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Automatic Detection of Learnability under Unreliable and Sparse User Feedback

机译:在不可靠且稀疏的用户反馈下自动检测可学习性

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Personalization for real-world machine-learning applications usually has to incorporate user feedback. Unfortunately, user feedback often suffers from sparsity and possible inconsistencies. Here we present an algorithm that exploits feedback for learning only when it is consistent. The user provides feedback on a small subset of the data. Based on the data representation alone, our algorithm employs a statistical criterion to trigger learning when user feedback is significantly different from random. We evaluate our algorithm in a challenging audio classification task with relevance to hearing aid applications. By restricting learning to an informative subset, our algorithm substantially improves the performance of a recently introduced classification algorithm.
机译:现实世界中的机器学习应用程序的个性化通常必须包含用户反馈。不幸的是,用户反馈经常遭受稀疏性和可能的​​不一致之苦。在这里,我们提出一种仅在反馈一致时才利用反馈进行学习的算法。用户提供有关数据的一小部分的反馈。仅基于数据表示,当用户反馈与随机反馈明显不同时,我们的算法采用统计准则触发学习。我们在与助听器应用相关的具有挑战性的音频分类任务中评估我们的算法。通过将学习限制在一个信息丰富的子集上,我们的算法大大提高了最近推出的分类算法的性能。

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