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The Research and Application of a Learning Algorithm of Batch Increment and Online Which Bases on Support Vector Regression

机译:批量增量与在线学习算法的研究与应用,基于支持向量回归

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SVM which is based on statistical theory has the advantage of no relying on designer's experience of learning and the prior knowledge. So it is widely used in optimization, decision-making, regression estimates, speech recognition, facial image recognition, and so on. Because there are some kinds of wrong and isolated samples in the training samples in the forecasting model, and the learning process of samples always presents three major characteristics: batch, increment and online, we propose a learning algorithm of batch, increment and online which base on Support Vector Regression (BIO-SVR) which can ensure the accuracy of the predicting model and update dynamically when the samples increase. When being used in industry, our algorithm can analyze and predict the flatness of plate and the result shows us that comparing to the traditional incremental SVM our algorithm model not only improves the accuracy but also has the ability of real-time and online.
机译:基于统计理论的SVM具有无依赖设计师的学习经验和先验知识的优势。因此,它广泛用于优化,决策,回归估计,语音识别,面部图像识别等。因为在预测模型中训练样本中有某种错误和孤立的样本,以及样本的学习过程总是呈现三个主要特征:批量,增量和在线,我们提出了一种批量,增量和在线的学习算法在支持向量回归(BIO-SVR)上,可以确保预测模型的准确性并在样品增加时动态更新。在工业中使用时,我们的算法可以分析和预测板的平整度,结果表明,与传统的增量SVM相比,我们的算法模型不仅提高了准确性,而且具有实时和在线的能力。

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