An Annotation Framework for Luxembourgish Sentiment Analysis

peer reviewed ; The aim of this paper is to present a framework developed for crowdsourcing sentiment annotation for the low-resource language Luxembourgish. Our tool is easily accessible through a web interface and facilitates sentence-level annotation of several annotators in parallel. In the heart of our framework is an XML database, which serves as central part linking several components. The corpus in the database consists of news articles and user comments. One of the components is LuNa, a tool for linguistic preprocessing of the data set. It tokenizes the text, splits it into sentences... Mehr ...

Verfasser: Sirajzade, Joshgun
Gierschek, Daniela
Schommer, Christoph
Dokumenttyp: conference paper
Erscheinungsdatum: 2020
Verlag/Hrsg.: European Language Resources Association (ELRA)
Schlagwörter: Opinion Mining / Sentiment Analysis / Corpus (Creation / Annotation / etc.) / Luxembourgish Language / Crowdsourcing / Time Series / Arts & humanities / Languages & linguistics / Engineering / computing & technology / Computer science / Arts & sciences humaines / Langues & linguistique / Ingénierie / informatique & technologie / Sciences informatiques
Sprache: Englisch
Permalink: https://search.fid-benelux.de/Record/base-28697925
Datenquelle: BASE; Originalkatalog
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Link(s) : https://orbilu.uni.lu/handle/10993/43136

peer reviewed ; The aim of this paper is to present a framework developed for crowdsourcing sentiment annotation for the low-resource language Luxembourgish. Our tool is easily accessible through a web interface and facilitates sentence-level annotation of several annotators in parallel. In the heart of our framework is an XML database, which serves as central part linking several components. The corpus in the database consists of news articles and user comments. One of the components is LuNa, a tool for linguistic preprocessing of the data set. It tokenizes the text, splits it into sentences and assigns POS-tags to the tokens. After that, the preprocessed text is stored in XML format into the database. The Sentiment Annotation Tool, which is a browser-based tool, then enables the annotation of split sentences from the database. The Sentiment Engine, a separate module, is trained with this material in order to annotate the whole data set and analyze the sentiment of the comments over time and in relationship to the news articles. The gained knowledge can again be used to improve the sentiment classification on the one hand and on the other hand to understand the sentiment phenomenon from the linguistic point of view.