Mechanism Design for Cost Optimal PAC Learning in the Presence of Strategic Noisy Annotators
Garg, Dinesh, Bhattacharya, Sourangshu, Sundararajan, S., Shevade, Shirish
We consider the problem of Probably Approximate Correct (PAC) learning of a binary classifier from noisy labeled examples acquired from multiple annotators (each characterized by a respective classification 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 Minimum Disagreement Algorithm (MDA) on the number of labeled examples to be obtained from each annotator. Next, we consider the incomplete information scenario, where each annotator is strategic and holds the respective noise rate as a private information.
Oct-16-2012