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Accurate Heart Disease Prediction System Using Optimized Data Mining Techniques
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Heart disease is the frequently found disease in various peoples which would cause more serious and dangerous effects. Various studies have been projected earlier whose major aim is to predict the heart disease more accurately. In our previous research method Fuzzy Rough Set Theory combined with Support Vector Machine (FRS - SVM) is introduced which can ensures the optimal prediction rate by selecting the risk factors accurately which can lead to improved accuracy rate. However FRS-SVM might lack in its performance in case of presence of more missing values in the database. This research method cannot support the large dimensional dataset which needs to be focused well enough for accurate prediction rate. This problem is resolved in this investigation by introducing the framework namely Heart disease prediction using Alpha Rough Set Theory combined with Fuzzy SVM (ARST-FSVM). In this research method, Modified K-Means clustering algorithm is utilized for preprocessing the input dataset which would avoid the noisy data present in the database. Then missing data value in the database is handled using normalization technique where NLLS imputation is applied. And then feature dimensionality reduction is done using Alpha rough set theory (α-RST) approach. From those reduced feature set, optimal feature selection in terms of relevancy is done using Hybrid Bee colony algorithm with Glowworm Swarm Optimization (HBC-GSO) approach. Finally heart disease prediction is done using classifier namely fuzzy based SVM. The overall research method ensures that the proposed research technique leads to ensure it can direct to most favorable and accurate heart disease diagnosis outcome.
Keywords
Large Data Set, Heart Disease Prediction, Missing Values, Accurate Observation, Feature Reduction.
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- Neha Chauhan and Nisha Gautam “An Overview of heart disease prediction using data mining techniques”
- Sujata Joshi and Mydhili K.Nair,”Prediction of Heart Disease Using Classification Based Data Mining Techniques”, Springer India 2015, volume 2.
- Beant Kaur and Williamjeet Singh.,” Review on Heart Disease Prediction System using Data Mining Techniques”, IJRITCC, October 2016.
- Frank Lemke and Johann-Adolf Mueller, "Medical data analysis using self-organizing data mining technologies," Systems Analysis Modeling Simulation , Vol. 43, Issue No. 10, 2003, pp. 1399-1408
- Beant Kaur h, Williamjeet Singh, “Review on Heart Disease Prediction System using Data Mining Techniques”, International Journal on Recent and Innovation Trends in Computing and Communication, Volume: 2 Issue: 10, pp.3003-08, October 2015.
- M. Gudadhe, K. Wankhade, and S. Dongre, “Decision support system for heart disease based on support vector machine and artificial neural network”, In proceedings of IEEE International Conference on Computer and Communication Technology (ICCCT), pp. 741–745, November 2015.
- Chaitrali S. Dangare, Sulabha S. Apte, ―Improved Study of Heart Disease Prediction System using Data Mining Classification Techniques; International Journal of Computer Applications (0975 – 888) Volume 47– No.10, June 2014.
- Aditya Methaila, Early Heart Disease Prediction Using Data Mining Techniques; CCSEIT, DMDB, ICBB, MoWiN, AIAP pp. 53–59, 2016
- B.Venkatalakshmi, M.V Shivsankar, Heart Disease Diagnosis Using Predictive Data mining; International Journal of Innovative Research in Science, Engineering and Technology Volume 3, Special Issue 3, March 2016.
- Nidhi Bhatlet and Kiran Jyoti, “An Analysis of Heart disease prediction system using different data mining techniques”, International Journal of Engineering Research and Technology,ISSN,volume 1,October-2016
- N. Kumaravel, K. Sridhar, and N. Nithiyanandam, “Automatic diagnoses of heart diseases using neural network”, In Proceedings of the Fifteenth Biomedical Engineering Conference, pp. 319–322, March 2016.
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