Training a Broad-Coverage German Sentiment Classification Model for Dialog Systems This paper describes the training of a general-purpose German sentiment classification model. Sentiment classification is an important aspect of general text analytics. Furthermore, it plays a vital role in dialogue systems and voice interfaces that depend on the ability of the system to pick up and understand emotional signals from user utterances. The presented study outlines how we have collected a new German sentiment corpus and then combined this corpus with existing resources to train a broad-coverage German sentiment model. The resulting data set contains 5.4 million labelled samples. We have used the data to train both, a simple convolutional and a t...
We present the results of an evaluation study in the context of lexicon-based sentiment analysis res...
This thesis explores automatic sentiment analysis techniques with the overall goal of simulating hum...
This dissertation investigates opinion mining and lexical affect sensing. It discusses emotional cor...
In this paper, we describe MLSA, a publicly available multi-layered reference corpus for German-lang...
In this paper we present SB10k, a newcorpus for sentiment analysis with approx.10,000 German tweets....
The availability of annotated data is an important prerequisite for the development of machine learn...
In this paper, we propose GermanPolarityClues, a new publicly available lexical resource for sentime...
Sentiments are positive and negative emotions, evaluations and stances. This dissertation focuses on...
In recent years, sentiment classification has attracted much attention from natural language process...
The current level of development of computational linguistics is characterized by the involvement of...
Waltinger U. GermanPolarityClues: A Lexical Resource for German Sentiment Analysis. In: Nicoletta Ca...
Accurate opinion mining requires the exact identification of the source and target of an opinion. To...
The dataset provides a sentiment dictionary for German political language as well as the replication...
Sentiments are positive and negative emotions, evaluations and stances. This dissertation focuses on...
The theme of the work is sentiment analysis, especially in terms of informatics (marginally from a l...
We present the results of an evaluation study in the context of lexicon-based sentiment analysis res...
This thesis explores automatic sentiment analysis techniques with the overall goal of simulating hum...
This dissertation investigates opinion mining and lexical affect sensing. It discusses emotional cor...
In this paper, we describe MLSA, a publicly available multi-layered reference corpus for German-lang...
In this paper we present SB10k, a newcorpus for sentiment analysis with approx.10,000 German tweets....
The availability of annotated data is an important prerequisite for the development of machine learn...
In this paper, we propose GermanPolarityClues, a new publicly available lexical resource for sentime...
Sentiments are positive and negative emotions, evaluations and stances. This dissertation focuses on...
In recent years, sentiment classification has attracted much attention from natural language process...
The current level of development of computational linguistics is characterized by the involvement of...
Waltinger U. GermanPolarityClues: A Lexical Resource for German Sentiment Analysis. In: Nicoletta Ca...
Accurate opinion mining requires the exact identification of the source and target of an opinion. To...
The dataset provides a sentiment dictionary for German political language as well as the replication...
Sentiments are positive and negative emotions, evaluations and stances. This dissertation focuses on...
The theme of the work is sentiment analysis, especially in terms of informatics (marginally from a l...
We present the results of an evaluation study in the context of lexicon-based sentiment analysis res...
This thesis explores automatic sentiment analysis techniques with the overall goal of simulating hum...
This dissertation investigates opinion mining and lexical affect sensing. It discusses emotional cor...