基因表达数据分析的Agent技术:文献综述

K. Santhosh, S. Ajitha
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引用次数: 0

摘要

基因表达数据的分析是目前较为长期的研究领域。基因表达数据的分析需要大量的工作和大量的算法。使用代理计算,我们处理复杂的系统,这些系统发现了许多以不同方式开发数据挖掘系统的机会。因此,为了创建预测模型,需要智能和自主的软件代理,这些代理可以从原始信息的大型数据集中获取有用的信息。可以从这些数据集创建预测分析模型,这些模型可以进一步用于安全,未来预测等方面的各种应用。本文从智能体的特性、适应性、可靠性和机器人技术等方面阐述了多智能体系统在基因表达数据分析中的总体功能。基因表达数据分析是一个新兴的研究领域。该领域已有大量的方法和算法,但agent技术在基因表达数据领域的应用尚处于起步阶段。因此,本文的目的是将代理技术整合到基因表达数据分析中。
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Agent Technology for Data Analytics of Gene Expression Data: A Literature Review
Analytics of gene expression data is the prolonged research area of present situation. Analysis of gene expression data requires enormous amount of work and huge set of algorithms. Using agent computing we deal with complex systems which are discovered many opportunities for developing data mining systems in a different ways. Hence to create predictive models, there is a huge need for intelligent and autonomous software agents which can procure useful information from the large datasets of raw information. Predictive analytics models can be created from these datasets which can be further used for various applications in security, future prediction etc. This research paper gives an overall function of multi agent systems in analytics of gene expression data, in terms of characteristics, adaptability, reliability and robotics of agents. Analytics on gene expression data is one of the emerging research fields. A large set of methodology and algorithms are existing in the field but in the application of agent technology in the field of gene expression data is at the infant stage. So the aim of this review paper is to integrate agent technology in the gene expression data analytics.
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