Learning from the Wisdom of Crowds by Minimax Entropy
–Neural Information Processing Systems
An important way to make large training sets is to gather noisy labels from crowds of nonexperts. We propose a minimax entropy principle to improve the quality of these labels. Our method assumes that labels are generated by a probability distribution over workers, items, and labels.
Neural Information Processing Systems
Mar-14-2024, 07:05:35 GMT
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