基于机器学习的期刊最优分类方法

S. Iqbal, Muhammad Shaheen, Fazl-e-Basit
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引用次数: 4

摘要

我们提出了一个假设和现实的检查和探索一些期刊绩效的文献计量指标。本文重点研究的指标有特征因子指标、影响因子指标、受众因子指标和文章影响力权重指标。我们的重点是寻找缺失的参数和一些在以前的算法中没有进行的限制。寻找影响因子并提出新的期刊绩效因子,对期刊进行最佳接受度排序。为了分类和验证目的,我们使用机器学习分类技术(贝叶斯分类)。它是机器学习分类中最常用的学习算法之一。使用贝叶斯分类,我们根据我们提出的方法对几种期刊进行分类,并将结果与之前的方法进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A machine learning based method for optimal journal classification
We present a hypothetical and realistic examination and exploration of a number of bibliometric indicators of journal performance. In this paper, the indicators we have focused upon are Eigenfactor indicator, Impact factor, audience factor and Article influence weight indicator. Our focus is to find the missing parameters and some limitations that have not been conducted in previous algorithms. To find the influential parameters and to propose a new journal performance factor, that ranked a journal in best accepted manner. For classification and verification purpose we use a machine learning classification technique (Bayesian classification). It is one of the most common learning algorithms in machine learning classification. Using bayesain classification, we classify several journals according to our proposed methods and compare results with the previous methods.
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