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Building Large Machine Reading-Comprehension Datasets using Paragraph Vectors

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arxiv 1612.04342 v1 pith:ZDWVOHRZ submitted 2016-12-13 cs.CL

Building Large Machine Reading-Comprehension Datasets using Paragraph Vectors

classification cs.CL
keywords modelsperformanceaccuracyarchitecturearounddatasetshybridmachine
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We present a dual contribution to the task of machine reading-comprehension: a technique for creating large-sized machine-comprehension (MC) datasets using paragraph-vector models; and a novel, hybrid neural-network architecture that combines the representation power of recurrent neural networks with the discriminative power of fully-connected multi-layered networks. We use the MC-dataset generation technique to build a dataset of around 2 million examples, for which we empirically determine the high-ceiling of human performance (around 91% accuracy), as well as the performance of a variety of computer models. Among all the models we have experimented with, our hybrid neural-network architecture achieves the highest performance (83.2% accuracy). The remaining gap to the human-performance ceiling provides enough room for future model improvements.

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