Application of Developers’ and Users’ Dependent Factors in App Store Optimization

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Abstract

This paper presents an application of developers’ and users’ dependent factors in the app store optimization. The application is based on two main fields: developers’ dependent factors and users’ dependent factors. Developers’ dependent factors are identified as: developer name, app name, subtitle, genre, short description, long description, content rating, system requirements, page url, last update, what's new, and price. Users’ dependent factors are identified as: download volume, average rating, rating volume, and reviews. The proposed application in its final form is modeled after mining sample data from two leading app stores: Google Play and Apple App Store. Results from analyzing collected data show that developer dependent elements can be better optimized. Names and descriptions of mobile apps are not fully utilized. In Google Play there is one significant correlation between download volume and number of reviews, whereas in the App Store there is no significant correlation between factors.

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APA

Strzelecki, A. (2020). Application of Developers’ and Users’ Dependent Factors in App Store Optimization. International Journal of Interactive Mobile Technologies, 14(13), 91–106. https://doi.org/10.3991/ijim.v14i13.14143

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