Most text classification approaches model text at the lexical and syntactic level only, lacking do-main robustness and explainability. In tasks like sentiment analysis, such approaches can result in limited effectiveness if the texts to be classified consist of a series of arguments. In this paper, we claim that even a shallow model of the argumentation of a text allows for an effective and more robust classification, while providing intuitive explanations of the classification results. Here, we apply this idea to the supervised prediction of sentiment scores for reviews. We combine existing approaches from sentiment analysis with novel features that compare the overall argumentation structure of the given review text to a learned set of co...
Past work that improves document-level sentiment analysis by encoding user and product information h...
We derive two variants of a semi-supervised model for fine-grained sentiment analysis. Both models l...
Here we present a technique to compute the sentiments of movie review dataset so t hat the overall p...
Abstract. The analysis of user reviews has become critical in research and industry, as user reviews...
Web reviews have been intensively studied in argumentation-related tasks such as sen-timent analysis...
Sentiments are positive and negative emotions, evaluations and stances. This dissertation focuses on...
Online reviews are an important asset for users deciding to buy a product, see a movie, or go to a r...
Product reviews contain valuable information about product features and consumers’ purchasing prefer...
Abstract—Sentiment analysis is a branch of natural language processing, or machine learning methods....
The automatic detection of orientation and emotions in texts is becoming increasingly important in t...
Sentiment analysis is widely studied to extract opinions from user generated content (UGC), and vari...
The amount of digital text-based consumer review data has increased dramatically and there exist man...
Sentiment analysis concerns the study of opinions expressed in a text. Due to the huge amount of rev...
Sentiment analysis means to classify the feelings and opinions that are written in the form of sente...
Abstract — Now a days posting reviews on products is one of the popular way for expressing opinions ...
Past work that improves document-level sentiment analysis by encoding user and product information h...
We derive two variants of a semi-supervised model for fine-grained sentiment analysis. Both models l...
Here we present a technique to compute the sentiments of movie review dataset so t hat the overall p...
Abstract. The analysis of user reviews has become critical in research and industry, as user reviews...
Web reviews have been intensively studied in argumentation-related tasks such as sen-timent analysis...
Sentiments are positive and negative emotions, evaluations and stances. This dissertation focuses on...
Online reviews are an important asset for users deciding to buy a product, see a movie, or go to a r...
Product reviews contain valuable information about product features and consumers’ purchasing prefer...
Abstract—Sentiment analysis is a branch of natural language processing, or machine learning methods....
The automatic detection of orientation and emotions in texts is becoming increasingly important in t...
Sentiment analysis is widely studied to extract opinions from user generated content (UGC), and vari...
The amount of digital text-based consumer review data has increased dramatically and there exist man...
Sentiment analysis concerns the study of opinions expressed in a text. Due to the huge amount of rev...
Sentiment analysis means to classify the feelings and opinions that are written in the form of sente...
Abstract — Now a days posting reviews on products is one of the popular way for expressing opinions ...
Past work that improves document-level sentiment analysis by encoding user and product information h...
We derive two variants of a semi-supervised model for fine-grained sentiment analysis. Both models l...
Here we present a technique to compute the sentiments of movie review dataset so t hat the overall p...