两级分层混合SVM-RVM分类模型

Catarina Silva, B. Ribeiro
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引用次数: 8

摘要

支持向量机(SVM)和相关向量机(RVM)是两种最先进的学习机器,是目前研究的热点。支持向量机具有精度和复杂性优势,但在讨论概率输出或核选择时被RVM超越。我们提出了一种两级分层混合SVM-RVM模型来结合这两种学习机的优点。所提出的模型第一层使用RVM来确定可信度较低的分类示例,第二层使用SVM来学习和分类较难的示例。我们展示了分层方法在文本分类任务上的好处,其中两层方法优于两种学习机器
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Two-Level Hierarchical Hybrid SVM-RVM Classification Model
Support vector machines (SVM) and relevance vector machines (RVM) constitute two state-of-the-art learning machines that are currently focus of cutting-edge research. SVM present accuracy and complexity preponderance, but are surpassed by RVM when probabilistic outputs or kernel selection come to discussion. We propose a two-level hierarchical hybrid SVM-RVM model to combine the best of both learning machines. The proposed model first level uses an RVM to determine the less confident classified examples and the second level then makes use of an SVM to learn and classify the tougher examples. We show the benefits of the hierarchical approach on a text classification task, where the two-levels outperform both learning machines
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