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arxiv: 1906.00254 · v1 · pith:PRPWPQZHnew · submitted 2019-06-01 · 💻 cs.LG · cs.CV· cs.SD· eess.AS· stat.ML

Super-resolution of Time-series Labels for Bootstrapped Event Detection

classification 💻 cs.LG cs.CVcs.SDeess.ASstat.ML
keywords datalabelsabundantquantitiessuper-resolvetime-seriesableaccurately
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Solving real-world problems, particularly with deep learning, relies on the availability of abundant, quality data. In this paper we develop a novel framework that maximises the utility of time-series datasets that contain only small quantities of expertly-labelled data, larger quantities of weakly (or coarsely) labelled data and a large volume of unlabelled data. This represents scenarios commonly encountered in the real world, such as in crowd-sourcing applications. In our work, we use a nested loop using a Kernel Density Estimator (KDE) to super-resolve the abundant low-quality data labels, thereby enabling effective training of a Convolutional Neural Network (CNN). We demonstrate two key results: a) The KDE is able to super-resolve labels more accurately, and with better calibrated probabilities, than well-established classifiers acting as baselines; b) Our CNN, trained on super-resolved labels from the KDE, achieves an improvement in F1 score of 22.1% over the next best baseline system in our candidate problem domain.

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