Literature DB >> 27853627

Interpretable Decision Sets: A Joint Framework for Description and Prediction.

Himabindu Lakkaraju1, Stephen H Bach2, Leskovec Jure3.   

Abstract

One of the most important obstacles to deploying predictive models is the fact that humans do not understand and trust them. Knowing which variables are important in a model's prediction and how they are combined can be very powerful in helping people understand and trust automatic decision making systems. Here we propose interpretable decision sets, a framework for building predictive models that are highly accurate, yet also highly interpretable. Decision sets are sets of independent if-then rules. Because each rule can be applied independently, decision sets are simple, concise, and easily interpretable. We formalize decision set learning through an objective function that simultaneously optimizes accuracy and interpretability of the rules. In particular, our approach learns short, accurate, and non-overlapping rules that cover the whole feature space and pay attention to small but important classes. Moreover, we prove that our objective is a non-monotone submodular function, which we efficiently optimize to find a near-optimal set of rules. Experiments show that interpretable decision sets are as accurate at classification as state-of-the-art machine learning techniques. They are also three times smaller on average than rule-based models learned by other methods. Finally, results of a user study show that people are able to answer multiple-choice questions about the decision boundaries of interpretable decision sets and write descriptions of classes based on them faster and more accurately than with other rule-based models that were designed for interpretability. Overall, our framework provides a new approach to interpretable machine learning that balances accuracy, interpretability, and computational efficiency.

Entities:  

Year:  2016        PMID: 27853627      PMCID: PMC5108651          DOI: 10.1145/2939672.2939874

Source DB:  PubMed          Journal:  KDD        ISSN: 2154-817X


  4 in total

1.  Obtaining interpretable fuzzy classification rules from medical data.

Authors:  D Nauck; R Kruse
Journal:  Artif Intell Med       Date:  1999-06       Impact factor: 5.326

2.  Very Simple Structure: An Alternative Procedure For Estimating The Optimal Number Of Interpretable Factors.

Authors:  W Revelle; T Rocklin
Journal:  Multivariate Behav Res       Date:  1979-10-01       Impact factor: 5.923

3.  Interpretable Decision Sets: A Joint Framework for Description and Prediction.

Authors:  Himabindu Lakkaraju; Stephen H Bach; Leskovec Jure
Journal:  KDD       Date:  2016-08

4.  Bayesian reasoning with ifs and ands and ors.

Authors:  Nicole Cruz; Jean Baratgin; Mike Oaksford; David E Over
Journal:  Front Psychol       Date:  2015-02-25
  4 in total
  20 in total

1.  Evaluation of non-negative matrix factorization of grey matter in age prediction.

Authors:  Deepthi P Varikuti; Sarah Genon; Aristeidis Sotiras; Holger Schwender; Felix Hoffstaedter; Kaustubh R Patil; Christiane Jockwitz; Svenja Caspers; Susanne Moebus; Katrin Amunts; Christos Davatzikos; Simon B Eickhoff
Journal:  Neuroimage       Date:  2018-03-06       Impact factor: 6.556

2.  Interpretable Decision Sets: A Joint Framework for Description and Prediction.

Authors:  Himabindu Lakkaraju; Stephen H Bach; Leskovec Jure
Journal:  KDD       Date:  2016-08

3.  Explainable artificial intelligence models using real-world electronic health record data: a systematic scoping review.

Authors:  Seyedeh Neelufar Payrovnaziri; Zhaoyi Chen; Pablo Rengifo-Moreno; Tim Miller; Jiang Bian; Jonathan H Chen; Xiuwen Liu; Zhe He
Journal:  J Am Med Inform Assoc       Date:  2020-07-01       Impact factor: 4.497

Review 4.  Molecular networks in Network Medicine: Development and applications.

Authors:  Edwin K Silverman; Harald H H W Schmidt; Eleni Anastasiadou; Lucia Altucci; Marco Angelini; Lina Badimon; Jean-Luc Balligand; Giuditta Benincasa; Giovambattista Capasso; Federica Conte; Antonella Di Costanzo; Lorenzo Farina; Giulia Fiscon; Laurent Gatto; Michele Gentili; Joseph Loscalzo; Cinzia Marchese; Claudio Napoli; Paola Paci; Manuela Petti; John Quackenbush; Paolo Tieri; Davide Viggiano; Gemma Vilahur; Kimberly Glass; Jan Baumbach
Journal:  Wiley Interdiscip Rev Syst Biol Med       Date:  2020-04-19

5.  The Selective Labels Problem: Evaluating Algorithmic Predictions in the Presence of Unobservables.

Authors:  Himabindu Lakkaraju; Jon Kleinberg; Jure Leskovec; Jens Ludwig; Sendhil Mullainathan
Journal:  KDD       Date:  2017-08

6.  An interpretable machine learning model for diagnosis of Alzheimer's disease.

Authors:  Diptesh Das; Junichi Ito; Tadashi Kadowaki; Koji Tsuda
Journal:  PeerJ       Date:  2019-03-01       Impact factor: 2.984

7.  The Univariate Flagging Algorithm (UFA): An interpretable approach for predictive modeling.

Authors:  Mallory Sheth; Albert Gerovitch; Roy Welsch; Natasha Markuzon
Journal:  PLoS One       Date:  2019-10-11       Impact factor: 3.240

8.  Human Evaluation of Models Built for Interpretability.

Authors:  Isaac Lage; Emily Chen; Jeffrey He; Menaka Narayanan; Been Kim; Samuel J Gershman; Finale Doshi-Velez
Journal:  Proc AAAI Conf Hum Comput Crowdsourc       Date:  2019-10-28

9.  Human-in-the-Loop Interpretability Prior.

Authors:  Isaac Lage; Andrew Slavin Ross; Been Kim; Samuel J Gershman; Finale Doshi-Velez
Journal:  Adv Neural Inf Process Syst       Date:  2018-12

10.  Decision-Tree, Rule-Based, and Random Forest Classification of High-Resolution Multispectral Imagery for Wetland Mapping and Inventory.

Authors:  Tedros M Berhane; Charles R Lane; Qiusheng Wu; Bradley C Autrey; Oleg A Anenkhonov; Victor V Chepinoga; Hongxing Liu
Journal:  Remote Sens (Basel)       Date:  2018       Impact factor: 4.848

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