SVM-based Analysis for Predicting Success Rate of Interest Packets in Information Centric Networks

Dutta, Nitul and Tanwar, Sudeep and Patel, Shobhit K. and Ghinea, Gheorghita (2022) SVM-based Analysis for Predicting Success Rate of Interest Packets in Information Centric Networks. Applied Artificial Intelligence, 36 (1). ISSN 0883-9514

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Abstract

A consumer in Information Centric Network (ICN) generates an Interest packet by specifying the name of the required content. As the network emphasizes on content retrieval without much bothering about who serves it (a cache location or actual producer), every Content Router (CR) either provides the requested content back to the requester (if exists in its cache) or forwards the Interest packet to the nearest CR. While forwarding an Interest packet, the ICN routing by default does not provide any mechanism to predict the probable location of the content searched. However, having a predictive model before forwarding may significantly improve content retrieval performance. In this paper, a machine learning (ML) algorithm, particularly a Support Vector Machine (SVM) is used to forecast the success of the Interest packet. A CR can then send an Interest packet in the outgoing interface which is forecasted successful. The objective is to maximize the success rate which in turn minimizes content search time and maximizes throughput. The dataset used in is generated from a simulation topology designed in ndnSim comprising 10 K data points having 10 features. The linear, RBF and the polynomial kernel (with degree 3) are used to analyze the dataset. The polynomial kernel shows the best behavior with 98% accuracy. A comparative retrieval time with and without ML demonstrates around 10% improvement with SVM enable forwarding compared to normal ICN forwarding.

Item Type: Article
Subjects: GO STM Archive > Computer Science
Depositing User: Unnamed user with email support@gostmarchive.com
Date Deposited: 14 Jun 2023 08:13
Last Modified: 07 Sep 2024 10:26
URI: http://journal.openarchivescholar.com/id/eprint/1121

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