Publication | Closed Access
RETRACTED: Mixed-mode database miner classifier: Parallel computation of graphical processing unit mining
14
Citations
7
References
2021
Year
Cluster ComputingEngineeringMachine LearningGpu MiningPattern DiscoveryPattern MiningGraphical Processing UnitOptimization-based Data MiningData ScienceData MiningPattern RecognitionDecision Tree LearningParallel ComputingHigh-performance Data AnalyticsPredictive AnalyticsKnowledge DiscoveryComputer EngineeringComputer ScienceGpu Memory UtilizationEvolutionary Data MiningData ClassificationParallel ComputationParallel ProgrammingData-level ParallelismLearning Classifier System
Graphical processing unit (GPU) has gained more popularity among researchers in the field of decision making and knowledge discovery systems. However, most of the earlier studies have GPU memory utilization, computational time, and accuracy limitations. The main contribution of this paper is to present a novel algorithm called the Mixed Mode Database Miner (MMDBM) classifier by implementing multithreading concepts on a large number of attributes. The proposed method use the quick sort algorithm in GPU parallel computing to overcome the state of the art limitations. This method applies the dynamic rule generation approach for constructing the decision tree based on the predicted rules. Moreover, the implementation results are compared with both SLIQ and MMDBM using Java and GPU with the computed acceleration ratio time using the BP dataset. The primary objective of this work is to improve the performance with less processing time. The results are also analyzed using various threads in GPU mining using eight different datasets of UCI Machine learning repository. The proposed MMDBM algorithm have been validated on these chosen eight different dataset with accuracy of 91.3% in diabetes, 89.1% in breast cancer, 96.6% in iris, 89.9% in labor, 95.4% in vote, 89.5% in credit card, 78.7% in supermarket and 78.7% in BP, and simultaneously, it also takes less computational time for given datasets. The outcome of this work will be beneficial for the research community to develop more effective multi thread based GPU solution in GPU mining to handle large set of data in minimal processing time. Therefore, this can be considered a more reliable and precise method for GPU computing.
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