Data Preparation for Inductive Learning in Robotics Anke Rieger Data Preparation for Inductive Learning in Robotics Anke Rieger
نویسنده
چکیده
The application of logic-based learning algorithms in real-world domains, such as robotics, requires extensive data engineering, including the transformation of numerical tabular representations of real-world data to logic-based representations, feature and concept selection, the generation of the respective descriptions, and the composition of training and test sets, which meet the requirements of the respective learning algorithms. We are developing a tool, which supports a user of inductive logic-based algorithms with handling these tasks. The tool is developed in the context of a robot navigation domain, in which di erent logic-based algorithms are applied to learn operational concepts. ( This paper will appear in the Proceedings of the IJCAI-Workshop on Data Engineering for Inductive Learning, 1995.)
منابع مشابه
Universit at Dortmund Fachbereich Informatik Lehrstuhl Viii K Unstliche Intelligenz Data Preparation for Inductive Learning in Robotics Anke Rieger Data Preparation for Inductive Learning in Robotics Anke Rieger
The application of logic-based learning algorithms in real-world domains, such as robotics, requires extensive data engineering, including the transformation of numerical tabular representations of real-world data to logic-based representations, feature and concept selection, the generation of the respective descriptions, and the composition of training and test sets, which meet the requirement...
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