使用Apriori方法对印度5至9岁儿童的购买偏好进行调查、分析和关联规则推导

Neha Arora, K. K. Gola, S. Gulati, P. Chutani
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引用次数: 0

摘要

近20年前,人们每年或每两年购买一次玩具/运动/实用物品,如今则是每周/每两周/每天购买一次。孩子们购买玩具的交易非常频繁,几乎每隔一天就会发生在社会的很大一部分,因此产生了大量的数据。因此,应用数据挖掘方法来获取孩子们的玩具/items_of_interest购买模式的范围越来越大。在本研究中,我们应用Apriori算法对全国各地儿童(5-9岁)对玩具的熟悉程度进行循环后通过谷歌表格收集的数据进行数据挖掘;这项调查是在两所工程学院的学生中进行的,来自全国不同地区的不同群体的学生正在这里学习。对由此形成的玩具/运动项目数据集应用Apriori算法,得到9条关联规则。此外,框架规则的准确性也由店主手工验证;Beyblades和Carom是最受欢迎的玩具/运动项目;而自行车和蝙蝠球则排在第二位。结果提供了玩具/运动之间非常有用的关联。
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Survey, Analysis and Association Rules derivation using Apriori Method for buying preference amongst kids of age-group 5 to 9 in India
what used to be an annual or bi-annual phenomenon of toys/sports/utility item purchase nearly two decades back, is a weekly/bi-weekly/daily transaction now-adays. Toys purchase by kids in a very frequent transaction that happens almost every alternate day in a big segment of society and thus produce high volumes of data. Consequently, there is rising scope to apply data mining methods to obtain toys/items_of_interest buying patterns amongst kids. In the present piece of research, we have applied Apriori algorithm to perform data mining using the data collected through a Google form after circulating children’s (age group 5-9) acquaintance of toys, across the country; the survey got carried out through students of two engineering colleges where diverse group of students from different parts of the country are studying. Nine association rules were achieved after applying Apriori Algorithm on the data set of the Toys/Sports items thus formed. Further, accuracy of framed rules has also been manually validated by the store owner; Beyblades and Carom are the most preferred toys/sports items; whereas Bicycle and Bat-Ball falls at second position in the list. The results provide very useful association amongst toys/Sports.
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