Dual Latent State Learning: Exploiting Regional Network Similarities for QoS Prediction
- URL: http://arxiv.org/abs/2310.05988v2
- Date: Wed, 3 Jul 2024 17:42:25 GMT
- Title: Dual Latent State Learning: Exploiting Regional Network Similarities for QoS Prediction
- Authors: Ziliang Wang, Xiaohong Zhang, Kechi Zhang, Ze Shi Li, Meng Yan,
- Abstract summary: We introduce the regional-based dual latent state learning network(R2SL), a novel deep learning framework.
R2SL captures the nuances of regional network behavior by deriving two distinct regional network latent states.
Our R2SL approach ushers in an innovative avenue for precise predictions by fully harnessing the regional network similarities inherent in objects.
- Score: 5.090646311505991
- License: http://creativecommons.org/publicdomain/zero/1.0/
- Abstract: Individual objects, whether users or services, within a specific region often exhibit similar network states due to their shared origin from the same city or autonomous system (AS). Despite this regional network similarity, many existing techniques overlook its potential, resulting in subpar performance arising from challenges such as data sparsity and label imbalance. In this paper, we introduce the regional-based dual latent state learning network(R2SL), a novel deep learning framework designed to overcome the pitfalls of traditional individual object-based prediction techniques in Quality of Service (QoS) prediction. Unlike its predecessors, R2SL captures the nuances of regional network behavior by deriving two distinct regional network latent states: the city-network latent state and the AS-network latent state. These states are constructed utilizing aggregated data from common regions rather than individual object data. Furthermore, R2SL adopts an enhanced Huber loss function that adjusts its linear loss component, providing a remedy for prevalent label imbalance issues. To cap off the prediction process, a multi-scale perception network is leveraged to interpret the integrated feature map, a fusion of regional network latent features and other pertinent information, ultimately accomplishing the QoS prediction. Through rigorous testing on real-world QoS datasets, R2SL demonstrates superior performance compared to prevailing state-of-the-art methods. Our R2SL approach ushers in an innovative avenue for precise QoS predictions by fully harnessing the regional network similarities inherent in objects.
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