Smartphone Interruptibility Using Density-Weighted Uncertainty Sampling with Reinforcement Learning
Workshop Paper, ICMLA '11 Workshops, pp. 436 - 441, December, 2011
Abstract
We present the In-Context application for smart-phones, which combines signal processing, active learning, and reinforcement learning to autonomously create a personalized model of interruptibility for incoming phone calls. We empirically evaluate the system, and show that we can obtain an average of 96.12% classification accuracy when predicting interruptibility after a week of training. In contrast to previous work, we leverage density-weighted uncertainty sampling combined with a reinforcement learning framework applied to passively collected data to achieve comparable or superior classification accuracy using many fewer queries issued to the user.
BibTeX
@workshop{Fisher-2011-122295,author = {Robert Fisher and Reid Simmons},
title = {Smartphone Interruptibility Using Density-Weighted Uncertainty Sampling with Reinforcement Learning},
booktitle = {Proceedings of ICMLA '11 Workshops},
year = {2011},
month = {December},
pages = {436 - 441},
}
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