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Success prediction of android applications in a novel repository using neural networks

机译:使用神经网络的新型存储库中Android应用的成功预测

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摘要

Nowadays, Android applications play a major role in software industry. Therefore, having a system that can help companies predict the success probability of such applications would be useful. Thus far, numerous research works have been conducted to predict the success probability of desktop applications using a variety of machine learning techniques. However, since features of desktop programs are different from those of mobile applications, they are not applicable to mobile applications. To our knowledge, there has not been a repository or even a method to predict the success probability of Android applications so far. In this research, we introduce a repository composed of 100 successful and 100 unsuccessful apps of Android operating system in Google PlayStore~(TM)including 34 features per application. Then, we use the repository to a neural network and other classification algorithms to predict the success probability. Finally, we compare the proposed method with the previous approaches based on the accuracy criterion. Experimental results show that the best accuracy which we achieved is 99.99%, which obtained when we used MLP and PCA, while the best accuracy achieved by the previous work in desktop platforms was 96%. However, the time complexity of the proposed approach is higher than previous methods, since the time complexities of NPR and MLP are O ( n 3 documentclass[12pt]{minimal} usepackage{amsmath} usepackage{wasysym} usepackage{amsfonts} usepackage{amssymb} usepackage{amsbsy} usepackage{mathrsfs} usepackage{upgreek} setlength{oddsidemargin}{-69pt} egin{document}$$( n^3$$end{document} ) and O ( n p h k o i documentclass[12pt]{minimal} usepackage{amsmath} usepackage{wasysym} usepackage{amsfonts} usepackage{amssymb} usepackage{amsbsy} usepackage{mathrsfs} usepackage{upgreek} setlength{oddsidemargin}{-69pt} egin{document}$$( nph^koi$$end{document} ), respectively.
机译:如今,Android应用程序在软件行业中发挥着重要作用。因此,拥有一个可以帮助公司预测此类应用程序的成功概率的系统将是有用的。到目前为止,已经进行了许多研究作品,以预测使用各种机器学习技术的桌面应用的成功概率。但是,由于桌面程序的功能与移动应用程序的特征不同,因此它们不适用于移动应用程序。据我们所知,到目前为止还没有获得存储库甚至是预测Android应用程序的成功概率的方法。在这项研究中,我们介绍了由Google Playstore〜(TM)中的100个成功和100个不成功的应用程序组成的存储库,包括每个应用程序的34个功能。然后,我们将存储库与神经网络和其他分类算法一起使用以预测成功概率。最后,我们将提出的方法与先前的方法基于准确性标准进行比较。实验结果表明,我们实现的最佳准确性为99.99%,当我们使用MLP和PCA时获得,而桌面平台上以前工作的最佳准确性为96%。但是,所提出的方法的时间复杂性高于先前的方法,因为NPR和MLP的时间复杂性是O(n 3 documentClass [12pt] {minimal} usepackage {ammath} usepackage {isysym} usepackage {amsfonts } usepackage {amssymb} usepackage {amsbsy} usepackage {mathrsfs} usepackage {supmeek} setLength { oddsideDemargin} { - 69pt} begin {document} $$(n ^ 3 $$ end {document})和o(nphkoi documentClass [12pt] {minimal} usepackage {ammath} usepackage {isysym} usepackage {amsfonts} usepackage {amssys} usepackage {amsbsy} usepackage {mathrsfs} usepackage {supmeek} setLength { ODDSIDEMARGIN} { - 69pt}分别开始{document} $$(NPH ^ KOI $$$ end {document})。

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