This paper introduces Logical Credal Networks, an expressive probabilistic logic that generalizes many prior models that combine logic and probability. Given imprecise information represented by probability bounds and conditional probability bounds of logic formulas, this logic specifies a set of probability distributions over all interpretations. On the one hand, our approach allows propositional and first-order logic formulas with few restrictions, e.g., without requiring acyclicity. On the other hand, it has a Markov condition similar to Bayesian networks and Markov random fields that is critical in real-world applications. Having both these properties makes this logic unique, and we investigate its performance on maximum a posteriori inference tasks, including solving Mastermind games with uncertainty and detecting credit card fraud. The results show that the proposed method outperforms existing approaches, and its advantage lies in aggregating multiple sources of imprecise information.
翻译:本文介绍逻辑克隆人网络,这是一种直观的概率逻辑,它概括了许多先前将逻辑和概率结合起来的模型。鉴于概率界限和逻辑公式的有条件概率界限所代表的不准确信息,这一逻辑为所有解释的概率分布提供了一套。一方面,我们的方法允许有少数限制(例如,不要求周期性)的假设和一阶逻辑公式。另一方面,它有一个与巴耶西亚网络和Markov随机字段相似的马可夫条件,在现实世界应用中至关重要。这两个特性使得这一逻辑具有独特性,我们研究其最大程度的事后推论任务,包括解决万能游戏的不确定性和发现信用卡欺诈。结果显示,拟议方法超越了现有方法,其优势在于汇集多种不准确的信息来源。