Knowledge Representation and Reasoning and Machine Learning are two important fields in AI. Nonmonotonic logic programming (NMLP) and Answer Set Programming (ASP) provide formal languages for representing and reasoning with commonsense knowledge and realize declarative problem solving in AI. On the other side, Inductive Logic Programming (ILP) realizes Machine Learning in logic programming, which provides a formal background to inductive learning and the techniques have been applied to the fields of relational learning and data mining. Generally speaking, NMLP and ASP realize nonmonotonic reasoning while lack the ability of learning. By contrast, ILP realizes inductive learning while most techniques have been developed under the classical monotonic logic. With this background, some researchers attempt to combine techniques in the context of nonmonotonic ILP. Such combination will introduce a learning mechanism to programs and would exploit new applications on the NMLP side, while on the ILP side it will extend the representation language and enable us to use existing solvers. Cross-fertilization between learning and nonmonotonic reasoning can also occur in such as the use of answer set solvers for ILP, speed-up learning while running answer set solvers, learning action theories, learning transition rules in dynamical systems, abductive learning, learning biological networks with inhibition, and applications involving default and negation. This workshop is the first attempt to provide an open forum for the identification of problems and discussion of possible collaborations among researchers with complementary expertise. The workshop was held on September 15th of 2013 in Corunna, Spain. This post-proceedings contains five technical papers (out of six accepted papers) and the abstract of the invited talk by Luc De Raedt.
翻译:知识的介绍和解释以及机器学习是AI的两个重要领域。 一般来说, NMLP 和 ASP 在学习能力不足的情况下实现非流动逻辑推理。 相比之下, ILP 在传统单调逻辑下开发了大多数技术,而大多数技术则是在经典单调逻辑下开发的。 在这种背景下,一些研究人员试图结合非单调的 ILP 技术。 这种结合将为程序引入学习机制,并在NMLP 方面利用新的应用,而在ILP 方面,它将扩展代表语言,使我们能够使用现有的解决方案。 在西班牙,学习和非调理理论之间的相互交流,也可以在传统单调逻辑逻辑下进行启发学习。 在这种背景下,一些研究人员试图结合非单调的 ILP 程序下的技术。 这种结合将引入一个学习机制,并将在NMLP 方面开发新的应用。 在ILP 方面, 将扩展代表语言,并使我们能够使用现有的解决方案。 在西班牙的学习和非调理学之间进行交叉交流。