Online Compact Convexified Factorization Machine

Xiao Lin 1
Wen-Peng Zhou 2
Min Zhang 2
Wen-wu Zhu 2
Jian Pei 3
Peilin Zhao 4
Junzhou Huang 5
Publication typeProceedings Article
Publication date2018-04-13
Abstract
Factorization Machine (FM) is a supervised learning approach with a powerful capability of feature engineering. It yields state-of-the-art performances in various batch learning tasks where all the training data is made available prior to the training. However, in real-world applications where the data arrives sequentially in a streaming manner, the high cost of re-training with batch learning algorithms has posed formidable challenges in the online learning scenario. The initial challenge is that no prior formulations of FM could directly fulfill the requirements in Online Convex Optimization (OCO) -- the paramount framework for online learning algorithm design. To address this aforementioned challenge, we invent a new convexification scheme leading to a Compact Convexified FM (CCFM) that seamlessly meets the requirements in OCO. However for learning Compact Convexified FM (CCFM) in the online learning settings, most existing algorithms suffer from expensive projection operations. To address this subsequent challenge, we follow the general projection-free algorithmic framework of Online Conditional Gradient and propose an Online Compact Convex Factorization Machine (OCCFM) algorithm that eschews the projection operation with efficient linear optimization steps. In support of the proposed OCCFM in terms of its theoretical foundation, we prove that the developed algorithm achieves a sub-linear regret bound. To evaluate the empirical performance of OCCFM, we conduct extensive experiments on 6 real-world datasets for online regression and online classification tasks. The experimental results show that OCCFM outperforms the state-of-art online learning methods for FM.
Found 
Found 

Top-30

Journals

1
Cluster Computing
1 publication, 10%
IEEE Access
1 publication, 10%
Computer Journal
1 publication, 10%
1

Publishers

1
2
3
4
5
Association for Computing Machinery (ACM)
5 publications, 50%
Institute of Electrical and Electronics Engineers (IEEE)
3 publications, 30%
Springer Nature
1 publication, 10%
Oxford University Press
1 publication, 10%
1
2
3
4
5
  • We do not take into account publications without a DOI.
  • Statistics recalculated only for publications connected to researchers, organizations and labs registered on the platform.
  • Statistics recalculated weekly.

Are you a researcher?

Create a profile to get free access to personal recommendations for colleagues and new articles.
Metrics
Share
Found error?