Title Susietumo taisyklių paieška didelėse duomenų bazėse /
Translation of Title Association rules search in large data bases.
Authors Savulionienė, Loreta
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Pages 125
Keywords [eng] Association rule ; data mining algorithms ; stochastic algorithm for discovery of association rules
Abstract [eng] The impact of information technology is an integral part of modern life. Any activity is related to information and data accumulation and storage, therefore, quick analysis of information is necessary. Today, the traditional data processing and data reports are no longer sufficient. The need of generating new information and knowledge from given data is understandable; therefore, new facts and knowledge, which allow us to forecast customer behaviour or financial transactions, diagnose diseases, etc., can be generated applying data mining techniques. The doctoral dissertation analyses modern data mining algorithms for estimating frequent sub-sequences and association rules. The dissertation proposes a new stochastic algorithm for mining frequent sub-sequences, its modifications SDPA1 and SDPA2 and stochastic algorithm for discovery of association rules, and presents the evaluation of the algorithm errors. These algorithms are approximate, but allow us to combine two important tests, i.e. time and accuracy. The algorithms have been tested using real and simulated databases.
Type Doctoral thesis
Language Lithuanian
Publication date 2014