3,326 research outputs found

    Exploring Latent Semantic Information for Textual Emotion Recognition in Blog Articles

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    Understanding people's emotions through natural language is a challenging task for intelligent systems based on Internet of Things (IoT). The major difficulty is caused by the lack of basic knowledge in emotion expressions with respect to a variety of real world contexts. In this paper, we propose a Bayesian inference method to explore the latent semantic dimensions as contextual information in natural language and to learn the knowledge of emotion expressions based on these semantic dimensions. Our method synchronously infers the latent semantic dimensions as topics in words and predicts the emotion labels in both word-level and document-level texts. The Bayesian inference results enable us to visualize the connection between words and emotions with respect to different semantic dimensions. And by further incorporating a corpus-level hierarchy in the document emotion distribution assumption, we could balance the document emotion recognition results and achieve even better word and document emotion predictions. Our experiment of the word-level and the document-level emotion predictions, based on a well-developed Chinese emotion corpus Ren-CECps, renders both higher accuracy and better robustness in the word-level and the document-level emotion predictions compared to the state-of-the-art emotion prediction algorithms

    Econometrics meets sentiment : an overview of methodology and applications

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    The advent of massive amounts of textual, audio, and visual data has spurred the development of econometric methodology to transform qualitative sentiment data into quantitative sentiment variables, and to use those variables in an econometric analysis of the relationships between sentiment and other variables. We survey this emerging research field and refer to it as sentometrics, which is a portmanteau of sentiment and econometrics. We provide a synthesis of the relevant methodological approaches, illustrate with empirical results, and discuss useful software

    DARIAH and the Benelux

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    Exploring embedding vectors for emotion detection

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    Textual data nowadays is being generated in vast volumes. With the proliferation of social media and the prevalence of smartphones, short texts have become a prevalent form of information such as news headlines, tweets and text advertisements. Given the huge volume of short texts available, effective and efficient models to detect the emotions from short texts become highly desirable and in some cases fundamental to a range of applications that require emotion understanding of textual content, such as human computer interaction, marketing, e-learning and health. Emotion detection from text has been an important task in Natural Language Processing (NLP) for many years. Many approaches have been based on the emotional words or lexicons in order to detect emotions. While the word embedding vectors like Word2Vec have been successfully employed in many NLP approaches, the word mover’s distance (WMD) is a method introduced recently to calculate the distance between two documents based on the embedded words. This thesis is investigating the ability to detect or classify emotions in sentences using word vectorization and distance measures. Our results confirm the novelty of using Word2Vec and WMD in predicting the emotions in short text. We propose a new methodology based on identifying “idealised” vectors that cap- ture the essence of an emotion; we define these vectors as having the minimal distance (using some metric function) between a vector and the embeddings of the text that contains the relevant emotion (e.g. a tweet, a sentence). We look for these vectors through searching the space of word embeddings using the covariance matrix adap- tation evolution strategy (CMA-ES). Our method produces state of the art results, surpassing classic supervised learning methods

    Natural Language Processing in-and-for Design Research

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    We review the scholarly contributions that utilise Natural Language Processing (NLP) methods to support the design process. Using a heuristic approach, we collected 223 articles published in 32 journals and within the period 1991-present. We present state-of-the-art NLP in-and-for design research by reviewing these articles according to the type of natural language text sources: internal reports, design concepts, discourse transcripts, technical publications, consumer opinions, and others. Upon summarizing and identifying the gaps in these contributions, we utilise an existing design innovation framework to identify the applications that are currently being supported by NLP. We then propose a few methodological and theoretical directions for future NLP in-and-for design research
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