Mechanism design for cost optimal PAC learning in the presence of strategic noisy annotators


Autoria(s): Garg, Dinesh; Bhattacharya, Sourangshu; Sundararajan, S; Shevade, Shirish
Data(s)

2012

Resumo

We consider the problem of Probably Ap-proximate Correct (PAC) learning of a bi-nary classifier from noisy labeled exam-ples acquired from multiple annotators(each characterized by a respective clas-sification noise rate). First, we consider the complete information scenario, where the learner knows the noise rates of all the annotators. For this scenario, we derive sample complexity bound for the Mini-mum Disagreement Algorithm (MDA) on the number of labeled examples to be ob-tained from each annotator. Next, we consider the incomplete information sce-nario, where each annotator is strategic and holds the respective noise rate as a private information. For this scenario, we design a cost optimal procurement auc-tion mechanism along the lines of Myer-son’s optimal auction design framework in a non-trivial manner. This mechanism satisfies incentive compatibility property,thereby facilitating the learner to elicit true noise rates of all the annotators.

Formato

application/pdf

Identificador

http://eprints.iisc.ernet.in/47816/1/Asso_Unce_Arti_Intel_1_2012.pdf

Garg, Dinesh and Bhattacharya, Sourangshu and Sundararajan, S and Shevade, Shirish (2012) Mechanism design for cost optimal PAC learning in the presence of strategic noisy annotators. In: UAI 2012 : 28th Conference on Uncertainty in Artificial Intelligence, August 15-17, 2012, Catalina Island, USA.

Publicador

Association for Uncertainty in Artificial Intelligence

Relação

http://www.auai.org/uai2012/

http://eprints.iisc.ernet.in/47816/

Palavras-Chave #Computer Science & Automation (Formerly, School of Automation)
Tipo

Conference Paper

PeerReviewed