Indianapolis, Indiana
June 15, 2014
June 15, 2014
June 18, 2014
2153-5965
Computing & Information Technology
8
24.1079.1 - 24.1079.8
10.18260/1-2--23012
https://peer.asee.org/23012
385
Reza Sanati-Mehrizy is a professor of Computer Science Department at Utah Valley University, Orem, Utah. He received his M.S. and Ph.D. in Computer Science from the University of Oklahoma, Norman, Oklahoma. His research focuses on diverse areas such as: Database Design, Data Structures, Artificial Intelligence, Robotics, Computer Aided Manufacturing, Data Mining, Data Warehousing, and Machine Learning.
Afsaneh Minaie is a professor of Computer Engineering at Utah Valley University. She received her B.S., M.S., and Ph.D. all in Electrical Engineering from University of Oklahoma. Her research interests include gender issues in the academic sciences and engineering fields, Embedded Systems Design, Mobile Computing, Wireless Sensor Networks, and Databases.
I obtained my Undergraduate degree from University of Dhaka, Dhaka, Bangladesh; MS in Biology from George Mason University, Fairfax VA; and Ph.D. in Molecular Genetics and Biochemistry from University of Pittsburgh, Pittsburgh, PA. My research area include biomarkers in molecular medicine, cancer epidemiology and organ transplantation. Recently I also included effects of climate change on public health in my research agenda. My research also involve data mining.
Dr. Ali Sanati-Mehrizy is a Pediatric resident physician at Rutgers University - New Jersey Medical School in Newark, NJ. He is a graduate of the Milton S. Hershey Pennsylvania State University College of Medicine. He completed his undergraduate studies in Biology from the University of Utah. His research interests are varied and involve pediatric hematology and oncology as well as higher education curricula, both with universities and medical schools.
Paymon is currently a medical student at the Icahn School of Medicine at Mount Sinai. He completed his undergraduate studies in Biology from the University of Pennsylvania in May 2012. Currently, his research interests consist of higher education curricula, both with universities and medical schools.
Sequence Data Mining for Adverse Event Prediction and Action RecommendationMany real-life data mining applications uses sequence data modeling in which data isrepresented as a sequence. A sequence is an ordered list of events (t1,e1), (t2,e2), …,(tn,en)where ti represents time and ei represents the event taking place at time ti. ei takes placebefore ei+1 for 1≤ i ≤ n-1. This model can be used in data mining, called sequence datamining, to predict certain event that may take place at a specific time.Sequence data mining has a wide range of applications in the data mining field. This datamining technique can be used for prediction of adverse events and recommend properactions to be taken as needed. For the aviation safety, the future of a flight can bepredicted as a sequence and proper action can be recommended to avoid dangeroussituations that a flight may get into otherwise. In the health care system, the future of abacterial infection can be predicted and proper medicine can be prescribed for differentsituations to bring the patient’s illness to an end. In the marketing, customer sopping canbe monitored and certain action can be taken, such as mailing coupons, to encourage thecustomer for further sopping of relevant products. In the real-life situations such asmanufacturing plants, sensors’ data can be analyzed to control operations and predictdangerous situations and recommend proper actions. This paper discusses a new technique for implementation of sequence data mining andits applications for a number of different cases.
Sanati-Mehrizy, R., & Minaie, A., & Kuddus, R. H., & Sanati-Mehrizy, A., & Sanati-Mehrizy, P. (2014, June), Sequence Data Mining for Adverse Event Prediction and Action Recommendation Paper presented at 2014 ASEE Annual Conference & Exposition, Indianapolis, Indiana. 10.18260/1-2--23012
ASEE holds the copyright on this document. It may be read by the public free of charge. Authors may archive their work on personal websites or in institutional repositories with the following citation: © 2014 American Society for Engineering Education. Other scholars may excerpt or quote from these materials with the same citation. When excerpting or quoting from Conference Proceedings, authors should, in addition to noting the ASEE copyright, list all the original authors and their institutions and name the host city of the conference. - Last updated April 1, 2015