Weighted Classification Cascades for Optimizing Discovery Significance in the HiggsML Challenge

dc.contributor.author

Mackey, Lester

dc.contributor.author

Bryan, Jordan

dc.contributor.author

Mo, Man Yue

dc.contributor.editor

Cowan, Glen

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Germain, Cécile

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Guyon, Isabelle

dc.contributor.editor

Kégl, Balázs

dc.contributor.editor

Rousseau, David

dc.date.accessioned

2021-02-24T20:59:17Z

dc.date.available

2021-02-24T20:59:17Z

dc.date.issued

2015-12-13

dc.date.updated

2021-02-24T20:59:16Z

dc.description.abstract

We introduce a minorization-maximization approach to optimizing common measures of discovery significance in high energy physics. The approach alternates between solving a weighted binary classification problem and updating class weights in a simple, closed-form manner. Moreover, an argument based on convex duality shows that an improvement in weighted classification error on any round yields a commensurate improvement in discovery significance. We complement our derivation with experimental results from the 2014 Higgs boson machine learning challenge.

dc.identifier.uri

https://hdl.handle.net/10161/22385

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PMLR

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Proceedings of the NIPS 2014 Workshop on High-energy Physics and Machine Learning

dc.subject

stat.ML

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stat.ML

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cs.LG

dc.title

Weighted Classification Cascades for Optimizing Discovery Significance in the HiggsML Challenge

dc.type

Journal article

duke.contributor.orcid

Bryan, Jordan|0000-0002-4984-0516

pubs.begin-page

129

pubs.end-page

134

pubs.organisational-group

Student

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Statistical Science

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Duke

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Trinity College of Arts & Sciences

pubs.volume

42

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