Josef Ruppenhofer
University of Hildesheim
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Publication
Featured researches published by Josef Ruppenhofer.
language resources and evaluation | 2013
Josef Ruppenhofer; Russell Lee-Goldman; Caroline Sporleder; Roser Morante
Semantic role labeling is traditionally viewed as a sentence-level task concerned with identifying semantic arguments that are overtly realized in a fairly local context (i.e., a clause or sentence). However, this local view potentially misses important information that can only be recovered if local argument structures are linked across sentence boundaries. One important link concerns semantic arguments that remain locally unrealized (null instantiations) but can be inferred from the context. In this paper, we report on the SemEval 2010 Task-10 on “Linking Events and Their Participants in Discourse”, that addressed this problem. We discuss the corpus that was created for this task, which contains annotations on multiple levels: predicate argument structure (FrameNet and PropBank), null instantiations, and coreference. We also provide an analysis of the task and its difficulties.
conference of the european chapter of the association for computational linguistics | 2014
Josef Ruppenhofer; Michael Wiegand; Jasper Brandes
We compare several different corpusbased and lexicon-based methods for the scalar ordering of adjectives. Among them, we examine for the first time a lowresource approach based on distinctivecollexeme analysis that just requires a small predefined set of adverbial modifiers. While previous work on adjective intensity mostly assumes one single scale for all adjectives, we group adjectives into different scales which is more faithful to human perception. We also apply the methods to both polar and non-polar adjectives, showing that not all methods are equally suitable for both types of adjectives.
conference on computational natural language learning | 2015
Michael Wiegand; Josef Ruppenhofer
We present an approach for opinion role induction for verbal predicates. Our model rests on the assumption that opinion verbs can be divided into three different types where each type is associated with a characteristic mapping between semantic roles and opinion holders and targets. In several experiments, we demonstrate the relevance of those three categories for the task. We show that verbs can easily be categorized with semi-supervised graphbased clustering and some appropriate similarity metric. The seeds are obtained through linguistic diagnostics. We evaluate our approach against a new manually-compiled opinion role lexicon and perform in-context classification.
empirical methods in natural language processing | 2015
Josef Ruppenhofer; Jasper Brandes
In this contribution, we report on an effort to annotate German data with information relevant to opinion inference. Such information has previously been referred to as effect or couched in terms of eventevaluation functors. We extend the theory and present an extensive scheme that combines both approaches and thus extends the set of inference-relevant predicates. Using these guidelines to annotate 726 German synsets, we achieve good inter-annotator agreement.
International Conference of the German Society for Computational Linguistics and Language Technology | 2017
Michael Wiegand; Maximilian Wolf; Josef Ruppenhofer
We present an approach for modeling German negation in open-domain fine-grained sentiment analysis. Unlike most previous work in sentiment analysis, we assume that negation can be conveyed by many lexical units (and not only common negation words) and that different negation words have different scopes. Our approach is examined on a new dataset comprising sentences with mentions of polar expressions and various negation words. We identify different types of negation words that have the same scopes. We show that already negation modeling based on these types largely outperforms traditional negation models which assume the same scope for all negation words and which employ a window-based scope detection rather than a scope detection based on syntactic information.
empirical methods in natural language processing | 2015
Michael Wiegand; Marc Schulder; Josef Ruppenhofer
We offer a critical review of the current state of opinion role extraction involving opinion verbs. We argue that neither the currently available lexical resources nor the manually annotated text corpora are sufficient to appropriately study this task. We introduce a new corpus focusing on opinion roles of opinion verbs from the Subjectivity Lexicon and show potential benefits of this corpus. We also demonstrate that state-of-the-art classifiers perform rather poorly on this new dataset compared to the standard dataset for the task showing that there still remains significant research to be done.
language resources and evaluation | 2012
Simon Clematide; Stefan Gindl; Manfred Klenner; Stefanos Petrakis; Robert Remus; Josef Ruppenhofer; Ulli Waltinger; Michael Wiegand
meeting of the association for computational linguistics | 2012
Josef Ruppenhofer; Ines Rehbein
recent advances in natural language processing | 2011
Michaela Regneri; Alexander Koller; Josef Ruppenhofer; Manfred Pinkal
Archive | 2012
Josef Ruppenhofer; Ines Rehbein