基于用户事件的高效行为预测

IF 0.6 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS
Peter Szabó, B. Genge
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引用次数: 0

摘要

2020年,我们见证了机器学习支持用户体验的曙光。现在我们可以预测用户将如何使用应用程序。研究进展超越了推荐,我们已经准备好预测用户事件。只要有人与系统交互,就会分派用户事件。它们可以像鼠标点击菜单项那样简单,也可以更复杂,比如从电子商务网站购买产品。协同过滤(CF)已被证明是一种很好的预测事件的方法。因为每个用户都可以生成许多事件,这不可避免地会导致数据集中出现大量事件。不幸的是,CF的运算时间随着数据点的增加呈指数增长。本文提出了一种在不影响预测精度的情况下减少数据集大小的通用方法。我们的解决方案在大约7分钟(434.08秒)内将包含超过2000万用户事件(20,692,840行)的数据集转换为稀疏矩阵。我们已经使用该矩阵来训练神经网络来准确预测用户事件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Behavior Prediction Based on User Events
—In 2020 we have witnessed the dawn of machine learning enabled user experience. Now we can predict how users will use an application. Research progressed beyond recommendations, and we are ready to predict user events. Whenever a human interacts with a system, user events are dispatched. They can be as simple as a mouse click on a menu item or more complex, such as buying a product from an eCommerce site. Collaborative filtering (CF) has proven to be an excellent approach to predict events. Because each user can generate many events, this inevitably leads to a vast number of events in a dataset. Unfortunately, the operation time of CF increases exponentially with the increase of data-points. This paper presents a generalized approach to reduce the dataset’s size without compromising prediction accuracy. Our solution transformed a dataset containing over 20 million user events (20,692,840 rows) into a sparse matrix in about 7 minutes (434.08 s). We have used this matrix to train a neural network to accurately predict user events.
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来源期刊
Journal of Communications Software and Systems
Journal of Communications Software and Systems Engineering-Electrical and Electronic Engineering
CiteScore
2.00
自引率
14.30%
发文量
28
审稿时长
8 weeks
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