In this paper, we propose an emotion separated method(SeTF・IDF) to assign the emotion labels of sentences with different values, which has a better visual effect compared with the values represented by TF・IDF in the visualization of a multi-label Chinese emotional corpus Ren_CECps. Inspired by the enormous improvement of the visualization map propelled by the changed distances among the sentences, we being the first group utilizes the Word Mover's Distance(WMD) algorithm as a way of feature representation in Chinese text emotion classification. Our experiments show that both in 80% for training, 20% for testing and 50% for training, 50% for testing experiments of Ren_CECps, WMD features get the best f1 scores and have a greater increase com...
This paper summarizes several lexical methods for more comprehensive affect recognition in text usin...
Word embeddings represent words in a numeric space so that semantic relations between words are repr...
[EN] Natural Language Processing problems has recently been benefited for the advances in Deep Learn...
In this paper, we propose an emotion separated method(SeTF·IDF) to assign the emotion labels of sent...
For sentiment analysis, lexicons play an important role in many related tasks. In this paper, aiming...
This paper proposes a novel approach using a coarse-to-fine analysis strategy for sentence-level emo...
Emotion Distribution Learning (EDL) is a recently proposed multiemotion analysis paradigm, which ide...
Textual information is an important communication medium contained rich expression of emotion, and e...
We propose a method for constructing a dictionary of emotional expressions, which is an indispensabl...
Are word-level affect lexicons useful in detecting emotions at sentence level? Some prior research f...
Emotion identification from text data has recently gained focus of the research community. This has ...
To date, several methods have been explored for the challenging task of cross-language speech emotio...
We reported a large-scale Internet-based experiment to investigate the impact of emotion information...
The majority of existing speech emotion recognition research focuses on automatic emotion detection ...
In this paper, we propose a multi-engine voting system to recognize the multiple emotion states expr...
This paper summarizes several lexical methods for more comprehensive affect recognition in text usin...
Word embeddings represent words in a numeric space so that semantic relations between words are repr...
[EN] Natural Language Processing problems has recently been benefited for the advances in Deep Learn...
In this paper, we propose an emotion separated method(SeTF·IDF) to assign the emotion labels of sent...
For sentiment analysis, lexicons play an important role in many related tasks. In this paper, aiming...
This paper proposes a novel approach using a coarse-to-fine analysis strategy for sentence-level emo...
Emotion Distribution Learning (EDL) is a recently proposed multiemotion analysis paradigm, which ide...
Textual information is an important communication medium contained rich expression of emotion, and e...
We propose a method for constructing a dictionary of emotional expressions, which is an indispensabl...
Are word-level affect lexicons useful in detecting emotions at sentence level? Some prior research f...
Emotion identification from text data has recently gained focus of the research community. This has ...
To date, several methods have been explored for the challenging task of cross-language speech emotio...
We reported a large-scale Internet-based experiment to investigate the impact of emotion information...
The majority of existing speech emotion recognition research focuses on automatic emotion detection ...
In this paper, we propose a multi-engine voting system to recognize the multiple emotion states expr...
This paper summarizes several lexical methods for more comprehensive affect recognition in text usin...
Word embeddings represent words in a numeric space so that semantic relations between words are repr...
[EN] Natural Language Processing problems has recently been benefited for the advances in Deep Learn...