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Introduction

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Slovensko ˇceský NLP workshop (SloNLP 2017)

SloNLP is a workshop focused on Natural Language Processing (NLP) and Computational Linguis- tics. Its primary aim is to promote cooperation among NLP researchers in Slovakia and Czech Republic.

The topics of the workshop include automatic speech recognition, automatic natural language analysis and generation (morphology, syntax, semantics, etc.), dialogue systems, machine transla- tion, information retrieval, practical applications of NLP technologies, and other topics of computa- tional linguistics.

Workshop Program Committee

Rudolf Rosa, ÚFAL MFF UK, main organizer Petra Baranˇcíková, ÚFAL MFF UK, main organizer Vladimír Benko, JÚL’Š SAV

Ján Genˇci, KPI TUKE Aleš Horák, FI MUNI

Miloslav Konopík, KIV Z ˇCU Pavel Král, KIV Z ˇCU

Markéta Lopatková, ÚFAL MFF UK David Mareˇcek, ÚFAL MFF UK Karel Oliva, freelance linguist

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