Ethical Issues in Data Mining

Size: px
Start display at page:

Download "Ethical Issues in Data Mining"

Transcription

1 Ethical Issues in Data Mining Mandana Mir Moftakhari PhD Student at Hacettepe University, Department of Information Management. Güleda Doğan PhD Student & Research Assistant of Hacettepe University Department of Information Management.

2 We will discuss about: Big Data Knowledge Discovery Data mining Ethical issues in Data mining

3 Big Data! Data overload is a serious problem that has been grown by technical advances. Human beings have to cope with such overwhelming amounts of data and manage it in order to obtain relevant information and knowledge to solve their problems.

4 Big Data! Organizations have to overcome with massive data volume to achieve opportunities for: better decision-making gaining competitive advantages

5 knowledge Discovery in Databases as a Solution knowledge discovery in databases (KDD) is the nontrivial process of identifying valid novel potentially useful and ultimately understandable patterns in data (Fayyad, Piatetsky-Shapiro, Smyth and Uthurusamy,1996)

6 KDD Involves Different Steps Selection Preprocessing Transformation Data mining Interpretation or evaluation (Fayyad et al., 1996)

7 What Is Data Mining? Data mining as the center process of KDD is the analysis of (often large) observational data sets to find unsuspected relationships and to summarize the data in novel ways that are both understandable and useful to the data owner. (Hand, Mannila and Smyth, 2001)

8 Data mining Using Areas Customer service support Prediction Estimation Forecasting Decision support Manage budget

9 Data Mining Process Identifying the aim areas Determining sources of data Gathering and cleaning the data into a data warehouse Choosing proper analyzing tools Finding new patterns Prepare reports and implementing the results.

10 Ethical issues in Data mining Individuals not only expect qualified services, but also they require high level privacy and security of their personal details. These issues cannot be overlooked because of their consequences and effects on consumers, individuals and society.

11 Ethical issues Privacy Data accuracy Database security Consent

12 Privacy Threats Many consumers feel that their privacy is violated by information-gathering practices. Secondary use of the personal information Handling misinformation Granulated access to personal information

13 Secondary Use of the Personal Information Recent surveys on privacy show a great concern about the use of personal data for purposes other than the one for which data has been collected.

14 Handling Misinformation Misinformation can cause serious and long-term damage, so individuals should be able challenge the correctness of data about themselves.

15 Granulated Access to Personal Information The access to personal data should be on a need-to-know basis, and limited to relevant information only.

16 Type of data Some types of personal information are seen as being more sensitive than others. What complicates this issue is that sensitivity level varies according to the individual.

17 Database security Database security inhibits the unauthorized dissemination of personal data.

18 Data accuracy Collected data have originated from many diverse, possibly external, sources. Might be noisy, obsolete, inaccurate, or incomplete Not enough new Different from the present situation of individuals

19 Consent The purpose of data mining is to discover new insights and new uses for the information that companies already have. This makes it nearly impossible to allow the consumer to have the right of giving informed consent for each use of his data.

20 Conclusion and Recommendations Data mining is the process of searching in order to discover relationships between data sets and find useful information. Ethical issues should be observed in all steps of the process.

21 Conclusion and Recommendations Consider the expectations of the customers Develop a customer-oriented privacy policy Research and understand all laws that may have jurisdiction over sensitive data Control access to data warehouses Give customers more control over their data Evaluate the quality of source data

22 References American Library Association. (1995). Code of ethics of the American Library Association. Bhambri, V. &Gagandeep, (2012).Coexistence of data mining and privacy of data.international Journal of Research in IT & Management,2(2). Brankovic, L., &Estivill-Castro, V. (1999, July). Privacy issues in knowledge discovery and data mining. In Australian institute of computer ethics conference Cary, C., Wen, H.J. &Mahatanankoon, P. (2003).Data mining: consumer privacy, ethical policy, and systems development practices. Human Systems Management, 22(4), Cavoukian, A. (1998). Data mining: staking a claim on your privacy. Fayyad, U. M., Piatetsky-Shapiro, G., Smyth, P. &Uthurusamy, R.. (1996). Advances in knowledge discovery and data mining. Cambridge, Menlo Park, Calif.: AAAI Press.Retrieved on May,10, 2014, from Fayyad, U. M., Piatetsky-Shapiro, G., & Smyth, P. (1996). From data mining to knowledge discovery in databases.ai Magazine, 17, Nicholson, S. (2003). The bibliomining process: Data warehousing and data mining for library decision-making. Information Technology and Libraries, 22(4), Nicholson, S. & Stanton, J. (2003). Gaining strategic advantage through bibliomining: Data mining for management decisions in corporate, special, digital, and traditional libraries. In Nemati, H. &Barko, C. (Eds.).Organizational data mining: Leveraging enterprise data resources for optimal performance. Hershey, PA: Idea Group Publishing Payne, D. &. Trumbach, C. C. (2009). Data mining: proprietary rights, people and proposals, Business Ethics Quarterly, vol. 18(3).

