Link Load Prediction using Support Vector Regression and Optimization
نویسندگان
چکیده
Prediction techniques are an interesting challenge in many areas like weather, banking, and finance, healthcare and so on. They are also becoming a popular subject in networking domain. This topic explores link load prediction of a network using Support Vector Regression and Optimization techniques. Support Vector Regression(SVR) is robust to outliers and can be used to online and adaptive learning.SVR has been used in other problems of networking like
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