165 research outputs found

    General Purpose Textual Sentiment Analysis and Emotion Detection Tools

    Get PDF
    Textual sentiment analysis and emotion detection consists in retrieving the sentiment or emotion carried by a text or document. This task can be useful in many domains: opinion mining, prediction, feedbacks, etc. However, building a general purpose tool for doing sentiment analysis and emotion detection raises a number of issues, theoretical issues like the dependence to the domain or to the language but also pratical issues like the emotion representation for interoperability. In this paper we present our sentiment/emotion analysis tools, the way we propose to circumvent the di culties and the applications they are used for.Comment: Workshop on Emotion and Computing (2013

    A Comparative Study on Regularization Strategies for Embedding-based Neural Networks

    Full text link
    This paper aims to compare different regularization strategies to address a common phenomenon, severe overfitting, in embedding-based neural networks for NLP. We chose two widely studied neural models and tasks as our testbed. We tried several frequently applied or newly proposed regularization strategies, including penalizing weights (embeddings excluded), penalizing embeddings, re-embedding words, and dropout. We also emphasized on incremental hyperparameter tuning, and combining different regularizations. The results provide a picture on tuning hyperparameters for neural NLP models.Comment: EMNLP '1

    Latent Tree Learning with Differentiable Parsers: Shift-Reduce Parsing and Chart Parsing

    Full text link
    Latent tree learning models represent sentences by composing their words according to an induced parse tree, all based on a downstream task. These models often outperform baselines which use (externally provided) syntax trees to drive the composition order. This work contributes (a) a new latent tree learning model based on shift-reduce parsing, with competitive downstream performance and non-trivial induced trees, and (b) an analysis of the trees learned by our shift-reduce model and by a chart-based model.Comment: ACL 2018 workshop on Relevance of Linguistic Structure in Neural Architectures for NL

    Extracting and presenting different viewpoints from political news articles

    Get PDF
    This study explores user interest in browsing different viewpoints from politicians and news agencies in news recommendation system. Along with providing personalized news articles to the user, bringing the opinion of politicians and news agencies about political events might be interesting for users. As there is always bias in publishing the news articles, newsreaders try to realize politicians’ opinions manually. We designed a prototype system to extract relevant politicians' viewpoints to a controversial event, and present them along with the news articles in the same user interface. We then observed user behaviour in browsing viewpoints vs. original news articles. According to the users’ clicks pattern analysis and their responses to the questionnaire they are interested in browsing the different viewpoints. This result suggests that news recommendation system could provide alternative recommendation criteria such as different viewpoints when recommending news articles
    • …
    corecore