<p>The applicability of statistical typologies that capture farming systems diversity in innovation and development projects would increase if their adaptability would be enhanced, so that newly encountered farms can be classified and used to update the typology. In this paper we propose Naïve Bayesian (NB) classification as a method to allocate farms to types by using only a few variables, thus allowing the addition of new entries to a typology. We show for two example datasets that the performance of NB classification is already acceptable when 50% of the original survey dataset to construct the typology is used for training the NB classifier. For our datasets, the performance of Naïve Bayesian classification was improved when probabiliti...
The maintenance of organic farming production schemes is a theme receiving a growing interest now th...
This research article published by Hindawi, 2019Characterization of smallholder farmers has been con...
The ground truth data sets required to train supervised classifiers are usually collected as to maxi...
The applicability of statistical typologies that capture farming systems diversity in innovation and...
A Bayesian method of classifying observations that are assumed to come from a number of distinct sub...
A Bayesian method of classifying observations that are assumed to come from a number of distinct sub...
Classification is a form of data analysis that canbe used to extract models describing important dat...
Classification is a form of data analysis that can be used extract models describing important data ...
<p>Creating typologies is a way to summarize the large heterogeneity of smallholder farming systems ...
Precision agriculture in the developed world tends to rely on the collection and analysis of signifi...
Decentralized participatory plant breeding (PPB) is a method for creating new varieties adapted to a...
<div><p>Creating typologies is a way to summarize the large heterogeneity of smallholder farming sys...
The paper describes Bayesian analysis for agricultural field experiments, a topic that has received ...
If the fundamental precepts of Farming Systems Research were to be taken literally then it would imp...
Naive Bayesian classifiers are typically learned from data, yet in this paper we address the constru...
The maintenance of organic farming production schemes is a theme receiving a growing interest now th...
This research article published by Hindawi, 2019Characterization of smallholder farmers has been con...
The ground truth data sets required to train supervised classifiers are usually collected as to maxi...
The applicability of statistical typologies that capture farming systems diversity in innovation and...
A Bayesian method of classifying observations that are assumed to come from a number of distinct sub...
A Bayesian method of classifying observations that are assumed to come from a number of distinct sub...
Classification is a form of data analysis that canbe used to extract models describing important dat...
Classification is a form of data analysis that can be used extract models describing important data ...
<p>Creating typologies is a way to summarize the large heterogeneity of smallholder farming systems ...
Precision agriculture in the developed world tends to rely on the collection and analysis of signifi...
Decentralized participatory plant breeding (PPB) is a method for creating new varieties adapted to a...
<div><p>Creating typologies is a way to summarize the large heterogeneity of smallholder farming sys...
The paper describes Bayesian analysis for agricultural field experiments, a topic that has received ...
If the fundamental precepts of Farming Systems Research were to be taken literally then it would imp...
Naive Bayesian classifiers are typically learned from data, yet in this paper we address the constru...
The maintenance of organic farming production schemes is a theme receiving a growing interest now th...
This research article published by Hindawi, 2019Characterization of smallholder farmers has been con...
The ground truth data sets required to train supervised classifiers are usually collected as to maxi...