@COMMENT This file was generated by bib2html.pl version 0.94
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@COMMENT This file came from Gal A. Kaminka's publication pages at
@COMMENT http://www.cs.biu.ac.il/~galk/publications/
@Article{kais11,
author = {Igor Vainer and Gal A. Kaminka and Sarit Kraus and Hamutal Slovin},
title = {Obtaining Scalable and Accurate Classification in Large Scale Spatio-temporal Domains},
journal = KAIS,
year = {2011},
OPTkey = {},
volume = {29},
number = {3},
pages = {527--564},
OPTmonth = {},
OPTnote = {},
OPTannote = {},
OPTurl = {},
OPTdoi = {10.1007/s10115-010-0348-2},
OPTissn = {},
OPTlocalfile = {},
wwwnote = {},
abstract = {
We present an approach for learning models that obtain accurate classification
of data objects, collected in large scale spatio-temporal domains.
The model generation is structured in three phases: spatial dimension
reduction, spatio-temporal features extraction, and feature selection.
Novel techniques for the first two phases are presented, with two
alternatives for the middle phase. We explore model generation based
on the combinations of techniques from each phase. We apply the introduced
methodology to data-sets from the Voltage-Sensitive Dye Imaging (VSDI)
domain, where the resulting classification models successfully decode
neuronal population responses in the visual cortex of behaving animals.
VSDI is currently the best technique enabling simultaneous high spatial
($10,000$ points) and temporal ($10\, ms$ or less) resolution imaging
from neuronal population in the cortex. We demonstrate that not only
our approach is scalable enough to handle computationally challenging
data, but it also contributes to the neuroimaging field of study with
its decoding abilities. The effectiveness of our methodology is further
explored on a data-set from the hurricanes domain, and a promising
direction, based on the preliminary results of hurricane severity classification, is revealed.}
}