Unsupervised Classification under Uncertainty: The Distance-Based Algorithm

Author:

Ghanaiem Alaa1,Kagan Evgeny2ORCID,Kumar Parteek3,Raviv Tal1ORCID,Glynn Peter4,Ben-Gal Irad1ORCID

Affiliation:

1. Department of Industrial Engineering, Tel-Aviv University, Ramat-Aviv, Tel-Aviv 69978, Israel

2. Department of Industrial Engineering and Management, Faculty of Engineering, Ariel University, Ariel 40700, Israel

3. Department of Computer Science and Engineering, Thapar Institute of Engineering and Technology, Patiala 147004, India

4. Department of Management Science and Engineering, Institute of Computational and Mathematical Engineering, Stanford University, Stanford, CA 94305, USA

Abstract

This paper presents a method for unsupervised classification of entities by a group of agents with unknown domains and levels of expertise. In contrast to the existing methods based on majority voting (“wisdom of the crowd”) and their extensions by expectation-maximization procedures, the suggested method first determines the levels of the agents’ expertise and then weights their opinions by their expertise level. In particular, we assume that agents will have relatively closer classifications in their field of expertise. Therefore, the expert agents are recognized by using a weighted Hamming distance between their classifications, and then the final classification of the group is determined from the agents’ classifications by expectation-maximization techniques, with preference to the recognized experts. The algorithm was verified and tested on simulated and real-world datasets and benchmarked against known existing algorithms. We show that such a method reduces incorrect classifications and effectively solves the problem of unsupervised collaborative classification under uncertainty, while outperforming other known methods.

Funder

Koret Foundation, the Digital Living 2030 grant

Publisher

MDPI AG

Subject

General Mathematics,Engineering (miscellaneous),Computer Science (miscellaneous)

Reference22 articles.

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3. Kaggle Inc. (2023, November 23). Iris Flower Dataset/Abalone Age Prediction/Glass Classification/Students Test Data/User Activity/Classification of Robots from Their Conversation/Wine Quality Dataset. Available online: https://www.kaggle.com/datasets/.

4. The Paintings Authorship (2023, November 23). Dataset. Available online: https://www.iradbengal.sites.tau.ac.il/_files/ugd/901879_2cafbbe73b0248828ed5dece50c6c3f0.csv?dn=Painters_dataset.csv.

5. Sinha, V.B., Rao, S., and Balasubramanian, V.N. (2018, January 20). Fast Dawid-Skene: A fast vote aggregation scheme for sentiment classification. Proceedings of the 7th KDD Workshop on Issues of Sentiment Discovery and Opinion Mining, London, UK.

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