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Self-Training Pre-Trained Language Models for Zero- and Few-Shot Multi-Dialectal Arabic Sequence Labeling ...
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Contextual Sentence Classification: Detecting Sustainability Initiatives in Company Reports ...
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An empirical analysis of phrase-based and neural machine translation ...
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Stereotype and Skew: Quantifying Gender Bias in Pre-trained and Fine-tuned Language Models ...
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Code-Mixing on Sesame Street: Dawn of the Adversarial Polyglots ...
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Poisoning Knowledge Graph Embeddings via Relation Inference Patterns ...
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Mind Your Inflections! Improving NLP for Non-Standard Englishes with Base-Inflection Encoding ...
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NUIG-Shubhanker@Dravidian-CodeMix-FIRE2020: Sentiment Analysis of Code-Mixed Dravidian text using XLNet ...
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It's Morphin' Time! Combating Linguistic Discrimination with Inflectional Perturbations ...
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Towards a self-organizing pre-symbolic neural model representing sensorimotor primitives ...
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Multi-lingual Dialogue Act Recognition with Deep Learning Methods ...
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ACTRCE: Augmenting Experience via Teacher's Advice For Multi-Goal Reinforcement Learning ...
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Deep Reinforcement Learning with Distributional Semantic Rewards for Abstractive Summarization ...
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Tackling Sequence to Sequence Mapping Problems with Neural Networks ...
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Visual Referring Expression Recognition: What Do Systems Actually Learn? ...
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Modular Mechanistic Networks: On Bridging Mechanistic and Phenomenological Models with Deep Neural Networks in Natural Language Processing ...
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What is not where: the challenge of integrating spatial representations into deep learning architectures ...
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