Data labeling is a critical aspect of sentiment analysis that requires assigning labels to text data to reflect the sentiment expressed. Traditional methods of data labeling involve manual annotation by human annotators, which can be both time-consuming and costly when handling large volumes of text data. Automation of the data labeling process can be achieved through the utilization of lexicon resources, which consist of pre-labeled dictionaries or databases of words and phrases in sentiment information. The contribution of this study is an evaluation of the performance of lexicon resources in document labeling. The evaluation aims to provide insight into the accuracy of using lexicon resources and inform future research. In this study, a ...
Sentiment detection automatically identifies emotions in textual data. The increasing amount of emot...
The use of WhatsApp Group (WAG) for communication is increasing nowadays. WAG communication data can...
Sentiment analysis concerns about automatically identifying sentiment or opinion expressed in a give...
Data labeling is a critical aspect of sentiment analysis that requires assigning labels to text data...
In this paper, we present a comparative study of text sentiment classification models using term fre...
Naïve Bayes, k-nearest neighbors, Adaboost, support vector machines and neural networks are five amo...
The automated classification of text documents is an active research challenge in document-oriented ...
In lexicon-based classification, documents are assigned labels by comparing the number of words that...
Naïve Bayes(NB), kNN and Adaboost are three commonly used text classifiers. Evaluation of these clas...
Analysts are often interested in how sentiment towards an organization, a product or a particular te...
Since manually constructing domain-specific sentiment lexicons is extremely time consuming and it ma...
The cornerstone for any sentiment analysis research is labeled data and its acquisition. Canonical c...
We present the results of an evaluation study in the context of lexicon-based sentiment analysis res...
Existing approaches to classifying documents by sentiment include machine learning with features cre...
The demand for information about sentiment expressed in texts has stimulated a growing interest into...
Sentiment detection automatically identifies emotions in textual data. The increasing amount of emot...
The use of WhatsApp Group (WAG) for communication is increasing nowadays. WAG communication data can...
Sentiment analysis concerns about automatically identifying sentiment or opinion expressed in a give...
Data labeling is a critical aspect of sentiment analysis that requires assigning labels to text data...
In this paper, we present a comparative study of text sentiment classification models using term fre...
Naïve Bayes, k-nearest neighbors, Adaboost, support vector machines and neural networks are five amo...
The automated classification of text documents is an active research challenge in document-oriented ...
In lexicon-based classification, documents are assigned labels by comparing the number of words that...
Naïve Bayes(NB), kNN and Adaboost are three commonly used text classifiers. Evaluation of these clas...
Analysts are often interested in how sentiment towards an organization, a product or a particular te...
Since manually constructing domain-specific sentiment lexicons is extremely time consuming and it ma...
The cornerstone for any sentiment analysis research is labeled data and its acquisition. Canonical c...
We present the results of an evaluation study in the context of lexicon-based sentiment analysis res...
Existing approaches to classifying documents by sentiment include machine learning with features cre...
The demand for information about sentiment expressed in texts has stimulated a growing interest into...
Sentiment detection automatically identifies emotions in textual data. The increasing amount of emot...
The use of WhatsApp Group (WAG) for communication is increasing nowadays. WAG communication data can...
Sentiment analysis concerns about automatically identifying sentiment or opinion expressed in a give...