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Machine Learning: Ten Challenges for the Next Ten Years

In the October 2008 special issue on inductive logic programming in Machine Learning , Dietterich et al [ 1 ] lay-out the following ten outstanding problems for the next ten years: Statistical predicate invention Generalizing across domains Learning many levels of structure Deep combination of learning and inference Learning to map between representations Learning in the large Structured prediction with intractable inference Reinforcement learning with structured time Expanding SRL (Statistical Relational Learning) to statistical relational AI Learning to debug programs [ 1 ] Thomas G. Dietterich, Pedro Domingos, Lise Getoor, Stephen Muggleton, Prasad Tadepalli (2008). Structured machine learning: the next ten years Machine Learning, 73 (1), 3-23 DOI: 10.1007/s10994-008-5079-1

Microsoft Research Faculty Summit 2008: Publishing and Research Tools for Academics

The Microsoft Research Faculty Summit 2008 included Publishing and Research Tools for Academics that allows for archival annotation and structuring of Microsoft software produced documents, as well as supporting PubMed Central format . Additional sessions of interest: The Cyberspace Connection – Impact on Individuals, Society, and Research New Developments in Scholarly Communication Reflections on Directions in Artificial Intelligence What Will Be the Impact of Cloud Services on Science? Spotlights on Interdisciplinary Artificial Intelligence Research AI, Sensing, and Optimized Information Gathering: Trends and Directions Ontological Myths: Reducing the Confusion Social Networking and Semantics Toward Situated Interaction Statistical Machine Translation Research at Microsoft Research Interactive Machine Learning: Challenges, Methods, and Applications Information Extraction from Documents and Queries Contexts in Computer Science Education The Future of Research Clouds REAssess: Resou...