Literature DB >> 34568830

Marginal Contribution Feature Importance - an Axiomatic Approach for Explaining Data.

Amnon Catav1, Boyang Fu2, Yazeed Zoabi3, Ahuva Weiss-Meilik4, Noam Shomron3, Jason Ernst2,5,6, Sriram Sankararaman2,5,7, Ran Gilad-Bachrach8.   

Abstract

In recent years, methods were proposed for assigning feature importance scores to measure the contribution of individual features. While in some cases the goal is to understand a specific model, in many cases the goal is to understand the contribution of certain properties (features) to a real-world phenomenon. Thus, a distinction has been made between feature importance scores that explain a model and scores that explain the data. When explaining the data, machine learning models are used as proxies in settings where conducting many real-world experiments is expensive or prohibited. While existing feature importance scores show great success in explaining models, we demonstrate their limitations when explaining the data, especially in the presence of correlations between features. Therefore, we develop a set of axioms to capture properties expected from a feature importance score when explaining data and prove that there exists only one score that satisfies all of them, the Marginal Contribution Feature Importance (MCI). We analyze the theoretical properties of this score function and demonstrate its merits empirically.

Entities:  

Year:  2021        PMID: 34568830      PMCID: PMC8460841     

Source DB:  PubMed          Journal:  Proc Mach Learn Res


  16 in total

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Journal:  Nat Mach Intell       Date:  2020-01-17

2.  Discussion of "Sure Independence Screening for Ultra-High Dimensional Feature Space.

Authors:  Hao Helen Zhang
Journal:  J R Stat Soc Series B Stat Methodol       Date:  2008-11       Impact factor: 4.488

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Authors:  Kadri Haljas; Azmeraw T Amare; Behrooz Z Alizadeh; Yi-Hsiang Hsu; Thomas Mosley; Anne Newman; Joanne Murabito; Henning Tiemeier; Toshiko Tanaka; Cornelia van Duijn; Jingzhong Ding; David J Llewellyn; David A Bennett; Antonio Terracciano; Lenore Launer; Karl-Heinz Ladwig; Marylin C Cornelis; Alexander Teumer; Hans Grabe; Sharon L R Kardia; Erin B Ware; Jennifer A Smith; Harold Snieder; Johan G Eriksson; Leif Groop; Katri Räikkönen; Jari Lahti
Journal:  Psychosom Med       Date:  2018-04       Impact factor: 4.312

Review 5.  Overall burden of bloodstream infection and nosocomial bloodstream infection in North America and Europe.

Authors:  M Goto; M N Al-Hasan
Journal:  Clin Microbiol Infect       Date:  2013-03-08       Impact factor: 8.067

6.  Ablation study of the superior colliculus in the tree shrew (Tupaia glis).

Authors:  V A Casagrande; I T Diamond
Journal:  J Comp Neurol       Date:  1974-07       Impact factor: 3.215

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Journal:  Sci Rep       Date:  2020-06-26       Impact factor: 4.379

9.  Powerful bivariate genome-wide association analyses suggest the SOX6 gene influencing both obesity and osteoporosis phenotypes in males.

Authors:  Yao-Zhong Liu; Yu-Fang Pei; Jian-Feng Liu; Fang Yang; Yan Guo; Lei Zhang; Xiao-Gang Liu; Han Yan; Liang Wang; Yin-Ping Zhang; Shawn Levy; Robert R Recker; Hong-Wen Deng
Journal:  PLoS One       Date:  2009-08-28       Impact factor: 3.240

Review 10.  Causability and explainability of artificial intelligence in medicine.

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  1 in total

1.  Predicting Mohs surgery complexity by applying machine learning to patient demographics and tumor characteristics.

Authors:  Gon Shoham; Ariel Berl; Ofir Shir-Az; Sharon Shabo; Avshalom Shalom
Journal:  Exp Dermatol       Date:  2022-03-03       Impact factor: 4.511

  1 in total

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