Comparative analysis of tree classification models for detecting fusarium oxysporum f. sp cubense (TR4) based on multi soil sensor parameters

Use of wireless sensor networks and smartphone integration design to monitor environmental parameters surrounding plantations is made possible because of readily available and affordable sensors. Providing low cost monitoring devices would be beneficial, especially to small farm owners, in a develop...

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Main Authors: Estuar, Ma. Regina Justina E, Victorino, John Noel, Coronel, Andrei, Tiausas, Francis, Co, Jerelyn, Señires, Chiara Veronica
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Published: Archīum Ateneo 2017
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Online Access:https://archium.ateneo.edu/discs-faculty-pubs/24
https://www.spiedigitallibrary.org/conference-proceedings-of-spie/10444/2279126/Comparative-analysis-of-tree-classification-models-for-detecting-fusarium-oxysporum/10.1117/12.2279126.short?SSO=1
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Institution: Ateneo De Manila University
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spelling ph-ateneo-arc.discs-faculty-pubs-10232020-02-22T03:00:42Z Comparative analysis of tree classification models for detecting fusarium oxysporum f. sp cubense (TR4) based on multi soil sensor parameters Estuar, Ma. Regina Justina E Victorino, John Noel Coronel, Andrei Tiausas, Francis Tiausas, Francis Co, Jerelyn Señires, Chiara Veronica Use of wireless sensor networks and smartphone integration design to monitor environmental parameters surrounding plantations is made possible because of readily available and affordable sensors. Providing low cost monitoring devices would be beneficial, especially to small farm owners, in a developing country like the Philippines, where agriculture covers a significant amount of the labor market. This study discusses the integration of wireless soil sensor devices and smartphones to create an application that will use multidimensional analysis to detect the presence or absence of plant disease. Specifically, soil sensors are designed to collect soil quality parameters in a sink node from which the smartphone collects data from via Bluetooth. Given these, there is a need to develop a classification model on the mobile phone that will report infection status of a soil. Though tree classification is the most appropriate approach for continuous parameter-based datasets, there is a need to determine whether tree models will result to coherent results or not. Soil sensor data that resides on the phone is modeled using several variations of decision tree, namely: decision tree (DT), best-fit (BF) decision tree, functional tree (FT), Naive Bayes (NB) decision tree, J48, J48graft and LAD tree, where decision tree approaches the problem by considering all sensor nodes as one. Results show that there are significant differences among soil sensor parameters indicating that there are variances in scores between the infected and uninfected sites. Furthermore, analysis of variance in accuracy, recall, precision and F1 measure scores from tree classification models homogeneity among NBTree, J48graft and J48 tree classification models. 2017-01-01T08:00:00Z text https://archium.ateneo.edu/discs-faculty-pubs/24 https://www.spiedigitallibrary.org/conference-proceedings-of-spie/10444/2279126/Comparative-analysis-of-tree-classification-models-for-detecting-fusarium-oxysporum/10.1117/12.2279126.short?SSO=1 Department of Information Systems & Computer Science Faculty Publications Archīum Ateneo Computer Sciences Databases and Information Systems
institution Ateneo De Manila University
building Ateneo De Manila University Library
continent Asia
country Philippines
Philippines
content_provider Ateneo De Manila University Library
collection archium.Ateneo Institutional Repository
topic Computer Sciences
Databases and Information Systems
spellingShingle Computer Sciences
Databases and Information Systems
Estuar, Ma. Regina Justina E
Victorino, John Noel
Coronel, Andrei
Tiausas, Francis
Tiausas, Francis
Co, Jerelyn
Señires, Chiara Veronica
Comparative analysis of tree classification models for detecting fusarium oxysporum f. sp cubense (TR4) based on multi soil sensor parameters
description Use of wireless sensor networks and smartphone integration design to monitor environmental parameters surrounding plantations is made possible because of readily available and affordable sensors. Providing low cost monitoring devices would be beneficial, especially to small farm owners, in a developing country like the Philippines, where agriculture covers a significant amount of the labor market. This study discusses the integration of wireless soil sensor devices and smartphones to create an application that will use multidimensional analysis to detect the presence or absence of plant disease. Specifically, soil sensors are designed to collect soil quality parameters in a sink node from which the smartphone collects data from via Bluetooth. Given these, there is a need to develop a classification model on the mobile phone that will report infection status of a soil. Though tree classification is the most appropriate approach for continuous parameter-based datasets, there is a need to determine whether tree models will result to coherent results or not. Soil sensor data that resides on the phone is modeled using several variations of decision tree, namely: decision tree (DT), best-fit (BF) decision tree, functional tree (FT), Naive Bayes (NB) decision tree, J48, J48graft and LAD tree, where decision tree approaches the problem by considering all sensor nodes as one. Results show that there are significant differences among soil sensor parameters indicating that there are variances in scores between the infected and uninfected sites. Furthermore, analysis of variance in accuracy, recall, precision and F1 measure scores from tree classification models homogeneity among NBTree, J48graft and J48 tree classification models.
format text
author Estuar, Ma. Regina Justina E
Victorino, John Noel
Coronel, Andrei
Tiausas, Francis
Tiausas, Francis
Co, Jerelyn
Señires, Chiara Veronica
author_facet Estuar, Ma. Regina Justina E
Victorino, John Noel
Coronel, Andrei
Tiausas, Francis
Tiausas, Francis
Co, Jerelyn
Señires, Chiara Veronica
author_sort Estuar, Ma. Regina Justina E
title Comparative analysis of tree classification models for detecting fusarium oxysporum f. sp cubense (TR4) based on multi soil sensor parameters
title_short Comparative analysis of tree classification models for detecting fusarium oxysporum f. sp cubense (TR4) based on multi soil sensor parameters
title_full Comparative analysis of tree classification models for detecting fusarium oxysporum f. sp cubense (TR4) based on multi soil sensor parameters
title_fullStr Comparative analysis of tree classification models for detecting fusarium oxysporum f. sp cubense (TR4) based on multi soil sensor parameters
title_full_unstemmed Comparative analysis of tree classification models for detecting fusarium oxysporum f. sp cubense (TR4) based on multi soil sensor parameters
title_sort comparative analysis of tree classification models for detecting fusarium oxysporum f. sp cubense (tr4) based on multi soil sensor parameters
publisher Archīum Ateneo
publishDate 2017
url https://archium.ateneo.edu/discs-faculty-pubs/24
https://www.spiedigitallibrary.org/conference-proceedings-of-spie/10444/2279126/Comparative-analysis-of-tree-classification-models-for-detecting-fusarium-oxysporum/10.1117/12.2279126.short?SSO=1
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