非布尔形式优化的统一框架

IF 1.4 2区 数学 Q3 COMPUTER SCIENCE, SOFTWARE ENGINEERING
YULIYA LIERLER
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引用次数: 0

摘要

搜索优化问题在科学和工程领域中比比皆是。人工智能(AI)长期以来为搜索算法和声明性编程语言的发展做出了贡献,这些语言旨在解决和建模搜索优化问题。自动推理和知识表示是人工智能的子领域,特别是在这些发展中。许多流行的自动推理范例为用户提供了支持优化语句的语言。召回整数线性规划,MaxSAT,优化可满足模理论,(约束)答案集规划。这些范例在表达计算解的质量条件的方式上有很大的语言差异。在这里,我们提出了一个所谓的扩展权重系统的统一框架,它消除了范式之间的语法差异。它们使我们能够看到由不同的自动推理语言提供的优化语句之间的本质相似性和差异性。我们还研究了被提议的系统的形式属性,这些系统可以立即转化为范式的形式属性,这些范式可以在我们的框架中被捕获。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unifying Framework for Optimizations in Non-Boolean Formalisms

Search-optimization problems are plentiful in scientific and engineering domains. Artificial intelligence (AI) has long contributed to the development of search algorithms and declarative programming languages geared toward solving and modeling search-optimization problems. Automated reasoning and knowledge representation are the subfields of AI that are particularly vested in these developments. Many popular automated reasoning paradigms provide users with languages supporting optimization statements. Recall integer linear programming, MaxSAT, optimization satisfiability modulo theory, (constraint) answer set programming. These paradigms vary significantly in their languages in ways they express quality conditions on computed solutions. Here we propose a unifying framework of so-called extended weight systems that eliminates syntactic distinctions between paradigms. They allow us to see essential similarities and differences between optimization statements provided by distinct automated reasoning languages. We also study formal properties of the proposed systems that immediately translate into formal properties of paradigms that can be captured within our framework.

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来源期刊
Theory and Practice of Logic Programming
Theory and Practice of Logic Programming 工程技术-计算机:理论方法
CiteScore
4.50
自引率
21.40%
发文量
40
审稿时长
>12 weeks
期刊介绍: Theory and Practice of Logic Programming emphasises both the theory and practice of logic programming. Logic programming applies to all areas of artificial intelligence and computer science and is fundamental to them. Among the topics covered are AI applications that use logic programming, logic programming methodologies, specification, analysis and verification of systems, inductive logic programming, multi-relational data mining, natural language processing, knowledge representation, non-monotonic reasoning, semantic web reasoning, databases, implementations and architectures and constraint logic programming.
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