“…e objective of analysis is to know the buying patterns of customers on the basis of their liking and disliking. As evident from the literature, the analytics act has been exercised to reveal various types of patterns such as Frequent Patterns [1][2][3][4][5], Profitable Patterns [6], Conditional Patterns [7], Calendar-Based Patterns [8], and Log Pattern Mining [9] using various techniques of pattern mining [10]. Moreover, after the success of mining knowledge from datasets, researchers deal with certain specific situations and perform various tasks such as mining on data streams [11,12], recognition of handwritten expression [13], investigating customer buying behavior through Visual Market Basket Analysis (VMBA) [14], automated assessment of shopping behavior [15,16], applying additional interestingness measures for association rule mining [17], and conditional discriminative pattern mining [18], and researchers also have to deal to improve the implementation of pattern mining algorithms using time stamp uncertainties and temporal constraints [19], privacy of frequent itemset mining using randomized response [20], and finding infrequent itemset to discover the negative association rule [21].…”