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http://hdl.handle.net/10603/362470
Title: | Analysis and Design of Temporal Data Farming Algorithms |
Researcher: | SHAHNAWAZ, MOHD |
Guide(s): | SAXENA, KANAK |
Keywords: | Computer Science Computer Science Software Engineering Engineering and Technology |
University: | Rajiv Gandhi Proudyogiki Vishwavidyalaya |
Completed Date: | 2017 |
Abstract: | Data farming is a process of growing sufficient data for mining and decision making. In newlinethis thesis, we give temporal data farming method for cardiac patient dataset. Temporal newlinedata farming methodologies consist of: (i) data fertilization, (ii) data cultivation, (iii) data newlineplantation and (iv) data harvesting. The goal of the data farming is to increase the newlineperformance measure (like classification accuracy, cluster density, support and confidence newlineof any association rule etc.) and reduce the data collection cost. In this thesis, we propose newlinealgorithms which increase the classification accuracy in farmed dataset compared to the newlineseed data sample or original dataset. We present analysis of various methods to fertilize newlineavailable seed data by fill mean, fill median, fill mode and fill by various regressions. newlineThesis includes an algorithm to farm the prediction vector as dose of medicine called as newline dobutamine given to heart patients by applying regression and iterative prediction. We newlinealso propose another algorithm to get the generalized IF-THEN Rules by making the newline cluster using k-mean clustering; these rules are further used to farm the dataset. After newlinedata fertilization and data cultivation, we get fertile seed data. For data plantation steps of newlinethe data farming process, we propose an algorithm which plants these fertile seed data and newlinefarmed data as crops. The proposed algorithm is implemented on graphical user interface newlineof MATLAB 7.0. Another algorithm is proposed and analyzed for data plantation and newlineharvesting steps including the effects of the temporal events of the patient s medical newlinehistory like (1) diabetic, (2) myocardial infarction (MI) or heart attack, (3) newlinerevascularization by percutaneous transluminal coronary angioplasty (PTCA) and (4) newlinecoronary artery bypass grafting surgery (CABG) etc. Proposed algorithm uses a weight newlinefunction to correctly estimate the effect of these events with the impact of the time of newlineoccurrence. We further improve the effectiveness of the weight function in such a manner newlinethat the smaller time |
Pagination: | 10.8MB |
URI: | http://hdl.handle.net/10603/362470 |
Appears in Departments: | Department of Computer Applications |
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