考虑影响因子信息的数据集分割

I. Lebedev
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引用次数: 3

摘要

简介:机器学习方法的应用涉及到数据的收集和处理,这些数据来自离线模式下的记录元素。大多数模型都是在历史数据上训练的,然后用于预测、分类、搜索影响因素或影响以及状态分析。从长期来看,数据值的范围会发生变化,从而影响分类算法的质量,并导致模型需要根据输入数据不断训练或重新调整。目的:开发一种在数据分布随时间变化的动态变化和非平稳环境中提高机器学习算法质量的技术。方法:根据影响目标变量范围的因素信息,对多个数据进行拆分(分割)。结果:在考虑影响数据值范围变化因素的基础上,提出了一种数据分割技术。冲击检测可以根据当前和所谓的情况形成样品。以PowerSupply数据集为例,考虑因素对数值范围的影响,将大量数据划分为子集。外部因素和影响是基于生产规则形式化的。给出了利用隶属函数(指标函数)对各因素进行处理的过程。数据样本被划分为有限个不相交的可测量子集。给出了所选数据集上神经网络损失函数的实验值。给出了各种分类器分类的定性指标(准确率、AUC、F-measure)。实际意义:研究结果可用于开发机器学习方法的分类模型。该方法可以在功能动态变化的条件下提高分类质量。
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Dataset segmentation considering the information about impact factors
Introduction: The application of machine learning methods involves the collection and processing of data which comes from the recording elements in the offline mode. Most models are trained on historical data and then used in forecasting, classification, search for influencing factors or impacts, and state analysis. In the long run, the data value ranges can change, affecting the quality of the classification algorithms and leading to the situation when the models should be constantly trained or readjusted taking into account the input data. Purpose: Development of a technique to improve the quality of machine learning algorithms in a dynamically changing and non-stationary environment where the data distribution can change over time. Methods: Splitting (segmentation) of multiple data based on the information about factors affecting the ranges of target variables. Results: A data segmentation technique has been proposed, based on taking into account the factors which affect the change in the data value ranges. Impact detection makes it possible to form samples based on the current and alleged situations. Using PowerSupply dataset as an example, the mass of data is split into subsets considering the effects of factors on the value ranges. The external factors and impacts are formalized based on production rules. The processing of the factors using the membership function (indicator function) is shown. The data sample is divided into a finite number of non-intersecting measurable subsets. Experimental values of the neural network loss function are shown for the proposed technique on the selected dataset. Qualitative indicators (Accuracy, AUC, F-measure) of the classification for various classifiers are presented. Practical relevance: The results can be used in the development of classification models of machine learning methods. The proposed technique can improve the classification quality in dynamically changing conditions of the functioning.
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来源期刊
Informatsionno-Upravliaiushchie Sistemy
Informatsionno-Upravliaiushchie Sistemy Mathematics-Control and Optimization
CiteScore
1.40
自引率
0.00%
发文量
35
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