Please use this identifier to cite or link to this item: https://doi.org/10.21256/zhaw-4889
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dc.contributor.authorDeriu, Jan Milan-
dc.contributor.authorCieliebak, Mark-
dc.date.accessioned2018-11-26T15:31:34Z-
dc.date.available2018-11-26T15:31:34Z-
dc.date.issued2017-
dc.identifier.urihttp://www.macs.hw.ac.uk/InteractionLab/E2E/final_papers/E2E-ZHAW.pdfde_CH
dc.identifier.urihttps://digitalcollection.zhaw.ch/handle/11475/13220-
dc.description.abstractNatural Language Generation plays an important role in the domain of dialogue systems as it determines how the users perceive the system. Recently, deep-learning based systems have been proposed to tackle this task, as they generalize better and do not require large amounts of manual effort to implement them for new domains. However, deep learning systems usually produce monotonous sounding texts. In this work, we present our system for Natural Language Generation where we control the first word of the surface realization. We show that with this simple control mechanism it is possible to increase the lexical variability and the complexity of the generated texts. For this, we apply a character-based version of the Semantically Controlled Long Short-term Memory Network (SC-LSTM), and apply its specialized cell to control the first word generated by the system. To ensure that the surface manipulation does not produce semantically incoherent texts we apply a semantic control component, which we also use for reranking purposes. We show that our model is capable of generating texts that are more sophisticated while decreasing the number of semantic errors made during the generation.de_CH
dc.language.isoende_CH
dc.publisherZHAW Zürcher Hochschule für Angewandte Wissenschaftende_CH
dc.rightsLicence according to publishing contractde_CH
dc.subject.ddc006: Spezielle Computerverfahrende_CH
dc.titleEnd-to-end trainable system for enhancing diversity in natural language generationde_CH
dc.typeKonferenz: Paperde_CH
dcterms.typeTextde_CH
zhaw.departementSchool of Engineeringde_CH
zhaw.organisationalunitInstitut für Informatik (InIT)de_CH
dc.identifier.doi10.21256/zhaw-4889-
zhaw.conference.detailsEnd-to-End Natural Language Generation Challenge (E2E NLG), 2017de_CH
zhaw.funding.euNode_CH
zhaw.originated.zhawYesde_CH
zhaw.publication.statuspublishedVersionde_CH
zhaw.publication.reviewNot specifiedde_CH
zhaw.webfeedSoftware Systemsde_CH
zhaw.webfeedNatural Language Processingde_CH
Appears in collections:Publikationen School of Engineering

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Deriu, J. M., & Cieliebak, M. (2017). End-to-end trainable system for enhancing diversity in natural language generation. End-to-End Natural Language Generation Challenge (E2E NLG), 2017. https://doi.org/10.21256/zhaw-4889
Deriu, J.M. and Cieliebak, M. (2017) ‘End-to-end trainable system for enhancing diversity in natural language generation’, in End-to-End Natural Language Generation Challenge (E2E NLG), 2017. ZHAW Zürcher Hochschule für Angewandte Wissenschaften. Available at: https://doi.org/10.21256/zhaw-4889.
J. M. Deriu and M. Cieliebak, “End-to-end trainable system for enhancing diversity in natural language generation,” in End-to-End Natural Language Generation Challenge (E2E NLG), 2017, 2017. doi: 10.21256/zhaw-4889.
DERIU, Jan Milan und Mark CIELIEBAK, 2017. End-to-end trainable system for enhancing diversity in natural language generation. In: End-to-End Natural Language Generation Challenge (E2E NLG), 2017 [online]. Conference paper. ZHAW Zürcher Hochschule für Angewandte Wissenschaften. 2017. Verfügbar unter: http://www.macs.hw.ac.uk/InteractionLab/E2E/final_papers/E2E-ZHAW.pdf
Deriu, Jan Milan, and Mark Cieliebak. 2017. “End-to-End Trainable System for Enhancing Diversity in Natural Language Generation.” Conference paper. In End-to-End Natural Language Generation Challenge (E2E NLG), 2017. ZHAW Zürcher Hochschule für Angewandte Wissenschaften. https://doi.org/10.21256/zhaw-4889.
Deriu, Jan Milan, and Mark Cieliebak. “End-to-End Trainable System for Enhancing Diversity in Natural Language Generation.” End-to-End Natural Language Generation Challenge (E2E NLG), 2017, ZHAW Zürcher Hochschule für Angewandte Wissenschaften, 2017, https://doi.org/10.21256/zhaw-4889.


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