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Computer-aided design of machine learning algorithm: Training fixed-point classifier for on-chip low-power implementation

Publication ,  Conference
Albalawi, H; Li, Y; Li, X
Published in: Proceedings - Design Automation Conference
January 1, 2014

In this paper, we propose a novel linear discriminant analysis algorithm, referred to as LDA-FP, to train on-chip classifiers that can be implemented with low-power fixed-point arithmetic with extremely small word length. LDA-FP incorporates the nonidealities (i.e., rounding and overflow) associated with fixed-point arithmetic into the training process so that the resulting classifiers are robust to these non-idealities. Mathematically, LDA-FP is formulated as a mixed integer programming problem that can be efficiently solved by a novel branch-and-bound method proposed in this paper. Our numerical experiments demonstrate that LDAFP substantially outperforms the conventional approach for the emerging biomedical application of brain computer interface. Copyright 2014 ACM.

Duke Scholars

Published In

Proceedings - Design Automation Conference

DOI

ISSN

0738-100X

Publication Date

January 1, 2014
 

Citation

APA
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ICMJE
MLA
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Albalawi, H., Li, Y., & Li, X. (2014). Computer-aided design of machine learning algorithm: Training fixed-point classifier for on-chip low-power implementation. In Proceedings - Design Automation Conference. https://doi.org/10.1145/2593069.2593110
Albalawi, H., Y. Li, and X. Li. “Computer-aided design of machine learning algorithm: Training fixed-point classifier for on-chip low-power implementation.” In Proceedings - Design Automation Conference, 2014. https://doi.org/10.1145/2593069.2593110.
Albalawi, H., et al. “Computer-aided design of machine learning algorithm: Training fixed-point classifier for on-chip low-power implementation.” Proceedings - Design Automation Conference, 2014. Scopus, doi:10.1145/2593069.2593110.

Published In

Proceedings - Design Automation Conference

DOI

ISSN

0738-100X

Publication Date

January 1, 2014