Developing a Centroid-Based Classification Model for Text Classification

Developing a Centroid-Based Classification Model for Text Classification

In libraries, books are classified into some categories according to their topics in order to be found easily. However, due to the great expansion of Internet, there are enormous number of texts online and classifying them by hand is not possible. So, we need text classification algorithms. In literature, there are many types of text classification algorithms but they do not work well in skewed datasets. Skewed datasets are the datasets that have huge difference between number of documents of its classes. In this research, I proposed a new method called Gravitational Class Feature Classifier that solves skewed data problem.

Project Poster: 

Project Members: 

Batuhan Tuna

Project Advisor: 

Tunga Güngör

Project Status: 

Project Year: 

2017
  • Spring

Bize Ulaşın

Bilgisayar Mühendisliği Bölümü, Boğaziçi Üniversitesi,
34342 Bebek, İstanbul, Türkiye

  • Telefon: +90 212 359 45 23/24
  • Faks: +90 212 2872461
 

Bizi takip edin

Sosyal Medya hesaplarımızı izleyerek bölümdeki gelişmeleri takip edebilirsiniz