Large quantifies of online user activity data, such as weekly web search volumes, which co-evolve with the mutual influence of several queries and locations, serve as an important social sensor. It is an important task to accurately forecast the future activity by discovering latent interactions from such data, i.e., the ecosystems between each query and the flow of influences between each area. However, this is a difficult problem in terms of data quantity and complex patterns covering the dynamics. To tackle the problem, we propose FluxCube, which is an effective mining method that forecasts large collections of co-evolving online user activity and provides good interpretability. Our model is the expansion of a combination of two mathematical models: a reaction-diffusion system provides a framework for modeling the flow of influences between local area groups and an ecological system models the latent interactions between each query. Also, by leveraging the concept of physics-informed neural networks, FluxCube achieves high interpretability obtained from the parameters and high forecasting performance, together. Extensive experiments on real datasets showed that FluxCube outperforms comparable models in terms of the forecasting accuracy, and each component in FluxCube contributes to the enhanced performance. We then show some case studies that FluxCube can extract useful latent interactions between queries and area groups.
翻译:在线用户活动数据的大规模量化,例如每周网络搜索量,在几个查询和地点的相互影响下,作为一个重要的社会感应器,作为一个重要的社会感应器,通过从这些数据中发现潜在相互作用,即每个查询之间的生态系统和每个区域之间的影响流动,准确预测未来活动是一项重要任务;然而,从数据数量和涵盖动态的复杂模式方面来说,这是一个困难的问题。为了解决这个问题,我们提议FluxCube是一种有效的采矿方法,它预测大量收集的在线用户活动,并提供了良好的解释性。我们的模型是两种数学模型的结合:反应扩散系统提供了一个框架,用以模拟每个查询区域组之间的影响流动,以及每个查询组之间的生态系统模型。此外,通过利用了解物理学的神经网络概念,FluxCube能够从参数和高预报性能中获得很高的解释性。关于真实数据集的广泛实验表明,FluxCube在预测准确性方面有些可比较模型,然后显示“Flublubre”中, Weddifluction 和每个分析组的提高性研究能够显示“Flubrea ” 之间的特性。