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An Evaluation of Regression Algorithms Performance for the Chemical Process of Naphthalene Sublimation

机译:萘升华化学过程的回归算法评价

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Different regression algorithms are applied for predicting the sublimation rate of naphthalene in various working conditions: time, temperature, trainer rate and shape of the sample. The original Large Margin Nearest Neighbor Regression (LMNNR) algorithm is applied and its performance is compared to other well-established regression algorithms, such as support vector regression, multilayer perceptron neural networks, classical k-nearest neighbor, random forest, and others. The experimental results obtained show that the LMNNR algorithm provides better results than the other regression algorithms.
机译:应用不同的回归算法用于预测各种工作条件下萘的升华速率:时间,温度,培训率和样品的形状。应用原始大型裕度最近的邻回归(LMNNR)算法,其性能与其他良好的回归算法进行比较,例如支持向量回归,多层的Perceptron神经网络,古典k最近邻居,随机林等。获得的实验结果表明,LMNR算法提供比其他回归算法更好的结果。

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