Main Profile

At A Glance

Sparse and large-scale learning with heterogeneous data

Google Tech TalksSeptember 5, 2006Gert Lanckriet is assistant professor in the Electrical and Computer Engineering Department at the University of California, San Diego. He conducts research on machine learning, applied statistics and convex optimization with applications in computational biology, finance, music and vision. ABSTRACTAn important challenge for the field of machine learning is to deal with the increasing amount of data that is available for learning and to leverage the (also increasing) diversity of information sources, describing these data. Beyond classical vectorial data formats, data in the format of graphs, trees, strings and beyond have become widely available for data...
Length: 54:57

Contact

Questions about Sparse and large-scale learning with heterogeneous data

Want more info about Sparse and large-scale learning with heterogeneous data? Get free advice from education experts and Noodle community members.

  • Answer

Ask a New Question