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Dialectic Behavioural Therapy has an impact on self- concept clarity and facets of self-esteem in women with Borderline Personality Disorder
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Geschichte der mecklenburgischen Regionalsprache seit dem Zweiten Weltkrieg : Varietätenkontakt zwischen Alteingesessenen und immigrierten Vertriebenen. Teil 1: Sprachsystemgeschichte
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Ehlers, Klaas-Hinrich [Verfasser]. - Frankfurt a.M. : Peter Lang GmbH, Internationaler Verlag der Wissenschaften, 2018
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DNB Subject Category Language
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Evaluating neural network explanation methods using hybrid documents and morphosyntactic agreement
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Multi-Multi-View Learning: Multilingual and Multi-Representation Entity Typing
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Attentive Convolution: Equipping CNNs with RNN-style Attention Mechanisms
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In: Transactions of the Association for Computational Linguistics (2018)
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Recurrent One-Hop Predictions for Reasoning over Knowledge Graphs
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Embedding Learning Through Multilingual Concept Induction ...
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Neural Semi-Markov Conditional Random Fields for Robust Character-Based Part-of-Speech Tagging ...
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Fortification of Neural Morphological Segmentation Models for Polysynthetic Minimal-Resource Languages ...
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Multilingual Embeddings Jointly Induced from Contexts and Concepts: Simple, Strong and Scalable ...
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Multi-Multi-View Learning: Multilingual and Multi-Representation Entity Typing ...
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Multi-Multi-View Learning: Multilingual and Multi-Representation Entity Typing ...
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Abstract:
Knowledge bases (KBs) are paramount in NLP. We employ multiview learning for increasing accuracy and coverage of entity type information in KBs. We rely on two metaviews: language and representation. For language, we consider high-resource and lowresource languages from Wikipedia. For representation, we consider representations based on the context distribution of the entity (i.e., on its embedding), on the entity’s name (i.e., on its surface form) and on its description in Wikipedia. The two metaviews language and representation can be freely combined: each pair of language and representation (e.g., German embedding, English description, Spanish name) is a distinct view. Our experiments on entity typing with fine-grained classes demonstrate the effectiveness of multiview learning. We release MVET, a large multiview – and, in particular, multilingual – entity typing dataset we created. Mono- and multilingual finegrained entity typing systems can be evaluated on this dataset. ...
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Keyword:
000; 004; 400; 410
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URL: https://dx.doi.org/10.5282/ubm/epub.61855 https://epub.ub.uni-muenchen.de/id/eprint/61855
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Embedding Learning Through Multilingual Concept Induction ...
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Replicated Siamese LSTM in Ticketing System for Similarity Learning and Retrieval in Asymmetric Texts ...
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Joint Bootstrapping Machines for High Confidence Relation Extraction ...
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