面向用户体验建模与优化的机器学习与人工智能应用行为预测

Christopher Neilson, Price Grigore
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引用次数: 2

摘要

本研究的目的是提供一种利用AIAM技术评估移动应用程序用户体验的技术。由于传统的数据收集技术(如用户访谈和用户推理)效率低下且耗时,AIAM专注于使用人工智能(AI)来评估和增强用户体验。来自移动应用程序的日志可用于收集有关用户活动的信息。在用户浏览和运行移动应用程序的过程中,只使用少量的数据参数,以确保用户的隐私。该方法的目标是在使用移动应用程序时创建尽可能接近用户体验的深度神经网络原型。对于特定目标,我们创建并使用应用程序接口来训练计算模型。参与某个任务的所有用户的点击数据显示在这些投影页面上。因此,用户活动可以映射到系统的连接层和隐藏层。最后,通过对改进设计的实现,在社交应用中验证了所提方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning and AI Application Behaviour Prediction for User Experience Modelling and Optimization
The purpose of this research is to offer a technique for assessing user experience in mobile applications utilizing AIAM technology. Due to ineffective and time-consuming nature of conventional data gathering techniques (such as user interviews and user inference), AIAM concentrates on using Artificial Intelligence (AI) to assess and enhance user experience. Logs from a mobile application may be used to gather information about user activity. Only a few parameters of data are utilized in the process of surfing and running mobile applications to ensure the privacy of users. The method's objective is to create the deep neural network prototype as close as feasible to a user's experience when using a mobile app. For particular objectives, we create and employ application interfaces to train computational models. The click data from all users participating in a certain task is shown on these projected pages. User activity may therefore be mapped in connected and hidden layers of the system. Finally, the social communications application is used to test the efficacy of the suggested method by implementing the improved design.
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