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MASSIVE: A 1M-Example Multilingual Natural Language Understanding Dataset with 51 Typologically-Diverse Languages ...
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BASE
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Learning Better Visual Dialog Agents with Pretrained Visual-Linguistic Representation ...
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BASE
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Can You be More Social? Injecting Politeness and Positivity into Task-Oriented Conversational Agents ...
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BASE
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Knowledge as a Teacher: Knowledge-Guided Structural Attention Networks ...
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BASE
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Finding the Structure of Documents
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In: Multilingual natural language processing applications ; https://hal-amu.archives-ouvertes.fr/hal-01194260 ; Zitouni, I. and Bickel, D.M. Multilingual natural language processing applications, IBM Press, pp.21--48, 2011, 978-0137151448 (2011)
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BASE
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Who, What, When, Where, Why? Comparing Multiple Approaches to the Cross-Lingual 5W Task
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BASE
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Where's the Verb? Correcting Machine Translation During Question Answering
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BASE
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Who, What, When, Where, Why? Comparing Multiple Approaches to the Cross-Lingual 5W Task ...
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BASE
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