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A hybrid ensemble for classification in multiclass datasets: An application to oilseed disease dataset

机译:用于多种多数数据集中分类的混合合奏:对油籽疾病数据集的应用

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摘要

The paper presents a new hybrid ensemble approach consisting of a combination of machine learning algorithms, a feature ranking method and a supervised instance filter. Its aim is to improve the performance results of machine learning algorithms for multiclass classification problems. The performance of new hybrid ensemble approach is tested for its effectiveness over four standard agriculture multiclass datasets. It performs better on all these datasets. It is applied on multiclass oilseed disease dataset. It is observed that ensemble-Vote performs better than Logistic Regression and Naive Bayes algorithms. The performance results of hybrid ensemble are compared with ensemble-Vote. The performance results prove that the new hybrid ensemble approach outperforms ensemble-Vote with improved oilseed disease classification accuracy up to 94.73%. (c) 2016 Elsevier B.V. All rights reserved.
机译:本文提出了一种新的混合集合方法,包括机器学习算法的组合,特征排序方法和监督实例过滤器。 其目的是提高机器学习算法的性能结果,以了解多款分类问题。 新的混合集合方法的性能得到了四个标准农业多牌数据集的有效性。 它在所有这些数据集中执行更好。 它适用于多碳油脂疾病数据集。 据观察,Ensemble-eNemble-eNemble-Pote比Logistic回归和幼稚贝叶斯算法表现更好。 将混合合奏的性能结果与集合投票进行比较。 性能结果证明,新的混合集合方法优于整体投票,提高油籽疾病分类准确性高达94.73%。 (c)2016年Elsevier B.v.保留所有权利。

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