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  4. Stochastic Optimization with Adaptive Batch Size: Discrete Choice Models as a Case Study
 
conference paper not in proceedings

Stochastic Optimization with Adaptive Batch Size: Discrete Choice Models as a Case Study

Lederrey, Gael
•
Lurkin, Virginie
•
Hillel, Tim
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2019
19th Swiss Transport Research Conference

The 2.5 quintillion bytes of data created each day brings new opportunities, but also new stimulating challenges for the discrete choice community. Opportunities because more and more new and larger data sets will undoubtedly become available in the future. Challenging because insights can only be discovered if models can be estimated, which is not simple on these large datasets. In this paper, inspired by the good practices and the intensive use of stochastic gradient methods in the ML field, we introduce the algorithm called Window Moving Average - Adaptive Batch Size (WMA-ABS) which is used to improve the efficiency of stochastic second-order methods. We present preliminary results that indicate that our algorithms outperform the standard secondorder methods, especially for large datasets. It constitutes a first step to show that stochastic algorithms can finally find their place in the optimization of Discrete Choice Models.

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Type
conference paper not in proceedings
Author(s)
Lederrey, Gael
Lurkin, Virginie
Hillel, Tim
Bierlaire, Michel  
Date Issued

2019

Subjects

Optimization

•

Discrete Choice Models

•

Stochastic Algorithms

•

Adaptive Batch Size

URL
http://www.strc.ch/2019/Lederrey_EtAl.pdf
Editorial or Peer reviewed

REVIEWED

Written at

EPFL

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TRANSP-OR  
Event nameEvent placeEvent date
19th Swiss Transport Research Conference

Ascona, Switzerland

May 15-17, 2019

Available on Infoscience
April 2, 2020
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/167854
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