Recent years have witnessed the increasing popularity of mobile devices (such as iphone) due to the convenience that it brings to human lives. On one hand, rich user profiling and behavior data (including per-app level, app-interaction level and system-interaction level) from heterogeneous information sources make it possible to provide much better services (such as recommendation, advertisement targeting) to customers, which further drives revenue from understanding users' behaviors and improving user' engagement. In order to delight the customers, intelligent personal assistants (such as Amazon Alexa, Google Home and Google Now) are highly desirable to provide real-time audio, video and image recognition, natural language understanding, comfortable user interaction interface, satisfactory recommendation and effective advertisement targeting. This paper presents the research efforts we have conducted on mobile devices which aim to provide much smarter and more convenient services by leveraging statistics and big data science, machine learning and deep learning, user modeling and marketing techniques to bring in significant user growth and user engagement and satisfactions (and happiness) on mobile devices. The developed new features are built at either cloud side or device side, harmonically working together to enhance the current service with the purpose of increasing users' happiness. We illustrate how we design these new features from system and algorithm perspective using different case studies, through which one can easily understand how science driven innovations help to provide much better service in technology and bring more revenue liftup in business. In the meantime, these research efforts have clear scientific contributions and published in top venues, which are playing more and more important roles for mobile AI products.
翻译:近年来,移动设备(如iphone)由于方便人类生活而越来越受欢迎。一方面,来自不同信息来源的丰富的用户特征描述和行为数据(包括每个应用程序级别、应用程序互动级别和系统互动级别)使得能够向客户提供更好的服务(例如建议、广告目标),这进一步推动了了解用户行为和提高用户参与程度的收入。为了给客户带来乐趣,智能个人助理(如亚历山大、谷歌家园和谷歌现在)非常希望提供实时的音频、视频和图像识别、自然语言理解、舒适的用户互动界面、令人满意的建议和有效的广告选择。本文介绍了我们在移动设备上开展的研究工作,目的是通过利用统计数据和大数据科学、机器学习和深层学习、用户建模和营销技术,提供更聪明和更便利的服务,从而带来巨大的用户增长,用户参与和满意度(和快乐)移动设备。开发的新功能建在云面或装置方面,相互协调,以加强当前服务,同时提高用户的移动互动互动作用和有效广告选择。本文介绍了我们如何从一个更清楚的科学创新的角度设计这些我们如何设计出更清晰的系统,从一个更清楚的模型,从而提供更清楚的科学研究。我们如何从一个更能提供更清楚的系统提供更清晰的收益。