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- | =====Daniel Nyga====== | + | =====Daniel Nyga, M.Sc. (TUM)====== |
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- | ====== About ====== | + | ====About==== |
+ | Before I joined the Institute for Artificial Intelligence, | ||
+ | I'm working on the import of action-specific knowledge from the World Wide Web into the knowledge bases of our mobile robots. In particular, my current research focuses on understanding natural language, in order to enable a robot to autonomously acquire new high-level skills by querying web pages such as eHow.com or wikiHow.com. | ||
+ | |||
+ | My work aims at building up action-specific knowledge bases from various knowledge sources, such as natural language, interactive computer games, observations of humans performing everyday activity or experience data of a robot. | ||
+ | |||
+ | {{research: | ||
+ | |||
+ | Knowledge about actions and objects is represented as // | ||
+ | |||
+ | If you are interested in a student project in any of the above topics, please contact me via E-Mail or just drop into my office. | ||
+ | |||
+ | ====Fields of Interest==== | ||
+ | * Artificial Intelligence | ||
+ | * Probabilistic Knowledge Processing | ||
+ | * Machine Learning | ||
+ | * Statistical Relational Learning | ||
+ | * Data Mining/ | ||
+ | * Automated Learning/ | ||
+ | * Natural-Language Understanding | ||
+ | |||
+ | ====Teaching==== | ||
+ | * Foundations of Artificial Intelligence ([[https:// | ||
+ | * Technical Cognitive Systems (Lecture & Tutorial, @TUM) ([[https:// | ||
+ | * Techniques in Artificial Intelligence (Tutorial, @TUM) ([[https:// | ||
+ | * Discrete Probability Theory (Tutorial, @TUM) ([[http:// | ||
+ | |||
+ | ====Supervised Theses==== | ||
+ | * Web-enabled Learning of Models for Word Sense Disambiguation (Bachelor Thesis, Stephan Epping) | ||
+ | * Grounding Words to Objects: A Joint Model for Co-reference and Entity Resolution Using Markov Logic Networks for Robot Instruction Processing (Diploma Thesis, Florian Meyer) | ||
====== Publications ====== | ====== Publications ====== | ||
Prof. Dr. hc. Michael Beetz PhD
Head of Institute
Contact via
Andrea Cowley
assistant to Prof. Beetz
ai-office@cs.uni-bremen.de
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