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Sequential pattern mining combined multi-criteria decision-making for farmers' queries characterization

机译:针对农民查询表征的顺序模式挖掘组合多标准决策

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Agricultural policymakers use various types of expert systems to identify agricultural problems and to explore their potential solutions. However, in the current scenario, there is no robust system that can be used to collect and analyze information regarding the problems faced by farmers of the developing countries on a large scale. This article outlines the possible mechanisms through which information and communication technology (ICT) with the use of Knowledge Discovery in Databases could facilitate agricultural adoption. The goal of this study is to explore data from a farmers' helpline center as a new medium to gain hidden insights in terms of association rules regarding the problems faced by Indian farmers. The dataset used in this study is collected from the "Kisan Call Center", a farmers' helpline center managed by the Ministry of Agriculture, Government of India. For this objective, we propose a new approach that uses association rule mining integrated with a multi-criteria decisionmaking technique, TOPSIS to extract only the most relevant patterns from the dataset. Later, we perform experiments in order to analyze the output of the proposed framework and verify the discovered knowledge against the validation data. The best experiment generates a rule-set, consisting of 702 association rules, including insights from 25 states of India, with an average confidence value of 73.21% on the validation data. The extracted inference reveals many hidden patterns regarding associations among the farmers' issues from the remote states of India. Finally, we identify various potential applications of our work and conclude with some possible future developments in the proposed approach.
机译:农业政策制定者使用各种类型的专家系统来识别农业问题并探索其潜在的解决方案。然而,在目前的情况下,没有强大的系统,可以用于收集和分析有关发展中国家农民的问题大规模面临的问题。本文概述了在数据库中使用知识发现的信息和通信技术(ICT)的可能机制可以促进农业收养。本研究的目标是探讨农民的助理中心作为新媒介的数据,以获得有关印度农民面临的问题的关联规则的隐藏洞察。本研究中使用的数据集是由印度农业部管理部门管理的农民的Helpline中心“Kisan Call Center”收集的数据集。对于此目标,我们提出了一种新的方法,它使用与多标准作出决策技术集成的关联规则挖掘,顶部仅提取数据集中最相关的模式。后来,我们执行实验,以分析所提出的框架的输出并验证对验证数据的发现知识。最好的实验产生规则集,由702个关联规则组成,包括来自印度的25个州的见解,平均置信价值为73.21%的验证数据。提取的推理揭示了来自印度远程国家的农民问题中的许多隐藏模式。最后,我们确定了我们工作的各种潜在应用,并在提出的方法中结束了一些可能的未来发展。

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