A combined approach of base and meta learners for hybrid system

Abdul Ahad ABRO, Waqas Ahmed SIDDIQUE, Mir Sajjad Hussain TALPUR, Awais Khan JUMANİ, Erkan YAŞAR
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引用次数: 2

Abstract

The ensemble learning method is considered a meaningful yet challenging task. To enhance the performance of binary classification and predictive analysis, this paper proposes an effective ensemble learning approach by applying multiple models to produce efficient and effective outcomes. In these experimental studies, three base learners, J48, Multilayer Perceptron (MP), and Support Vector Machine (SVM) are being utilized. Moreover, two meta-learners, Bagging and Rotation Forest are being used in this analysis. Firstly, to produce effective results and capture productive data, the base learner, the J48 decision tree is aggregated with the rotation forest. Secondly, machine learning and ensemble learning classification algorithms along with the five UCI Datasets are being applied to progress the robustness of the system. Whereas, the recommended mechanism is evaluated by implementing five performance standards concerning the accuracy, AUC (Area Under Curve), precision, recall and F-measure values. In this regard, extensive strategies and various approaches were being studied and applied to obtain improved results from the current literature; however, they were insufficient to provide successful results. We present experimental results which demonstrate the efficiency of our approach to well-known competitive approaches. This method can be applied to image identification and machine learning problems, such as binary classification.
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混合系统基础学习器与元学习器的结合方法
集成学习方法被认为是一项有意义但具有挑战性的任务。为了提高二元分类和预测分析的性能,本文提出了一种有效的集成学习方法,通过应用多个模型来产生高效和有效的结果。在这些实验研究中,使用了三种基本学习器,J48,多层感知器(MP)和支持向量机(SVM)。此外,在此分析中还使用了Bagging和Rotation Forest两个元学习器。首先,为了产生有效的结果并捕获生产数据,将基础学习器、J48决策树与旋转森林进行聚合。其次,应用机器学习和集成学习分类算法以及五个UCI数据集来提高系统的鲁棒性。然而,推荐的机制通过实施五个性能标准来评估,包括准确性、曲线下面积(AUC)、精密度、召回率和f测量值。在这方面,正在研究和应用广泛的战略和各种方法,以便从目前的文献中获得更好的结果;然而,它们不足以提供成功的结果。我们给出的实验结果表明,我们的方法比已知的竞争方法更有效。这种方法可以应用于图像识别和机器学习问题,如二值分类。
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