Under the era of technical surge in recent years, the weight of artificial intelligence in people\u27s life is increasing over time. This paper will focus on classification. How to classify efficiently and accurately has become the top priority. In this research, we are trying to use four different algorithms SVM, Naive Bayes, Random Forest, and KNN to classify the text of descriptions. In the experiment, we are going to compare the result of each algorithm by prediction accuracy then summarize the various advantages and disadvantages turns out in each algorithm. The result shows that, the best model we made is Naïve Bayes which can hold for the 55% accuracy in predicting the application number by genre
This paper investigates the problem of text classification. The task of text classification is to as...
Text classification is a process of categorizing a text into the correct label. Text classification ...
In order to gain information from huge amount of text more efficiently and accurately, readers may u...
Text classification is the most vital area in natural language processing in which text data is auto...
Text categorization (also known as text classification) is the task of automatically assigning docum...
Due to rapid increase in volume of data on the Internet every day, it is becoming very difficult to ...
This paper aims to find the boost model which brings the best accuracy in text classification by u...
Text classification is used to classify the document of similar types . Text classification can be a...
Text classification is used to classify the document of similar types . Text classification can be a...
Text mining is drawing enormous attention in this era as there is a huge amount of text data getting...
Classification of data has become an important research area. The process of classifying documents i...
Sentiments are expressions of one’s words in a sentence. Hence understanding the meaning of text in ...
Abstract – The main objective is to propose a text classification based on the features selection an...
In this paper, we address the problem of dealing with a large collection of data and propose a met...
Naïve Bayes, k-nearest neighbors, Adaboost, support vector machines and neural networks are five amo...
This paper investigates the problem of text classification. The task of text classification is to as...
Text classification is a process of categorizing a text into the correct label. Text classification ...
In order to gain information from huge amount of text more efficiently and accurately, readers may u...
Text classification is the most vital area in natural language processing in which text data is auto...
Text categorization (also known as text classification) is the task of automatically assigning docum...
Due to rapid increase in volume of data on the Internet every day, it is becoming very difficult to ...
This paper aims to find the boost model which brings the best accuracy in text classification by u...
Text classification is used to classify the document of similar types . Text classification can be a...
Text classification is used to classify the document of similar types . Text classification can be a...
Text mining is drawing enormous attention in this era as there is a huge amount of text data getting...
Classification of data has become an important research area. The process of classifying documents i...
Sentiments are expressions of one’s words in a sentence. Hence understanding the meaning of text in ...
Abstract – The main objective is to propose a text classification based on the features selection an...
In this paper, we address the problem of dealing with a large collection of data and propose a met...
Naïve Bayes, k-nearest neighbors, Adaboost, support vector machines and neural networks are five amo...
This paper investigates the problem of text classification. The task of text classification is to as...
Text classification is a process of categorizing a text into the correct label. Text classification ...
In order to gain information from huge amount of text more efficiently and accurately, readers may u...