Sample Compression for Real-Valued Learners
Hanneke, Steve, Kontorovich, Aryeh, Sadigurschi, Menachem
We give an algorithmically efficient version of the learner-to-compression scheme conversion in Moran and Yehudayoff (2016). In extending this technique to real-valued hypotheses, we also obtain an efficient regression-to-bounded sample compression converter. To our knowledge, this is the first general compressed regression result (regardless of efficiency or boundedness) guaranteeing uniform approximate reconstruction. Along the way, we develop a generic procedure for constructing weak real-valued learners out of abstract regressors; this may be of independent interest. In particular, this result sheds new light on an open question of H. Simon (1997). We show applications to two regression problems: learning Lipschitz and bounded-variation functions.
May-21-2018
- Country:
- North America > United States > California > San Francisco County > San Francisco (0.14)
- Genre:
- Research Report (0.64)
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