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Slovenskoˇ cesk´ y NLP workshop (SloNLP 2019)

5th International Workshop

19th Conference on Information Technologies – Applications and Theory Hotel Zorniˇcka, Donovaly, Slovakia, September 20–24, 2019.

Preface

SloNLP is a workshop focused on Natural Language Processing (NLP) and Computa- tional Linguistics. Its primary aim is to promote cooperation among NLP researchers in Slovakia and the Czech Republic. The topics of the workshop include automatic speech recognition, automatic natural language analysis and generation (morphology, syntax, semantics, etc.), dialogue systems, machine translation, information retrieval, practical applications of NLP technologies, and other topics of computational linguistics.

To further encourage cooperation and sharing of information among NLP researchers in Slovakia and Czechia, we offer Open session, an opportunity for anyone to present his work, without writing a paper.

As invited speakers, we welcome people that apply NLP in a private sector to contrast with mainly academic participants. This year, Luk´aˇs Vr´abel presents his experiences from Central Europe AI startup studio.

This year, 5 papers are accepted for a poster presentation and there is one participant of the Open Session.

The program committee of SloNLP 2019:

• Petra Baranˇc´ıkov´a, Charles University in Prague, main organizer

• J´an Genˇci, Technical University of Kosice

• Aleˇs Hor´ak, Masaryk University

• Miloslav Konop´ık, University of West Bohemia

• Pavel Kr´al, University of West Bohemia

• Mark´eta Lopatkov´a, Charles University in Prague

• David Mareˇcek, Charles University in Prague

• Martin Proch´azka, Charles University in Prague

• Daniel Pr˚uˇsa, Czech Technical University

• Rudolf Rosa, Charles University in Prague, main organizer

• Alexandr Rosen, Charles University

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