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 Conference Papers (Available on Advance Programs)  (Sort by: Date Descending)
 Results 1 - 6 of 6  /   
Committee Date Time Place Paper Title / Authors Abstract Paper #
IBISML 2017-11-10
13:00
Tokyo Univ. of Tokyo [Poster Presentation] Effect of maximum likelihood estimation after L1 regularization in learning of log-linear models
Kazuya Takabatake, Shotaro Akaho (AIST) IBISML2017-86
$L_1$ regularization has two functions.
One function is the structure learning by parameter reduction, and another func... [more]
IBISML2017-86
pp.369-375
IBISML 2015-11-26
15:00
Ibaraki Epochal Tsukuba [Poster Presentation] Full-span log-linear model with L1 reguralization and its performance
Kazuya Takabatake, Shotaro Akaho (AIST) IBISML2015-73
The full-span log-linear model is a log-linear model that has sufficient number of basis functions so that it is able to... [more] IBISML2015-73
pp.153-157
IBISML 2014-11-18
15:00
Aichi Nagoya Univ. [Poster Presentation] Basis functions for fast learning of log-linear models
Kazuya Takabatake, Shotaro Akaho (AIST) IBISML2014-76
We propose basis functions for log-linear models and a fast learning algorithm that works on these bases.
These bases a... [more]
IBISML2014-76
pp.307-312
IBISML 2013-11-12
15:45
Tokyo Tokyo Institute of Technology, Kuramae-Kaikan [Poster Presentation] Performance Comparisons between Dependency Networks and Bayesian Networks
Kazuya Takabatake, Shotaro Akaho (AIST) IBISML2013-41
Dependency networks are graphical models in which tasks of learning are done by totally local and simple algorithms of i... [more] IBISML2013-41
pp.39-44
IBISML 2012-11-08
15:00
Tokyo Bunkyo School Building, Tokyo Campus, Tsukuba Univ. New Graphical Model: Firing Process Network -- A Model with Easy Learning --
Kazuya Takabatake, Shotaro Akaho (AIST) IBISML2012-78
We propose a versatile multivariate probabilistic model that can easily learn its structure and parameters from a given ... [more] IBISML2012-78
pp.311-318
NC 2007-03-14
13:40
Tokyo Tamagawa University Progressive contrastive divergence method
Kazuya Takabatake, Shotaro Akaho (AIST)
 [more] NC2006-143
pp.151-154
 Results 1 - 6 of 6  /   
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