Improving the performance of professional blogger's classification

Yousra Asim, B. Raza, Ahmad Kamran Malik, Saima Rathore, A. Bilal
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引用次数: 4

Abstract

Blogging is a useful way for writing online articles and the individuals who are involved in this activity, are called bloggers. A blogger may have many features such as educational background, cultural background, topical interests and can be classified into classes using these features. There can be many factors (affecting features) by which bloggers opt this profession. Classification of professional bloggers and identification of such influential factors is the topic of interest of this paper. We have used Artificial Neural Network for binary classification problem of a bloggers dataset. The Predictive Apriori association rule mining algorithm is used for factor identification. In this paper, results of Artificial Neural Network are compared with the RandomForest algorithm and Nearest-Neighbor algorithm. It is found that Artificial Neural Network outperforms RandomForest (RF) and Nearest Neighbour (IB1) algorithms with the 87% accuracy and 86.9% F-measure respectively. The results of factor identification are compared with the results of Alternate Decision Tree (ADTree) algorithm. It is observed that both ADTree and Predictive Apriori algorithm produced same results for predictive performance measures.
提高专业博客分类的性能
写博客是一种写在线文章的有用方式,参与这一活动的个人被称为博主。一个博主可能有很多特征,比如教育背景、文化背景、话题兴趣,并可以根据这些特征分类。有很多因素(影响功能)会影响博主选择这个职业。专业博客的分类及影响因素的识别是本文研究的主题。利用人工神经网络对博主数据集进行二分类。预测Apriori关联规则挖掘算法用于因子识别。本文将人工神经网络的结果与随机森林算法和最近邻算法进行了比较。研究发现,人工神经网络的准确率分别为87%和86.9%,优于随机森林(RF)和最近邻(IB1)算法。将因子识别的结果与替代决策树(ADTree)算法的结果进行了比较。观察到ADTree和Predictive Apriori算法对预测性能度量产生相同的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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