Parallelizing Coherent Rule Mining Algorithm on CUDA
Journal: International Journal of Science and Research (IJSR) (Vol.4, No. 4)Publication Date: 2015-04-05
Authors : Aditya A. Davale; Shailendra W. Shende;
Page : 1076-1079
Keywords : Data mining; GPU; CUDA; parallel processing;
Abstract
In data mining, association rules are discovered from the domain when the minimum support threshold value is given by domain expert. Minimum support threshold affects the number of rules generated and the quality of rules. So In this work, a framework is proposed to discover domain knowledge in terms of coherent rules. This rules are discovered from properties of propositional logic, and does not require minimum support threshold. The execution of association rule mining algorithm involves processing of huge data. Handling such amount of data having millions of rows is very challenging. High-end computers and server-side machines are used to process such algorithms for enormous amount of data but are very expensive and accessible to only a few. In comparison graphics processing units (GPUs) have much high computation power and are also less expensive. So, GPU acts as the high performance co-processors. So, the implementation of association rule mining algorithm on GPU will provides the high performance computing and increase in the speedup.
Other Latest Articles
- Severity of Diarrhea and Dehydration in Children Under 5 Years
- Comparison of Alkaline phosphatase, Lactate Dehydrogenase and Acid Phosphatase Levels in Serum and Synovial Fluid between Patients with Rheumatoid Arthritis and Osteoarthritis
- Enhancing Cloud Security and Integrity byUsing multiple Encryption Algorithms and Stripping
- Review on Cost Estimation Prediction Using ANN
- Dual Security Using Dual Encryption Schemes and Efficient User Revocation in Cloud
Last modified: 2021-06-30 21:44:39