سال انتشار: ۱۳۸۵

محل انتشار: دوازدهمین کنفرانس سالانه انجمن کامپیوتر ایران

تعداد صفحات: ۶

نویسنده(ها):

Aavani – Mathematical Sciences Dept., Sharif Univ. Tech., Tehran, Iran، Sepanta Robotics & AI Research Foundation, Tehran, Iran
Farjudian – Mathematical Sciences Dept., Sharif Univ. Tech., Tehran, Iran
almani-Jelodar – Sepanta Robotics & AI Research Foundation, Tehran, Iran
Andalib – Sepanta Robotics & AI Research Foundation, Tehran, Iran

چکیده:

The assignment of natural language texts to two or more predefined categories based on their contents, is an important component in many information organization and management tasks. This paper presents an information theoretic approach for text classification problem that we call it ITTC. Here, we prove that ITTC is theoretically equivalent to Bayesian classifier. However, when classification task is performed over dynamic or noisy data, or when the training data do not represent all probable cases, ITTC outperforms Bayesian classifier. We also show that the complexity of ITTC over test set grows linearly by the size of input data .We use some news groups, to evaluate the superior performance of our approach.