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A Probabilistic Model-Free Approach in Learning Multivariate Noisy Linear Systems

机译:学习多元噪声线性系统的一种无概率模型方法

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The paper provides a series of results concerning the learning from data a linear regressive model in a multivariate framework. The parameter estimates of the regressive model are determined using the maximum likelihood principle and the adaptive learning algorithms are derived using the gradient ascent technique. The predicted output is expressed as the sum of a linear combination of the entries of the input and the random vector that represents the effects of the unobservable factors and noise. In the second section of the paper the mathematical arguments for the estimation scheme based exclusively on a finite size set of observations is provided. The third section of the paper is focused on experimental evaluation of the quality of the resulted learning scheme in order to establish conclusions concerning their accuracy and generalization capacities, the evaluation being performed in terms of metric, probabilistic and informational criterion functions. The final section of the paper contains a series of conclusions and suggestions for further work.
机译:本文提供了一系列有关在多元框架中从数据中学习线性回归模型的结果。使用最大似然原理确定回归模型的参数估计,并使用梯度上升技术导出自适应学习算法。预测输出表示为输入项和随机向量的线性组合之和,该线性向量表示不可观察的因素和噪声的影响。在本文的第二部分中,提供了仅基于有限大小的观测值的估计方案的数学论证。本文的第三部分集中在对结果学习方案质量的实验评估上,以建立有关其准确性和泛化能力的结论,评估是根据度量,概率和信息标准函数进行的。本文的最后一部分包含一系列结论和进一步工作的建议。

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