Content Popularity Estimation in Edge-Caching Networks from Bayesian Inference Perspective

Sajad Mehrizi, Anestis Tsakmalis, S. Chatzinotas, B. Ottersten
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引用次数: 9

Abstract

The efficiency of cache-placement algorithms in edge-caching networks depends on the accuracy of the content request’s statistical model and the estimation method based on the postulated model. This paper studies these two important issues. First, we introduce a new model for content requests in stationary environments. The common approach to model the requests is through the Poisson stochastic process. However, the Poisson stochastic process is not a very flexible model since it cannot capture the correlations between contents. To resolve this limitation, we instead introduce the Poisson Factor Analysis (PFA) model for this purpose. In PFA, the correlations are modeled through additional random variables embedded in a low dimensional latent space. The correlations provide rich information about the underlying statistical properties of content requests which can be used for advanced cache-placement algorithms. Secondly, to learn the model, we use Bayesian Learning, an efficient framework which does not overfit. This is crucial in edge-caching systems since only partial view of the entire request set is available at the local cache and the learning method should be able to estimate the content popularities without overfitting. In the simulation results, we compare the performance of our approach with the existing popularity estimation method.
基于贝叶斯推理的边缘缓存网络内容流行度估计
边缘缓存网络中缓存放置算法的效率取决于内容请求统计模型和基于假设模型的估计方法的准确性。本文对这两个重要问题进行了研究。首先,我们为静态环境中的内容请求引入了一个新的模型。对请求建模的常用方法是通过泊松随机过程。然而,泊松随机过程不是一个非常灵活的模型,因为它不能捕捉内容之间的相关性。为了解决这一限制,我们为此引入了泊松因子分析(PFA)模型。在PFA中,相关性通过嵌入在低维潜在空间中的附加随机变量来建模。相关性提供了关于内容请求的底层统计属性的丰富信息,这些信息可用于高级缓存放置算法。其次,我们使用贝叶斯学习来学习模型,这是一种不会过拟合的有效框架。这在边缘缓存系统中是至关重要的,因为在本地缓存中只有整个请求集的部分视图可用,并且学习方法应该能够在不过度拟合的情况下估计内容流行度。在仿真结果中,我们将该方法的性能与现有的流行度估计方法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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