With the research directions described in this thesis, we seek to address the critical challenges in designing recommender systems that can understand the dynamics of continuous-time event sequences. We follow a ground-up approach, i.e., first, we address the problems that may arise due to the poor quality of CTES data being fed into a recommender system. Later, we handle the task of designing accurate recommender systems. To improve the quality of the CTES data, we address a fundamental problem of overcoming missing events in temporal sequences. Moreover, to provide accurate sequence modeling frameworks, we design solutions for points-of-interest recommendation, i.e., models that can handle spatial mobility data of users to various POI check-ins and recommend candidate locations for the next check-in. Lastly, we highlight that the capabilities of the proposed models can have applications beyond recommender systems, and we extend their abilities to design solutions for large-scale CTES retrieval and human activity prediction. A significant part of this thesis uses the idea of modeling the underlying distribution of CTES via neural marked temporal point processes (MTPP). Traditional MTPP models are stochastic processes that utilize a fixed formulation to capture the generative mechanism of a sequence of discrete events localized in continuous time. In contrast, neural MTPP combine the underlying ideas from the point process literature with modern deep learning architectures. The ability of deep-learning models as accurate function approximators has led to a significant gain in the predictive prowess of neural MTPP models. In this thesis, we utilize and present several neural network-based enhancements for the current MTPP frameworks for the aforementioned real-world applications.
翻译:以本论文描述的研究方向,我们力求解决设计能够理解连续事件序列动态的推荐系统的关键挑战。我们采用自下而上的方法,即:首先,我们处理由于将CTES数据输入推荐系统的质量差而可能产生的问题。随后,我们处理设计准确推荐系统的任务。为了提高CTES数据的质量,我们处理在时间序列中克服缺失事件的基本问题。此外,为了提供准确的排序模型框架,我们设计了能够理解连续事件序列序列结构建议的解决办法,即能够处理用户空间移动数据到各种POI检查中的模型,并为下一次检查中推荐候选地点。最后,我们强调拟议模型的能力可以超越推荐系统,我们将其能力扩大到设计大规模CTES检索和人类活动预测的解决方案。此外,为了提供精确序列模型,我们通过有线记时间点的当前重要文献应用来模拟CTES的深层分布。传统MT-网络的模型,在模型中,将模型的固定运行能力模型的模型化后,正在利用一个不断的模型系统化的模型模型模型,将一个不断的系统化的模型的模型系统化过程。