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Soil Classification Using Gatree


Affiliations
1 Department of CSE, Madanapalli Institue of Tecnology and Science, Madanapalli, India
2 Department of Computer Science, Sri Padmavathi Mahila VisvaVidyalayam, Tirupati(Womens University), India
 

This paper details the application of a genetic programming framework for classification of decision tree of Soil data to classify soil texture. The database contains measurements of soil profile data. We have applied GATree for generating classification decision tree. GATree is a decision tree builder that is based on Genetic Algorithms (GAs). The idea behind it is rather simple but powerful. Instead of using statistic metrics that are biased towards specific trees we use a more flexible, global metric of tree quality that try to optimize accuracy and size. GATree offers some unique features not to be found in any other tree inducers while at the same time it can produce better results for many difficult problems. Experimental results are presented which illustrate the performance of generating best decision tree for classifying soil texture for soil data set.

Keywords

Data Mining, Soil Profile, Soil Database, Classification, GATree.
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  • Soil Classification Using Gatree

Abstract Views: 210  |  PDF Views: 112

Authors

P. Bhargavi
Department of CSE, Madanapalli Institue of Tecnology and Science, Madanapalli, India
S. Jyothi
Department of Computer Science, Sri Padmavathi Mahila VisvaVidyalayam, Tirupati(Womens University), India

Abstract


This paper details the application of a genetic programming framework for classification of decision tree of Soil data to classify soil texture. The database contains measurements of soil profile data. We have applied GATree for generating classification decision tree. GATree is a decision tree builder that is based on Genetic Algorithms (GAs). The idea behind it is rather simple but powerful. Instead of using statistic metrics that are biased towards specific trees we use a more flexible, global metric of tree quality that try to optimize accuracy and size. GATree offers some unique features not to be found in any other tree inducers while at the same time it can produce better results for many difficult problems. Experimental results are presented which illustrate the performance of generating best decision tree for classifying soil texture for soil data set.

Keywords


Data Mining, Soil Profile, Soil Database, Classification, GATree.