移动应用功能的众包探索:以Fort McMurray野火为例

Maleknaz Nayebi, Mahshid Marbouti, Rache Quapp, F. Maurer, G. Ruhe
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引用次数: 29

摘要

移动设备的普及不仅使应用程序的使用量空前增长,而且使它们满足人们需求的能力也空前增长。智能手机在紧急情况下发挥着更大的作用,因为它们可能突然成为主人仅有的财产和资源之一。2016年加拿大麦克默里堡的野火激发了我们的兴趣,通过分析社交媒体信息来研究现有应用程序的功能。我们研究了一种方法来推荐对紧急应用程序有用的功能。我们提出的名为MAPFEAT的方法结合了各种机器学习技术,结合众包来分析推文,并指导应用商店中的扩展搜索,根据社交媒体中所述的需求找到紧急应用中目前缺失的功能。MAPFEAT通过对麦克默里堡野火的真实案例研究进行评估,我们分析了2016年5月2日至5月7日期间记录的69,680条独立推文。我们发现(i)现有的野火应用程序涵盖了28个功能范围,并不是所有的功能都被认为是有用的或必要的,(ii)推文中阐述的大量需求可以映射到非紧急相关应用程序中现有的功能,以及(iii) MAPFEAT建议的功能集更好地符合公众表达的需求。野火应用程序中只有6个功能进入了MAPFEAT研究的前40个众包功能之列,其中最重要的一个仅排在第13位。通过使用MAPFEAT,我们主动了解受害者的需求,并向受影响的人建议移动软件支持。MAPFEAT超越了当前应用程序在同一领域的功能,并使用各种众包数据提取功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Crowdsourced Exploration of Mobile App Features: A Case Study of the Fort McMurray Wildfire
The ubiquity of mobile devices has led to unprecedented growth in not only the usage of apps, but also their capacity to meet people's needs. Smart phones take on a heightened role in emergency situations, as they may suddenly be among their owner's only possessions and resources. The 2016 wildfire in Fort McMurray, Canada, intrigued us to study the functionality of the existing apps by analyzing social media information. We investigated a method to suggest features that are useful for emergency apps. Our proposed method called MAPFEAT, combines various machine learning techniques to analyze tweets in conjunction with crowdsourcing and guides an extended search in app stores to find currently missing features in emergency apps based on the needs stated in social media. MAPFEAT is evaluated by a real-world case study of the Fort McMurray wildfire, where we analyzed 69,680 unique tweets recorded over a period from May 2nd to May 7th, 2016. We found that (i) existing wildfire apps covered a range of 28 features with not all of them being considered helpful or essential, (ii) a large range of needs articulated in tweets can be mapped to features existing in non-emergency related apps, and (iii) MAPFEAT's suggested feature set is better aligned with the needs expressed by general public. Only six of the features existing in wildfire apps is among top 40 crowdsourced features explored by MAPFEAT, with the most important one just ranked 13th. By using MAPFEAT, we proactively understand victims' needs and suggest mobile software support to the people impacted. MAPFEAT looks beyond the current functionality of apps in the same domain and extracts features using variety of crowdsourced data.
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