Dynamic QoS Prediction via a Non-Negative Tensor Snowflake Factorization
Abstract
Dynamic quality of service (QoS) data exhibit rich temporal patterns in user-service interactions, which are crucial for a comprehensive understanding of user behavior and service conditions in Web service. As the number of users and services increases, there is a large amount of unobserved QoS data, which significantly affects users'choice of services. To predict unobserved QoS data, we propose a Non-negative Snowflake Factorization of tensors model. This method designs a snowflake core tensor to enhance the model's learning capability. Additionally, it employs a single latent factor-based, nonnegative multiplication update on tensor (SLF-NMUT) for parameter learning. Empirical results demonstrate that the proposed model more accurately learns dynamic user-service interaction patterns, thereby yielding improved predictions for missing QoS data.
Cite
@article{arxiv.2504.18588,
title = {Dynamic QoS Prediction via a Non-Negative Tensor Snowflake Factorization},
author = {YongHui Xia and Lan Wang and Hao Wu},
journal= {arXiv preprint arXiv:2504.18588},
year = {2025}
}