Our work analyzed the relationship between the domain type of the word embeddings used to create sentiment analysis models and the domain of the sentiment analysis task. We used 3 corpora, (NYT, LION poems, and Book blurbs) to create our custom word embeddings and developed 9 different sentiment analysis models from our best word embeddings for each of the corpora. To compare our custom word embeddings against, we used 8 other pre-trained sentiment models including XLNet’s model, BERT (6 variations), and a simple skip-gram model used with Google vectors. Though we were hoping to prove that there was a clear advantage to using similar domains for the word embeddings as the dataset your sentiment model would be tested on, we concluded that mo...
Most approaches to sentiment analysis requires a sentiment lexicon in order to automatically predict...
Contemporary dictionary-based approaches to sentiment analysis exhibit serious validity problems whe...
This paper describes two different approaches to sentiment analysis. The first is a form of symbolic...
Since some sentiment words have similar syntactic and semantic features in the corpus, existing pre-...
Moving beyond the dominant bag-of-words approach to sentiment analysis we introduce an alternative p...
Moving beyond the dominant bag-of-words approach to sentiment analysis we introduce an alternative p...
Word embeddings or distributed representations of words are being used in various applications like ...
Context-based word embedding learning approaches can model rich semantic and syntactic information. ...
Sentiment analysis is a well-known and rapidly expanding study topic in natural language processing ...
Sentiment analysis (SA) is used to extract opinions from a huge amount of data and these opinions ar...
With every technological advancement, the role of machines in our lives are getting augmented and no...
In this paper, a novel re-engineering mechanism for the generation of word embeddings is proposed fo...
Word embeddings are effective intermediate representations for capturing semantic regularities betwe...
Sentiment lexicons are widely used in computational linguistics, as they represent a resource that d...
We propose a novel method for enriching word-embeddings without the need of a labeled corpus. Instea...
Most approaches to sentiment analysis requires a sentiment lexicon in order to automatically predict...
Contemporary dictionary-based approaches to sentiment analysis exhibit serious validity problems whe...
This paper describes two different approaches to sentiment analysis. The first is a form of symbolic...
Since some sentiment words have similar syntactic and semantic features in the corpus, existing pre-...
Moving beyond the dominant bag-of-words approach to sentiment analysis we introduce an alternative p...
Moving beyond the dominant bag-of-words approach to sentiment analysis we introduce an alternative p...
Word embeddings or distributed representations of words are being used in various applications like ...
Context-based word embedding learning approaches can model rich semantic and syntactic information. ...
Sentiment analysis is a well-known and rapidly expanding study topic in natural language processing ...
Sentiment analysis (SA) is used to extract opinions from a huge amount of data and these opinions ar...
With every technological advancement, the role of machines in our lives are getting augmented and no...
In this paper, a novel re-engineering mechanism for the generation of word embeddings is proposed fo...
Word embeddings are effective intermediate representations for capturing semantic regularities betwe...
Sentiment lexicons are widely used in computational linguistics, as they represent a resource that d...
We propose a novel method for enriching word-embeddings without the need of a labeled corpus. Instea...
Most approaches to sentiment analysis requires a sentiment lexicon in order to automatically predict...
Contemporary dictionary-based approaches to sentiment analysis exhibit serious validity problems whe...
This paper describes two different approaches to sentiment analysis. The first is a form of symbolic...