23

Statistics 215b 11/20/03 D.R. Brillinger. A field in search of a definition a vague concept

Statistics 215b 11/20/03 D.R. Brillinger. A field in search of a definition a vague concept Statistics 215b 11/20/03 D.R. Brillinger Data mining A field in search of a definition a vague concept D. Hand, H. Mannila and P. Smyth (2001). Principles of Data Mining. MIT Press, Cambridge. Some definitions/descriptions

More information

The Bibliomining Process: Data Warehousing and Data Mining for Library Decision-Making

The Bibliomining Process: Data Warehousing and Data Mining for Library Decision-Making Nicholson, S. (2003) The Bibliomining Process: Data Warehousing and Data Mining for Library Decision-Making. Information Technology and Libraries 22 (4). The Bibliomining Process: Data Warehousing and

More information

Data Mining and Exploration. Data Mining and Exploration: Introduction. Relationships between courses. Overview. Course Introduction

Data Mining and Exploration. Data Mining and Exploration: Introduction. Relationships between courses. Overview. Course Introduction Data Mining and Exploration Data Mining and Exploration: Introduction Amos Storkey, School of Informatics January 10, 2006 http://www.inf.ed.ac.uk/teaching/courses/dme/ Course Introduction Welcome Administration

More information

Data Mining for Manufacturing: Preventive Maintenance, Failure Prediction, Quality Control

Data Mining for Manufacturing: Preventive Maintenance, Failure Prediction, Quality Control Data Mining for Manufacturing: Preventive Maintenance, Failure Prediction, Quality Control Andre BERGMANN Salzgitter Mannesmann Forschung GmbH; Duisburg, Germany Phone: +49 203 9993154, Fax: +49 203 9993234;

More information

What is Customer Relationship Management? Customer Relationship Management Analytics. Customer Life Cycle. Objectives of CRM. Three Types of CRM

What is Customer Relationship Management? Customer Relationship Management Analytics. Customer Life Cycle. Objectives of CRM. Three Types of CRM Relationship Management Analytics What is Relationship Management? CRM is a strategy which utilises a combination of Week 13: Summary information technology policies processes, employees to develop profitable

More information

A STUDY OF DATA MINING ACTIVITIES FOR MARKET RESEARCH

A STUDY OF DATA MINING ACTIVITIES FOR MARKET RESEARCH 205 A STUDY OF DATA MINING ACTIVITIES FOR MARKET RESEARCH ABSTRACT MR. HEMANT KUMAR*; DR. SARMISTHA SARMA** *Assistant Professor, Department of Information Technology (IT), Institute of Innovation in Technology

More information

Gold. Mining for Information

Gold. Mining for Information Mining for Information Gold Data mining offers the RIM professional an opportunity to contribute to knowledge discovery in databases in a substantial way Joseph M. Firestone, Ph.D. During the late 1980s,

More information

The KDD Process for Extracting Useful Knowledge from Volumes of Data

The KDD Process for Extracting Useful Knowledge from Volumes of Data Knowledge Discovery in bases creates the context for developing the tools needed to control the flood of data facing organizations that depend on ever-growing databases of business, manufacturing, scientific,

More information

Healthcare Measurement Analysis Using Data mining Techniques

Healthcare Measurement Analysis Using Data mining Techniques www.ijecs.in International Journal Of Engineering And Computer Science ISSN:2319-7242 Volume 03 Issue 07 July, 2014 Page No. 7058-7064 Healthcare Measurement Analysis Using Data mining Techniques 1 Dr.A.Shaik

More information

Data Mining and KDD: A Shifting Mosaic. Joseph M. Firestone, Ph.D. White Paper No. Two. March 12, 1997

Data Mining and KDD: A Shifting Mosaic. Joseph M. Firestone, Ph.D. White Paper No. Two. March 12, 1997 1 of 11 5/24/02 3:50 PM Data Mining and KDD: A Shifting Mosaic By Joseph M. Firestone, Ph.D. White Paper No. Two March 12, 1997 The Idea of Data Mining Data Mining is an idea based on a simple analogy.

