Abstract-The scope of this article is to highlight how healthcare analytics can be improved using Business Intelligence tools. Healthcare system has learned from the previous lessons the necessity of using healthcare analytics for improving patient care, hospital administration, population growth and many others aspects. Business Intelligence solutions applied for the current analysis demonstrate the benefits brought by the new tools, such as SAP HANA, SAP Lumira, and SAP Predictive Analytics. In detailed is analyzed the birth rate with the contribution of different factors to the world.
The current paper highlights the advantages of big data analytics and business intelligence in the healthcare industry. In the paper are reviewed the Real-Time Healthcare Analytics Solutions for Preventative Medicine provided by SAP and the different ideas realized by possible customers for new applications in Healthcare industry in order to demonstrate that the healthcare system can and should benefit from the new opportunities provided by ITC in general and big data analytics in particular.
The importance of this article comes from the complex issue of determining the students' profile in order to develop educational activities and to improve their technical or social skills. The paper presents our experimental results and methods used to determine students'profile based on questionnaires collected from our university. We applied different methods of data extraction and analysis in order to assess their comparative effectiveness for determining the profile of our students in order to enroll them in extra curriculum activities such as international competition, internships, research and development. We consider the data mining techniques to be more efficient and thus we applied several techniques, supervised and unsupervised learning algorithms. We consider very useful to determine the profile for each student and also to group them in clusters. Based on questionnaires we extract and load data into a database and build the data mining models that function for construction, implementation, testing and manipulation of data. These models are based on a series of algorithms for classification, prediction, regression, clustering, association, selection and data analysis. The results are relevant; we manage to obtain an accuracy of 95% in several models. Therefore, the subject of students' profile is a major research area due to its effect. In this research various attribute selection and data mining techniques have been used to build a few predictive models for this subject. It has been found that Logistic Regression performs very well, followed closely by the Support Vector Machines. Further work is under progress to apply the results in terms of clustering and developing new educational programs based on this clusters.
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