Improving activity recognition via automatic decision tree pruning.

UbiComp '14: The 2014 ACM Conference on Ubiquitous Computing Seattle Washington September, 2014(2014)

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摘要
Activity recognition enables many user-facing smartphone applications, but it may suffer from misclassifications when trained models attempt to classify previously-unseen real-world behavior. Our system mitigates this problem by first identifying spurious classifications and then automatically pruning a decision tree model to remove labels that tend to produce wrong inferences, resulting in a 10% classification improvement based on our data set.
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