Naïve Bayes, k-nearest neighbors, Adaboost, support vector machines and neural networks are five among others commonly used text classifiers. Evaluation of these classifiers involves a variety of factors to be considered including benchmark used, feature selections, parameter settings of algorithms, and the measurement criteria employed. Researchers have demonstrated that some algorithms outperform others on some corpus, however, inconsistency of human labeling and high dimensionality of feature spaces are two issues to be addressed in text categorization. This paper focuses on evaluating the five commonly used text classifiers by using an automatically generated text document collection which is labeled by a group of experts to alleviate s...
With the development of online data, text categorization has become one of the key procedures for ta...
Text categorization is an important application of machine learning to the field of document informa...
Text data mining is the process of extracting and analyzing valuable information from text. A text d...
Naïve Bayes, k-nearest neighbors, Adaboost, support vector machines and neural networks are five amo...
Naïve Bayes(NB), kNN and Adaboost are three commonly used text classifiers. Evaluation of these clas...
This paper focuses on a comparative evaluation of a wide-range of text categorization methods, inclu...
Text categorization (also known as text classification) is the task of automatically assigning docum...
Text categorization is the task of discovering the category or class text documents belongs to, or i...
Under the era of technical surge in recent years, the weight of artificial intelligence in people\u2...
This paper examines the use of inductive learning to categorize natural language documents into pred...
We present an approach to text categorization using machine learning techniques. The approach is dev...
Though naïve Bayes text classifiers are widely used because of its simplicity and effectiveness, the...
We tackle two different problems of text categorization (TC), namely feature selection and classifie...
Text classification is the process in which text document is assigned to one or more predefined cate...
This paper gives a comparison of frequently used classifier models for text classification in the re...
With the development of online data, text categorization has become one of the key procedures for ta...
Text categorization is an important application of machine learning to the field of document informa...
Text data mining is the process of extracting and analyzing valuable information from text. A text d...
Naïve Bayes, k-nearest neighbors, Adaboost, support vector machines and neural networks are five amo...
Naïve Bayes(NB), kNN and Adaboost are three commonly used text classifiers. Evaluation of these clas...
This paper focuses on a comparative evaluation of a wide-range of text categorization methods, inclu...
Text categorization (also known as text classification) is the task of automatically assigning docum...
Text categorization is the task of discovering the category or class text documents belongs to, or i...
Under the era of technical surge in recent years, the weight of artificial intelligence in people\u2...
This paper examines the use of inductive learning to categorize natural language documents into pred...
We present an approach to text categorization using machine learning techniques. The approach is dev...
Though naïve Bayes text classifiers are widely used because of its simplicity and effectiveness, the...
We tackle two different problems of text categorization (TC), namely feature selection and classifie...
Text classification is the process in which text document is assigned to one or more predefined cate...
This paper gives a comparison of frequently used classifier models for text classification in the re...
With the development of online data, text categorization has become one of the key procedures for ta...
Text categorization is an important application of machine learning to the field of document informa...
Text data mining is the process of extracting and analyzing valuable information from text. A text d...