COMPARISONAL ANALYSIS OF APRIORI ALGORITHM AND ECLAT ALGORITHM FOR DETERMINING LENDING PATTERNS BOOK IN THE LIBRARY
Keywords:
library, a priori, eclat, loanAbstract
The Library has a lot of loan transaction data Books, if the data is processed with a certain method, will be other useful information. This study aims to determine the pattern Borrowing books based on books that are often borrowed at the same time, to compile information on book recommendations and determine performance a priori algorithm and Eclat algorithm. The results of this study suggest a pattern that generated between the a priori algorithm and the Eclat algorithm has common elements just as much, namely up to 21 with 0.7% support and good book recommendations produced books on microeconomics, Islamic religious instruction, pancasila education and civics. The a priori algorithm's performance has time faster execution compared to the Eclat algorithm. Apriori algorithm takes 78 ms in the execution process, while the eclat. Algorithm The execution process takes 125 ms.
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