This paper proposes a novel approach using a coarse-to-fine analysis strategy for sentence-level emotion classifica-tion which takes into consideration of similarities to sen-tences in training set as well as adjacent sentences in the context. First, we use intra-sentence based features to de-termine the emotion label set of a target sentence coarsely through the statistical information gained from the label sets of the k most similar sentences in the training data. Then, we use the emotion transfer probabilities between neighboring sentences to refine the emotion labels of the target sentences. Such iterative refinements terminate when the emotion classification converges. The proposed algo-rithm is evaluated on Ren-CECps, a Chinese blog e...
In our work, we deploy semi-supervised learning methods to perform Sentiment Analysis on a corpus of...
Are word-level affect lexicons useful in detecting emotions at sentence level? Some prior research f...
In recent years many people have begun to express their thoughts and opinions on Twit-ter. Naturally...
In this paper, we propose an emotion separated method(SeTF·IDF) to assign the emotion labels of sent...
The typical emotion classification approach adopts one-step single-label classification using intra-...
Textual information is an important communication medium contained rich expression of emotion, and e...
The current multi-class emotion classification studies mainly focus on enhancing word-level and sent...
Emotion recognition has been used widely in various applications such as mental health monitoring an...
This paper presents a text classifier for automatically taggingthe sentiment of input text according...
In this paper, we propose a data-oriented method for inferring the emotion of a speaker conversing w...
We study the discrimination of emotions annotated in free texts at the sentence level: a sentence ca...
In this paper, we propose an emotion separated method(SeTF・IDF) to assign the emotion labels of sent...
Exploiting hand-crafted lexicon knowledge to enhance emotional or sentimental features at word-level...
AbstractThis paper presents our research in detection of emotive (emotionally loaded) sentences. The...
While there has been much work on sentiment analysis, emotion tagging has not been very well studied...
In our work, we deploy semi-supervised learning methods to perform Sentiment Analysis on a corpus of...
Are word-level affect lexicons useful in detecting emotions at sentence level? Some prior research f...
In recent years many people have begun to express their thoughts and opinions on Twit-ter. Naturally...
In this paper, we propose an emotion separated method(SeTF·IDF) to assign the emotion labels of sent...
The typical emotion classification approach adopts one-step single-label classification using intra-...
Textual information is an important communication medium contained rich expression of emotion, and e...
The current multi-class emotion classification studies mainly focus on enhancing word-level and sent...
Emotion recognition has been used widely in various applications such as mental health monitoring an...
This paper presents a text classifier for automatically taggingthe sentiment of input text according...
In this paper, we propose a data-oriented method for inferring the emotion of a speaker conversing w...
We study the discrimination of emotions annotated in free texts at the sentence level: a sentence ca...
In this paper, we propose an emotion separated method(SeTF・IDF) to assign the emotion labels of sent...
Exploiting hand-crafted lexicon knowledge to enhance emotional or sentimental features at word-level...
AbstractThis paper presents our research in detection of emotive (emotionally loaded) sentences. The...
While there has been much work on sentiment analysis, emotion tagging has not been very well studied...
In our work, we deploy semi-supervised learning methods to perform Sentiment Analysis on a corpus of...
Are word-level affect lexicons useful in detecting emotions at sentence level? Some prior research f...
In recent years many people have begun to express their thoughts and opinions on Twit-ter. Naturally...