More information

Data Mining Analytics for Business Intelligence and Decision Support

Data Mining Analytics for Business Intelligence and Decision Support Data Mining Analytics for Business Intelligence and Decision Support Chid Apte, T.J. Watson Research Center, IBM Research Division Knowledge Discovery and Data Mining (KDD) techniques are used for analyzing

More information

Dynamic Data in terms of Data Mining Streams

Dynamic Data in terms of Data Mining Streams International Journal of Computer Science and Software Engineering Volume 2, Number 1 (2015), pp. 1-6 International Research Publication House http://www.irphouse.com Dynamic Data in terms of Data Mining

More information

Introduction to Data Mining

Introduction to Data Mining Introduction to Data Mining a.j.m.m. (ton) weijters (slides are partially based on an introduction of Gregory Piatetsky-Shapiro) Overview Why data mining (data cascade) Application examples Data Mining

More information

Jagir Singh, Greeshma, P Singh University of Northern Virginia. Abstract

Jagir Singh, Greeshma, P Singh University of Northern Virginia. Abstract 224 Business Intelligence Journal July DATA WAREHOUSING Ofori Boateng, PhD Professor, University of Northern Virginia BMGT531 1900- SU 2011 Business Intelligence Project Jagir Singh, Greeshma, P Singh

More information

A Spatial Decision Support System for Property Valuation

A Spatial Decision Support System for Property Valuation A Spatial Decision Support System for Property Valuation Katerina Christopoulou, Muki Haklay Department of Geomatic Engineering, University College London, Gower Street, London WC1E 6BT Tel. +44 (0)20

More information

Enhancing e-business Through Web Data Mining

Enhancing e-business Through Web Data Mining Enhancing e-business Through Web Data Mining Amy Shi 1, Allen Long 2, and David Newcomb 3 1 Accurate Business Solutions, Courtyard, Denmark Street, Wokingham, RG 40 2AZ, U.K. amy.shi@accurate.uk.com 2

More information

Three Perspectives of Data Mining

Three Perspectives of Data Mining Three Perspectives of Data Mining Zhi-Hua Zhou * National Laboratory for Novel Software Technology, Nanjing University, Nanjing 210093, China Abstract This paper reviews three recent books on data mining

More information

Customer Analysis - Customer analysis is done by analyzing the customer's buying preferences, buying time, budget cycles, etc.

Customer Analysis - Customer analysis is done by analyzing the customer's buying preferences, buying time, budget cycles, etc. Data Warehouses Data warehousing is the process of constructing and using a data warehouse. A data warehouse is constructed by integrating data from multiple heterogeneous sources that support analytical

More information

Data Mining Solutions for the Business Environment

Data Mining Solutions for the Business Environment Database Systems Journal vol. IV, no. 4/2013 21 Data Mining Solutions for the Business Environment Ruxandra PETRE University of Economic Studies, Bucharest, Romania ruxandra_stefania.petre@yahoo.com Over

More information

SPATIAL DATA CLASSIFICATION AND DATA MINING

SPATIAL DATA CLASSIFICATION AND DATA MINING , pp.-40-44. Available online at http://www. bioinfo. in/contents. php?id=42 SPATIAL DATA CLASSIFICATION AND DATA MINING RATHI J.B. * AND PATIL A.D. Department of Computer Science & Engineering, Jawaharlal

More information

International Journal of Computer Science Trends and Technology (IJCST) Volume 2 Issue 3, May-Jun 2014

International Journal of Computer Science Trends and Technology (IJCST) Volume 2 Issue 3, May-Jun 2014 RESEARCH ARTICLE OPEN ACCESS A Survey of Data Mining: Concepts with Applications and its Future Scope Dr. Zubair Khan 1, Ashish Kumar 2, Sunny Kumar 3 M.Tech Research Scholar 2. Department of Computer

More information

Data Mining to Predict Mobility Outcomes for Older Adults Receiving Home Health Care

