论文标题
关于命题框架中优化的抽象观点
An Abstract View on Optimizations in Propositional Frameworks
论文作者
论文摘要
在科学和工程领域中,搜索优化的问题很多。长期以来,人工智能有助于搜索算法和旨在解决搜索优化问题的搜索算法和声明性编程语言的发展。自动推理和知识表示是AI的子场,这些子场尤其归属这些发展。许多流行的自动推理范式为用户提供支持优化语句的语言:答案集编程或Maxsat上的MaxSat,仅举几例。这些范式的语言以及它们在计算解决方案上表达质量条件的方式差异很大。在这里,我们提出了一个所谓权重系统的统一框架,该框架消除了范式之间的句法区别,并使我们能够看到范式提供的优化语句之间的基本相似之处和差异。在自动推理和知识表示的优化和模块化研究中,这种统一的前景具有显着的简化和解释潜力。它还为研究人员提供了一种方便的工具,用于证明不同框架的正式属性;桥接这些框架;并促进转化求解器的发展。
Search-optimization problems are plentiful in scientific and engineering domains. Artificial intelligence 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: answer set programming or MaxSAT on minone, to name a few. These paradigms vary significantly in their languages and in the ways they express quality conditions on computed solutions. Here we propose a unifying framework of so-called weight systems that eliminates syntactic distinctions between paradigms and allows us to see essential similarities and differences between optimization statements provided by paradigms. This unifying outlook has significant simplifying and explanatory potential in the studies of optimization and modularity in automated reasoning and knowledge representation. It also supplies researchers with a convenient tool for proving the formal properties of distinct frameworks; bridging these frameworks; and facilitating the development of translational solvers.