In this paper, a novel re-engineering mechanism for the generation of word embeddings is proposed for document-level sentiment analysis. Current approaches to sentiment analysis often integrate feature engineering with classification, without optimizing the feature vectors explicitly. Engineering feature vectors to match the data between the training set and query sample as proposed in this paper could be a promising way for boosting the classification performance in machine learning applications. The proposed mechanism is designed to re-engineer the feature components from a set of embedding vectors for greatly increased between-class separation, hence better leveraging the informative content of the documents. The proposed mechanism was e...
Sentiment Analysis has become one of the important researches in natural language processing due to...
Word embedding is widely used in various natural language processing (NLP) tasks, especially sentime...
With every technological advancement, the role of machines in our lives are getting augmented and no...
Sentiment analysis is a well-known and rapidly expanding study topic in natural language processing ...
Since some sentiment words have similar syntactic and semantic features in the corpus, existing pre-...
Our work analyzed the relationship between the domain type of the word embeddings used to create sen...
During decades, Natural language processing (NLP) expanded its range of tasks, from document classif...
New applications of text categorization methods like opinion mining and sentiment analysis, author p...
Context-based word embedding learning approaches can model rich semantic and syntactic information. ...
Jebbara S, Cimiano P. Improving Opinion-Target Extraction with Character-Level Word Embeddings. In: ...
Abstract. Sentiment analysis of documents aims to characterise the positive or negative sentiment ex...
Sentiment analysis of documents aims to characterise the positive or negative sentiment expressed in...
Sentiment classification is an emerging research field. Due to the rich opinionated web content, peo...
Word embeddings or distributed representations of words are being used in various applications like ...
Existing approaches to classifying documents by sentiment include machine learning with features cre...
Sentiment Analysis has become one of the important researches in natural language processing due to...
Word embedding is widely used in various natural language processing (NLP) tasks, especially sentime...
With every technological advancement, the role of machines in our lives are getting augmented and no...
Sentiment analysis is a well-known and rapidly expanding study topic in natural language processing ...
Since some sentiment words have similar syntactic and semantic features in the corpus, existing pre-...
Our work analyzed the relationship between the domain type of the word embeddings used to create sen...
During decades, Natural language processing (NLP) expanded its range of tasks, from document classif...
New applications of text categorization methods like opinion mining and sentiment analysis, author p...
Context-based word embedding learning approaches can model rich semantic and syntactic information. ...
Jebbara S, Cimiano P. Improving Opinion-Target Extraction with Character-Level Word Embeddings. In: ...
Abstract. Sentiment analysis of documents aims to characterise the positive or negative sentiment ex...
Sentiment analysis of documents aims to characterise the positive or negative sentiment expressed in...
Sentiment classification is an emerging research field. Due to the rich opinionated web content, peo...
Word embeddings or distributed representations of words are being used in various applications like ...
Existing approaches to classifying documents by sentiment include machine learning with features cre...
Sentiment Analysis has become one of the important researches in natural language processing due to...
Word embedding is widely used in various natural language processing (NLP) tasks, especially sentime...
With every technological advancement, the role of machines in our lives are getting augmented and no...