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Domination Dependency Analysis of Sales Marketing Based on Multi-label Classification Using Label Ordering and Cycle Chain Classification

机译:基于标签排序和循环链分类的多标签分类对销售营销的支配依赖性分析

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Multi-label classification (MLC) is a technique that is used to solve conditional problems where the decisions are a set of labels. Classification is the learning task of using historical examples to make a model of conditions, so as to make decisions of unseen examples. To improve decisions in MLC, we can use the advantage of domination analysis or dependency relations between the classes by using an enhanced Bayesian chain classifier (BCC). We introduce an approach for chaining classifier primary order by its individual label accuracy priority (LPC-CC). Our method considers the dependencies among labels based on label accuracy priority ordering. Thus, binary relevance (BR) theory is used for label sequencing priority, and a cycle classifier chain using naive Bayes is used for finding domination. The model has been tested on two well-known benchmark datasets named Yeast and Emotions, and on a collection of car sale records from a Thailand automotive company.
机译:多标签分类(MLC)是一种用于解决条件问题的技术,其中决策是一组标签。分类是使用历史实例来建立条件模型,以便对看不见的实例进行决策的学习任务。为了改善MLC中的决策,我们可以通过使用增强的贝叶斯链分类器(BCC)来利用优势分析或类之间的依赖关系的优势。我们介绍了一种通过分类器主订单的各个标签准确度优先级(LPC-CC)进行链接的方法。我们的方法根据标签精度优先级顺序考虑标签之间的依赖性。因此,将二进制相关性(BR)理论用于标记排序优先级,并将使用朴素贝叶斯的循环分类器链用于发现优势。该模型已在名为Yeast和Emotions的两个著名基准数据集以及泰国汽车公司的汽车销售记录集上进行了测试。

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