Fagin Ronald, Riegel Ryan, Gray Alexander
International Business Machines (IBM) Almaden Research Center, IBM Research, San Jose, CA 95120.
International Business Machines (IBM) Thomas J. Watson Research Center, IBM Research, Yorktown Heights, NY 10598.
Proc Natl Acad Sci U S A. 2024 May 21;121(21):e2309905121. doi: 10.1073/pnas.2309905121. Epub 2024 May 16.
Interest in logics with some notion of real-valued truths has existed since at least Boole and has been increasing in AI due to the emergence of neuro-symbolic approaches, though often their logical inference capabilities are characterized only qualitatively. We provide foundations for establishing the correctness and power of such systems. We introduce a rich class of multidimensional sentences, with a sound and complete axiomatization that can be parameterized to cover many real-valued logics, including all the common fuzzy logics, and extend these to weighted versions, and to the case where the truth values are probabilities. Our multidimensional sentences form a very rich class. Each of our multidimensional sentences describes a set of possible truth values for a collection of formulas of the real-valued logic, including which combinations of truth values are possible. Our completeness result is strong, in the sense that it allows us to derive exactly what information can be inferred about the combinations of truth values of a collection of formulas given information about the combinations of truth values of a finite number of other collections of formulas. We give a decision procedure based on linear programming for deciding, for certain real-valued logics and under certain natural assumptions, whether a set of our sentences logically implies another of our sentences. The generality of this work, compared to many previous works on special cases, may provide insights for both existing and new real-valued logics whose inference properties have never been characterized. This work may also provide insights into the reasoning capabilities of deep learning models.
至少从布尔时代起,人们就对具有某种实值真值概念的逻辑感兴趣,并且由于神经符号方法的出现,这种兴趣在人工智能领域不断增加,尽管它们的逻辑推理能力通常仅从定性角度进行描述。我们为确立此类系统的正确性和能力提供了基础。我们引入了一类丰富的多维句子,具有健全且完备的公理化体系,该体系可以进行参数化以涵盖许多实值逻辑,包括所有常见的模糊逻辑,并将其扩展到加权版本以及真值为概率的情况。我们的多维句子构成了一个非常丰富的类别。我们的每个多维句子都描述了实值逻辑中一组公式的可能真值集合,包括哪些真值组合是可能的。我们的完备性结果很强,因为它使我们能够在给定有限数量其他公式集合的真值组合信息的情况下,精确推导出关于一组公式真值组合可以推断出的信息。我们基于线性规划给出了一个决策过程,用于在某些实值逻辑和某些自然假设下,判定我们的一组句子是否在逻辑上蕴含另一组句子。与许多先前关于特殊情况的工作相比,这项工作的一般性可能为现有和新的实值逻辑提供见解,这些逻辑的推理属性此前从未被描述过。这项工作也可能为深度学习模型的推理能力提供见解。