Using an Efficient Optimal Classifier for Soil Classification in Spatial Data Mining Over Big Data

This article proposes an effectual process for soil classification. The input data of the proposed procedure is the Harmonized World Soil Database. Preprocessing aids to generate enhanced representation and will use minimum time. Then, the MapReduce framework divides the input dataset into a complim...

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Main Authors: Manjula Aakunuri, Narsimha G.
Format: Article
Language:English
Published: De Gruyter 2018-01-01
Series:Journal of Intelligent Systems
Subjects:
Online Access:https://doi.org/10.1515/jisys-2017-0209
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spelling doaj-3b4d137e24034b6fbaf7c93ca3f3e1862021-09-06T19:40:38ZengDe GruyterJournal of Intelligent Systems0334-18602191-026X2018-01-0129117218810.1515/jisys-2017-0209Using an Efficient Optimal Classifier for Soil Classification in Spatial Data Mining Over Big DataManjula Aakunuri0Narsimha G.1Jawaharlal Nehru Technological University, Hyderabad, IndiaDepartment of IT, JNTUH College of Engineering, Karimnagar District, Telangana State, IndiaThis article proposes an effectual process for soil classification. The input data of the proposed procedure is the Harmonized World Soil Database. Preprocessing aids to generate enhanced representation and will use minimum time. Then, the MapReduce framework divides the input dataset into a complimentary portion that is held by the map task. In the map task, principal component analysis is used to reduce the data and the outputs of the maps are then contributed to reduce the tasks. Lastly, the proposed process is employed to categorize the soil kind by means of an optimal neural network (NN) classifier. Here, the conventional NN is customized using the optimization procedure. In an NN, the weights are optimized using the grey wolf optimization (GWO) algorithm. Derived from the classifier, we categorize the soil category. The performance of the proposed procedure is assessed by means of sensitivity, specificity, accuracy, precision, recall, and F-measure. The analysis results illustrate that the recommended artificial NN-GWO process has an accuracy of 90.46%, but the conventional NN and k-nearest neighbor classifiers have an accuracy value of 75.3846% and 75.38%, respectively, which is the least value compared to the proposed procedure. The execution is made by Java within the MapReduce framework using Hadoop.https://doi.org/10.1515/jisys-2017-0209mapreduce frameworkprincipal component analysisneural networkgrey wolf optimizationaccuracyprecisionrecallf-measure
collection DOAJ
language English
format Article
sources DOAJ
author Manjula Aakunuri
Narsimha G.
spellingShingle Manjula Aakunuri
Narsimha G.
Using an Efficient Optimal Classifier for Soil Classification in Spatial Data Mining Over Big Data
Journal of Intelligent Systems
mapreduce framework
principal component analysis
neural network
grey wolf optimization
accuracy
precision
recall
f-measure
author_facet Manjula Aakunuri
Narsimha G.
author_sort Manjula Aakunuri
title Using an Efficient Optimal Classifier for Soil Classification in Spatial Data Mining Over Big Data
title_short Using an Efficient Optimal Classifier for Soil Classification in Spatial Data Mining Over Big Data
title_full Using an Efficient Optimal Classifier for Soil Classification in Spatial Data Mining Over Big Data
title_fullStr Using an Efficient Optimal Classifier for Soil Classification in Spatial Data Mining Over Big Data
title_full_unstemmed Using an Efficient Optimal Classifier for Soil Classification in Spatial Data Mining Over Big Data
title_sort using an efficient optimal classifier for soil classification in spatial data mining over big data
publisher De Gruyter
series Journal of Intelligent Systems
issn 0334-1860
2191-026X
publishDate 2018-01-01
description This article proposes an effectual process for soil classification. The input data of the proposed procedure is the Harmonized World Soil Database. Preprocessing aids to generate enhanced representation and will use minimum time. Then, the MapReduce framework divides the input dataset into a complimentary portion that is held by the map task. In the map task, principal component analysis is used to reduce the data and the outputs of the maps are then contributed to reduce the tasks. Lastly, the proposed process is employed to categorize the soil kind by means of an optimal neural network (NN) classifier. Here, the conventional NN is customized using the optimization procedure. In an NN, the weights are optimized using the grey wolf optimization (GWO) algorithm. Derived from the classifier, we categorize the soil category. The performance of the proposed procedure is assessed by means of sensitivity, specificity, accuracy, precision, recall, and F-measure. The analysis results illustrate that the recommended artificial NN-GWO process has an accuracy of 90.46%, but the conventional NN and k-nearest neighbor classifiers have an accuracy value of 75.3846% and 75.38%, respectively, which is the least value compared to the proposed procedure. The execution is made by Java within the MapReduce framework using Hadoop.
topic mapreduce framework
principal component analysis
neural network
grey wolf optimization
accuracy
precision
recall
f-measure
url https://doi.org/10.1515/jisys-2017-0209
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