Data Mining to Predict Mobility Outcomes for Older Adults Receiving Home Health Care Data Mining to Predict Mobility Outcomes for Older Adults Receiving Home Health Care Bonnie L. Westra, PhD, RN, FAAN, FACMI Associate Professor University of Minnesota School of Nursing Co-Authors Gowtham

More information

FREQUENT PATTERN MINING FOR EFFICIENT LIBRARY MANAGEMENT

FREQUENT PATTERN MINING FOR EFFICIENT LIBRARY MANAGEMENT FREQUENT PATTERN MINING FOR EFFICIENT LIBRARY MANAGEMENT ANURADHA.T Assoc.prof, atadiparty@yahoo.co.in SRI SAI KRISHNA.A saikrishna.gjc@gmail.com SATYATEJ.K satyatej.koganti@gmail.com NAGA ANIL KUMAR.G

More information

Case-Based Reasoning as a Heuristic Selector in a Hyper-Heuristic for Course Timetabling Problems

Case-Based Reasoning as a Heuristic Selector in a Hyper-Heuristic for Course Timetabling Problems Knowledge-Based Intelligent Information Engineering Systems and Allied Technologies, Volume 82. Proceedings of KES'02, 336-340. Sep, 2002 Case-Based Reasoning as a Heuristic Selector in a Hyper-Heuristic

More information

A Case Study in Knowledge Acquisition for Insurance Risk Assessment using a KDD Methodology

A Case Study in Knowledge Acquisition for Insurance Risk Assessment using a KDD Methodology A Case Study in Knowledge Acquisition for Insurance Risk Assessment using a KDD Methodology Graham J. Williams and Zhexue Huang CSIRO Division of Information Technology GPO Box 664 Canberra ACT 2601 Australia

More information

TOWARDS SIMPLE, EASY TO UNDERSTAND, AN INTERACTIVE DECISION TREE ALGORITHM

TOWARDS SIMPLE, EASY TO UNDERSTAND, AN INTERACTIVE DECISION TREE ALGORITHM TOWARDS SIMPLE, EASY TO UNDERSTAND, AN INTERACTIVE DECISION TREE ALGORITHM Thanh-Nghi Do College of Information Technology, Cantho University 1 Ly Tu Trong Street, Ninh Kieu District Cantho City, Vietnam

More information

Data Mining. Knowledge Discovery, Data Warehousing and Machine Learning Final remarks. Lecturer: JERZY STEFANOWSKI

Data Mining. Knowledge Discovery, Data Warehousing and Machine Learning Final remarks. Lecturer: JERZY STEFANOWSKI Data Mining Knowledge Discovery, Data Warehousing and Machine Learning Final remarks Lecturer: JERZY STEFANOWSKI Email: Jerzy.Stefanowski@cs.put.poznan.pl Data Mining a step in A KDD Process Data mining:

More information

How To Use Data Mining For Knowledge Management In Technology Enhanced Learning

How To Use Data Mining For Knowledge Management In Technology Enhanced Learning Proceedings of the 6th WSEAS International Conference on Applications of Electrical Engineering, Istanbul, Turkey, May 27-29, 2007 115 Data Mining for Knowledge Management in Technology Enhanced Learning

More information

Data Mining Techniques and Opportunities for Taxation Agencies

Data Mining Techniques and Opportunities for Taxation Agencies Data Mining Techniques and Opportunities for Taxation Agencies Florida Consultant In This Session... You will learn the data mining techniques below and their application for Tax Agencies ABC Analysis

More information

131-1. Adding New Level in KDD to Make the Web Usage Mining More Efficient. Abstract. 1. Introduction [1]. 1/10

131-1. Adding New Level in KDD to Make the Web Usage Mining More Efficient. Abstract. 1. Introduction [1]. 1/10 1/10 131-1 Adding New Level in KDD to Make the Web Usage Mining More Efficient Mohammad Ala a AL_Hamami PHD Student, Lecturer m_ah_1@yahoocom Soukaena Hassan Hashem PHD Student, Lecturer soukaena_hassan@yahoocom

More information

Defining the Landscape: Data Warehouse and Mining: Intelligence Continuum

Defining the Landscape: Data Warehouse and Mining: Intelligence Continuum Defining the Landscape: Data Warehouse and Mining: Intelligence Continuum A Work Product of the HIMSS Enterprise Information Systems Steering Committee Copyright 2007 by the Healthcare Information and

