Learning Deep Belief Networks from Non-Stationary Streams
File(s)calandra_icann2012.pdf (1.3 MB)
Accepted version
Author(s)
Calandra, Roberto
Raiko, Tapani
Deisenroth, Marc P
Pouzols, Federico Montesino
Type
Conference Paper
Abstract
Deep learning has proven to be beneficial for complex tasks such as classifying images. However, this approach has been mostly applied to static datasets. The analysis of non-stationary (e.g., concept drift) streams of data involves specific issues connected with the temporal and changing nature of the data. In this paper, we propose a proof-of-concept method, called Adaptive Deep Belief Networks, of how deep learning can be generalized to learn online from changing streams of data. We do so by exploiting the generative properties of the model to incrementally re-train the Deep Belief Network whenever new data are collected. This approach eliminates the need to store past observations and, therefore, requires only constant memory consumption. Hence, our approach can be valuable for life-long learning from non-stationary data streams. © 2012 Springer-Verlag.
Date Issued
2012-09
Citation
Artificial Neural Networks and Machine Learning – ICANN 2012, 2012, 7553, pp.379-386
ISBN
978-3-642-33265-4
ISSN
0302-9743
Publisher
Springer Berlin Heidelberg
Start Page
379
End Page
386
Journal / Book Title
Artificial Neural Networks and Machine Learning – ICANN 2012
Volume
7553
Copyright Statement
© 2012 Springer-Verlag Berlin Heidelberg. The original publication is available at www.springerlink.com
Description
18.10.13 KB. Ok to add author version to spiral from LNCS; embargo period expired. Springer
Source
ICANN 2012
Notes
owner: marc timestamp: 2012.04.20
Start Date
2012-09-11
Finish Date
2012-09-14
Coverage Spatial
Lausanne, Switzerland