首页> 外文会议>Joint International Conference on Artificial Neural Networks and Neural Information Processing - ICANN/ICONIP 2003 Jun 26-29, 2003 Istanbul, Turkey >Integrating Supervised and Unsupervised Learning in Self Organizing Maps for Gene Expression Data Analysis
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Integrating Supervised and Unsupervised Learning in Self Organizing Maps for Gene Expression Data Analysis

机译:在自组织图中整合有监督和无监督学习以进行基因表达数据分析

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Recently, Self Organizing Maps have been a popular approach to analyze gene expression data. Our paper presents an improved SOM-based algorithm called Supervised Network Self Organizing Map (sNet-SOM), which overcomes the main drawbacks of existing techniques by adaptively determining the number of clusters with a dynamic extension process and integrating unsupervised and supervised learning in an effort to make use of prior knowledge on data. The process is driven by an inhomogeneous measure that balances unsupervised/supervised learning and model complexity criteria. Multiple models are dynamically constructed by the algorithm, each corresponding to an unsupervised/supervised balance, model selection criteria being used to select the optimum one. The design allows us to effectively utilize multiple functional class labeling.
机译:最近,自组织图已经成为分析基因表达数据的流行方法。我们的论文提出了一种改进的基于SOM的算法,称为监督网络自组织映射(sNet-SOM),该方法通过动态确定扩展过程中的簇数并通过整合无监督和监督学习来克服现有技术的主要缺点利用数据的先验知识。该过程是由非均质性措施驱动的,该非均质性指标可平衡非监督/监督学习和模型复杂性标准。该算法可动态构建多个模型,每个模型对应于一个无监督/有监督的余额,模型选择标准用于选择最佳模型。该设计使我们可以有效地利用多个功能类别标签。

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