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An Ensemble method for Content Selection for Data-to-text Systems
Published 9 Jun 2015 in cs.CL and cs.AI | (1506.02922v1)
Abstract: We present a novel approach for automatic report generation from time-series data, in the context of student feedback generation. Our proposed methodology treats content selection as a multi-label classification (MLC) problem, which takes as input time-series data (students' learning data) and outputs a summary of these data (feedback). Unlike previous work, this method considers all data simultaneously using ensembles of classifiers, and therefore, it achieves higher accuracy and F- score compared to meaningful baselines.
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