An empirical study of AI techniques in mobile applications

IF 3.7 2区 计算机科学 Q1 COMPUTER SCIENCE, SOFTWARE ENGINEERING Journal of Systems and Software Pub Date : 2024-10-05 DOI:10.1016/j.jss.2024.112233
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Abstract

The integration of artificial intelligence (AI) into mobile applications has significantly transformed various domains, enhancing user experiences and providing personalized services through advanced machine learning (ML) and deep learning (DL) technologies. AI-driven mobile apps typically refer to applications that leverage ML/DL technologies to perform key tasks such as image recognition and natural language processing. Despite existing research exploring how mobile apps exploit AI techniques, they have the following main limitations: (1) Most existing studies focus on DL-based apps, with limited research on ML-based apps. (2) Existing research typically focuses on investigating the apps and the technologies utilized in the apps, lacking user-level analysis. (3) The number of apps studied is limited, with only 1,000 to 2,000 ML/DL apps identified after filtering. To fill the gap, in this paper, we conducted the most extensive empirical study on AI applications, exploring on-device ML apps, on-device DL apps, and AI service-supported (cloud-based) apps. Our study encompasses 56,682 real-world AI applications, focusing on three crucial perspectives: (1) Application analysis, where we analyze the popularity of AI apps and investigate the update states of AI apps; (2) Framework and model analysis, where we analyze AI framework usage and AI model protection; (3) User analysis, where we examine user privacy protection and user review attitudes. Our study has strong implications for AI app developers, users, and AI R&D. On one hand, our findings highlight the growing trend of AI integration in mobile applications, demonstrating the widespread adoption of various AI frameworks and models. On the other hand, our findings emphasize the need for robust model protection to enhance app security. Additionally, our study highlights the importance of user privacy and presents user attitudes towards the AI technologies utilized in current AI apps. We provide our AI app dataset (currently the most extensive AI app dataset) as an open-source resource for future research on AI technologies utilized in mobile applications.
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移动应用中的人工智能技术实证研究
人工智能(AI)与移动应用的融合极大地改变了各个领域,通过先进的机器学习(ML)和深度学习(DL)技术提升了用户体验并提供了个性化服务。人工智能驱动的移动应用程序通常是指利用 ML/DL 技术执行图像识别和自然语言处理等关键任务的应用程序。尽管现有研究都在探索移动应用程序如何利用人工智能技术,但这些研究存在以下主要局限性:(1)现有研究大多侧重于基于 DL 的应用程序,对基于 ML 的应用程序的研究有限。(2)现有研究通常侧重于调查应用程序和应用程序中使用的技术,缺乏用户层面的分析。(3) 所研究的应用程序数量有限,经过筛选后仅发现 1,000 至 2,000 个 ML/DL 应用程序。为了填补这一空白,我们在本文中对人工智能应用进行了最广泛的实证研究,探讨了设备上的 ML 应用、设备上的 DL 应用以及人工智能服务支持(基于云)的应用。我们的研究涵盖了 56682 个真实世界中的人工智能应用,重点关注三个关键视角:(1)应用分析,我们分析了人工智能应用的流行程度,并调查了人工智能应用的更新状态;(2)框架和模型分析,我们分析了人工智能框架的使用和人工智能模型的保护;(3)用户分析,我们研究了用户隐私保护和用户评论态度。我们的研究对人工智能应用程序开发者、用户和人工智能研发具有重要意义。一方面,我们的研究结果凸显了人工智能在移动应用中的整合趋势,表明了各种人工智能框架和模型的广泛应用。另一方面,我们的研究结果强调,需要对模型进行强有力的保护,以提高应用程序的安全性。此外,我们的研究还强调了用户隐私的重要性,并介绍了用户对当前人工智能应用中使用的人工智能技术的态度。我们提供了人工智能应用程序数据集(目前最广泛的人工智能应用程序数据集),作为未来研究移动应用程序中使用的人工智能技术的开源资源。
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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来源期刊
Journal of Systems and Software
Journal of Systems and Software 工程技术-计算机:理论方法
CiteScore
8.60
自引率
5.70%
发文量
193
审稿时长
16 weeks
期刊介绍: The Journal of Systems and Software publishes papers covering all aspects of software engineering and related hardware-software-systems issues. All articles should include a validation of the idea presented, e.g. through case studies, experiments, or systematic comparisons with other approaches already in practice. Topics of interest include, but are not limited to: • Methods and tools for, and empirical studies on, software requirements, design, architecture, verification and validation, maintenance and evolution • Agile, model-driven, service-oriented, open source and global software development • Approaches for mobile, multiprocessing, real-time, distributed, cloud-based, dependable and virtualized systems • Human factors and management concerns of software development • Data management and big data issues of software systems • Metrics and evaluation, data mining of software development resources • Business and economic aspects of software development processes The journal welcomes state-of-the-art surveys and reports of practical experience for all of these topics.
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