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Deepa, T.
- Multihomed Routing for Power Efficiency
Authors
Source
Fuzzy Systems, Vol 7, No 2 (2015), Pagination: 58-65Abstract
The use of the multi-interfaced devices has been increasing due to multi-homed streaming services. Running multiple interfaces simultaneously in a mobile interface may cause battery drain even in sleep modes and it can cause degradation of QOS. The abstract of our project is to provide dynamic load distribution which includes a multi-interfaced device with multi homing capability thereby preventing the mobile terminals going to sleep mode. The PELD (power efficiency load distribution) algorithm is used which can be easily adopted and deployed to find a optimal point with low complexity and convergence time. The tool used here is network simulator2 tool where the implementation is done and the coding is written in tcl.
- Comprehensive Feature Selection for Clinical Dataset
Authors
1 Sri Ramakrishna College of Arts and Science College for Women, Coimbatore - 641044, IN
Source
Fuzzy Systems, Vol 10, No 2 (2018), Pagination: 25-27Abstract
Feature selection plays a significant role in any data mining research problem. In this research work, comprehensive feature selection is applied for selecting the attributes in the chosen PIMA Indian diabetes dataset. The comprehensive feature selection mechanism makes use of maximum significance pattern for selecting the most edifying features, which effectively distinguish between different classes of samples.Keywords
Feature Selection, Data Mining, Gestational Diabetes, Accuracy, Time Taken, Feature Selection, Risk Prediction.References
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