Mining Device-Specific Apps Usage Patterns from Large-Scale Android Users
نویسندگان
چکیده
When smartphones, applications (a.k.a, apps), and app stores have been widely adopted by the billions, an interesting debate emerges: whether and to what extent do device models influence the behaviors of their users? The answer to this question is critical to almost every stakeholder in the smartphone app ecosystem, including app store operators, developers, endusers, and network providers. To approach this question, we collect a longitudinal data set of app usage through a leading Android app store in China, called Wandoujia. The data set covers the detailed behavioral profiles of 0.7 million (761,262) unique users who use 500 popular types of Android devices and about 0.2 million (228,144) apps, including their app management activities, daily network access time, and network traffic of apps. We present a comprehensive study on investigating how the choices of device models affect user behaviors such as the adoption of app stores, app selection and abandonment, data plan usage, online time length, the tendency to use paid/free apps, and the preferences to choosing competing apps. Some significant correlations between device models and app usage are derived, leading to important findings on the various user behaviors. For example, users owning different device models have a substantial diversity of selecting competing apps, and users owning lower-end devices spend more money to purchase apps and spend more time under cellular network. ACM Classification
منابع مشابه
Understanding Diverse Smarpthone Usage Patterns from Large-Scale Appstore-Service Profiles
The prevalence of smart mobile devices has promoted the popularity of mobile applications (a.k.a. apps). Supporting mobility has become a promising trend in software engineering research. This article presents an empirical study of behavioral service profiles collected from millions of users whose devices are deployed with Wandoujia, a leading Android app store service in China. The dataset of ...
متن کاملUnderstanding Diverse Usage Patterns from Large-Scale Appstore-Service Profiles
Abstract—The prevalence of smart mobile devices has promoted the popularity of mobile applications (a.k.a. apps). Supporting mobility has become a promising trend in software engineering research. This article presents an empirical study of behavioral service profiles collected from millions of users whose devices are deployed with Wandoujia, a leading Android app-store service in China. The da...
متن کاملA Usage-Pattern Perspective for Privacy Ranking of Android Apps
Android applies a permission-based model to regulate applications (apps). When users grant apps permissions to access their sensitive data, they cannot control how the apps utilize the data. Existing taint-based techniques only detect the presence of exfiltration flow for the sensitive data, but cannot detect how much sensitive data are leaked. Users need more intuitive measures to inform them ...
متن کاملریسک سنج: ابزاری برای سنجش دقیق میزان ریسک امنیتی برنامهها در دستگاههای همراه
Nowadays smartphones and tablets are widely used due to their various capabilities and features for end users. In these devices, accessing a wide range of services and sensitive information including private personal data, contact list, geolocation, sending and receiving messages, accessing social networks and etc. are provided via numerous application programs. These types of accessibilities, ...
متن کاملUnderstanding Mobile App Usage Patterns Using In-App Advertisements
Recent years have seen an explosive growth in the number of mobile devices such as smart phones and tablets. This has resulted in a growing need of the operators to understand the usage patterns of the mobile apps used on these devices. Previous studies in this area have relied on volunteers using instrumented devices or using fields in the HTTP traffic such as User-Agent to identify the apps i...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
- CoRR
دوره abs/1707.09252 شماره
صفحات -
تاریخ انتشار 2017