基于增量聚类的植物预测局部匹配模型

A. Meenakshi, V. Mohan
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引用次数: 1

摘要

数据挖掘是从不同角度分析数据并将其总结为有用信息的过程。聚类是一种数据挖掘技术,用于在不事先了解组定义的情况下将数据元素放入相关的组中。在这里,我们提出了一种增量聚类技术来管理土壤学知识,这是一项研究土壤对生物,特别是植物的影响的研究。土壤学家收集的土壤信息以及为提高产量而在其上种植的适当植物被用于拟议的系统中。最初,增量DBSCAN算法应用于动态数据库,其中的数据可能经常更新。然后,将土壤数据库中可用的数据分组成簇,并在不需要重新运行的情况下将每个新元素添加到簇中。最后,利用回归模型对植物进行预测。在土壤数据库中进行了实验,分析了该系统在植物预测中的性能。
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Localized matching model for plant prediction using incremental clustering
Data mining is the process of analyzing data from different perspectives and summarizing it into useful information. Clustering is a data mining technique, which is used to place data elements into related groups without advance knowledge of the group definitions. Here, we propose an incremental clustering technique for managing knowledge in edaphology, a study concerned with the influence of soils on living things, particularly plants. The soil information along with the appropriate plants to be cultivated on it for better yield, collected by edaphologists, are utilized in the proposed system. Initially, an incremental DBSCAN algorithm is applied to a dynamic database where, the data may be frequently updated. Then, the data available in the soil database is grouped into clusters and every new element is added into it without the need of rerunning process. Finally, we have performed the plant prediction using regression model. The experimentation is carried out in soil database to analyze the performance of the proposed system in plant prediction.
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