概率规则相结合基于这组规则,推理引擎PIT(概率归纳工具)使用了最大熵[5]的众所周知的原理,提供了一个独特的概率模型,同时保持了PIT用于医学诊断项目LEXMED [4]中以鉴定急性阑尾炎。基于PIT计算的概率分布,专家系统提出了平均费用最低的治疗方案。性能结果非常令人鼓舞。

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