Optimal hesitation rule mining using weighted apriori with genetic algorithm

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Abstract

Weighted Apriori algorithm practices the itemsets that are frequently generated in particular databases for statistical analysis. Traditional association rule mining only deals with the items that are actually present in the transaction and disregards the items that customers hesitated to purchase such items can considered as almost sold items that contains valuable information which can be used in enhancing the decision making capabilities. This paper focuses on the weighted apriory with genetic algorithm because with the help of weighted apriory there are some hesitation patterns are define on these rules the genetic algorithm is applied which gives the optimal results(Newly generated valid rules). This exertion portrays that if the cause of yielding the things is known and settled, we can without much of a extend expel this hesitation status of a client and thinking about recently developed rules as the intriguing ones for increase offers of the entity or item.

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Dandotiya, M., & Parmar, M. (2019). Optimal hesitation rule mining using weighted apriori with genetic algorithm. International Journal of Innovative Technology and Exploring Engineering, 8(12), 3321–3328. https://doi.org/10.35940/ijitee.L2825.1081219

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