Learning under concept drift with follow the regularized leader and adaptive decaying proximal
Concept drift is the problem that the statistical properties of the data generating process change over time. Recently, the Time Decaying Adaptive Prediction (TDAP) algorithm1 was proposed to address the problem of concept drift. TDAP was designed to account for the effect of drifting concepts by di...
Saved in:
Main Authors: | , , |
---|---|
Other Authors: | |
Format: | Article |
Language: | English |
Published: |
2018
|
Subjects: | |
Online Access: | https://hdl.handle.net/10356/87712 http://hdl.handle.net/10220/45494 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
Institution: | Nanyang Technological University |
Language: | English |
id |
sg-ntu-dr.10356-87712 |
---|---|
record_format |
dspace |
spelling |
sg-ntu-dr.10356-877122020-03-07T11:48:58Z Learning under concept drift with follow the regularized leader and adaptive decaying proximal Huynh, Ngoc Anh Ng, Wee Keong Ariyapala, Kanishka School of Computer Science and Engineering Concept Drift Decaying Rate Concept drift is the problem that the statistical properties of the data generating process change over time. Recently, the Time Decaying Adaptive Prediction (TDAP) algorithm1 was proposed to address the problem of concept drift. TDAP was designed to account for the effect of drifting concepts by discounting the contribution of previous learning examples using an exponentially decaying factor. The drawback of TDAP is that the rate of its decaying factor is required to be manually tuned. To address this drawback, we propose a new adaptive online algorithm, called Follow-the-Regularized-Leader with Adaptive Decaying Proximal (FTRL-ADP). There are two novelties in our approach. First, we derive a rule to automatically update the decaying rate, based on a rigorous theoretical analysis. Second, we use a concept drift detector to identify major drifts and reset the update rule accordingly. Comparative experiments with 14 datasets and 6 other online algorithms show that FTRL-ADP is most advantageous in noisy environments with real drifts. Accepted version 2018-08-06T09:28:36Z 2019-12-06T16:47:46Z 2018-08-06T09:28:36Z 2019-12-06T16:47:46Z 2018 Journal Article Huynh, N. A., Ng, W. K., & Ariyapala, K. (2018). Learning under concept drift with follow the regularized leader and adaptive decaying proximal. Expert Systems with Applications, 96, 49-63. 0957-4174 https://hdl.handle.net/10356/87712 http://hdl.handle.net/10220/45494 10.1016/j.eswa.2017.11.042 en Expert Systems with Applications © 2017 Elsevier Ltd. This is the author created version of a work that has been peer reviewed and accepted for publication by Expert Systems with Applications, Elsevier Ltd. It incorporates referee’s comments but changes resulting from the publishing process, such as copyediting, structural formatting, may not be reflected in this document. The published version is available at: [http://dx.doi.org/10.1016/j.eswa.2017.11.042]. 41 p. application/pdf |
institution |
Nanyang Technological University |
building |
NTU Library |
country |
Singapore |
collection |
DR-NTU |
language |
English |
topic |
Concept Drift Decaying Rate |
spellingShingle |
Concept Drift Decaying Rate Huynh, Ngoc Anh Ng, Wee Keong Ariyapala, Kanishka Learning under concept drift with follow the regularized leader and adaptive decaying proximal |
description |
Concept drift is the problem that the statistical properties of the data generating process change over time. Recently, the Time Decaying Adaptive Prediction (TDAP) algorithm1 was proposed to address the problem of concept drift. TDAP was designed to account for the effect of drifting concepts by discounting the contribution of previous learning examples using an exponentially decaying factor. The drawback of TDAP is that the rate of its decaying factor is required to be manually tuned. To address this drawback, we propose a new adaptive online algorithm, called Follow-the-Regularized-Leader with Adaptive Decaying Proximal (FTRL-ADP). There are two novelties in our approach. First, we derive a rule to automatically update the decaying rate, based on a rigorous theoretical analysis. Second, we use a concept drift detector to identify major drifts and reset the update rule accordingly. Comparative experiments with 14 datasets and 6 other online algorithms show that FTRL-ADP is most advantageous in noisy environments with real drifts. |
author2 |
School of Computer Science and Engineering |
author_facet |
School of Computer Science and Engineering Huynh, Ngoc Anh Ng, Wee Keong Ariyapala, Kanishka |
format |
Article |
author |
Huynh, Ngoc Anh Ng, Wee Keong Ariyapala, Kanishka |
author_sort |
Huynh, Ngoc Anh |
title |
Learning under concept drift with follow the regularized leader and adaptive decaying proximal |
title_short |
Learning under concept drift with follow the regularized leader and adaptive decaying proximal |
title_full |
Learning under concept drift with follow the regularized leader and adaptive decaying proximal |
title_fullStr |
Learning under concept drift with follow the regularized leader and adaptive decaying proximal |
title_full_unstemmed |
Learning under concept drift with follow the regularized leader and adaptive decaying proximal |
title_sort |
learning under concept drift with follow the regularized leader and adaptive decaying proximal |
publishDate |
2018 |
url |
https://hdl.handle.net/10356/87712 http://hdl.handle.net/10220/45494 |
_version_ |
1681037874757107712 |