More information

A Conceptual Business Intelligence Framework for the Identification, Analysis and Visualization of Container Data Changes and its Impact on Yard

A Conceptual Business Intelligence Framework for the Identification, Analysis and Visualization of Container Data Changes and its Impact on Yard A Conceptual Business Intelligence Framework for the Identification, Analysis and Visualization of Container Data Changes and its Impact on Yard Movement Author Martijn Westbroek Student Number 850289357

More information

Assessing Data Mining: The State of the Practice

Assessing Data Mining: The State of the Practice Assessing Data Mining: The State of the Practice 2003 Herbert A. Edelstein Two Crows Corporation 10500 Falls Road Potomac, Maryland 20854 www.twocrows.com (301) 983-3555 Objectives Separate myth from reality

More information

Single Level Drill Down Interactive Visualization Technique for Descriptive Data Mining Results

Single Level Drill Down Interactive Visualization Technique for Descriptive Data Mining Results , pp.33-40 http://dx.doi.org/10.14257/ijgdc.2014.7.4.04 Single Level Drill Down Interactive Visualization Technique for Descriptive Data Mining Results Muzammil Khan, Fida Hussain and Imran Khan Department

More information

DATA QUALITY IN BUSINESS INTELLIGENCE APPLICATIONS

DATA QUALITY IN BUSINESS INTELLIGENCE APPLICATIONS DATA QUALITY IN BUSINESS INTELLIGENCE APPLICATIONS Gorgan Vasile Academy of Economic Studies Bucharest, Faculty of Accounting and Management Information Systems, Academia de Studii Economice, Catedra de

More information

On the Impact of Knowledge Discovery and Data Mining

On the Impact of Knowledge Discovery and Data Mining On the Impact of Knowledge Discovery and Data Mining Kirsten Wahlstrom School of Computer and Information Science University of South Australia GPO Box 2471, Adelaide 5001, South Australia kirsten.wahlstrom@unisa.edu.au

More information

Chapter ML:XI. XI. Cluster Analysis

Chapter ML:XI. XI. Cluster Analysis Chapter ML:XI XI. Cluster Analysis Data Mining Overview Cluster Analysis Basics Hierarchical Cluster Analysis Iterative Cluster Analysis Density-Based Cluster Analysis Cluster Evaluation Constrained Cluster

More information

Knowledge Discovery and Data Mining: Towards a Unifying Framework

Knowledge Discovery and Data Mining: Towards a Unifying Framework From: KDD-96 Proceedings. Copyright 1996, AAAI (www.aaai.org). All rights reserved. Knowledge Discovery and Data Mining: Towards a Unifying Framework Usama Fayyad Microsoft Research One Microsoft Way Redmond,

More information

Data Mining System, Functionalities and Applications: A Radical Review

Data Mining System, Functionalities and Applications: A Radical Review Data Mining System, Functionalities and Applications: A Radical Review Dr. Poonam Chaudhary System Programmer, Kurukshetra University, Kurukshetra Abstract: Data Mining is the process of locating potentially

More information

Database Marketing, Business Intelligence and Knowledge Discovery

Database Marketing, Business Intelligence and Knowledge Discovery Database Marketing, Business Intelligence and Knowledge Discovery Note: Using material from Tan / Steinbach / Kumar (2005) Introduction to Data Mining,, Addison Wesley; and Cios / Pedrycz / Swiniarski

More information

Vishnu Swaroop Computer Science and Engineering College Madan Mohan Malaviya Engineering College Gorakhpur, India Email: rsvsgkp@rediffmail.

Vishnu Swaroop Computer Science and Engineering College Madan Mohan Malaviya Engineering College Gorakhpur, India Email: rsvsgkp@rediffmail. Review and Analysis of Data Security in Data Mining Dileep Kumar Singh IT Resource Centre Madan Mohan Malaviya Engineering College Gorakhpur, India Email : gkp.dks@gmail.com Abstract In new era the information

More information

TOTAL DATA WAREHOUSING: 2013-2018

TOTAL DATA WAREHOUSING: 2013-2018 TOTAL DATA WAREHOUSING: 2013-2018 Analytic Database and Hadoop Market Sizing and Forecasts This report examines the marketplace for Total Data Warehousing including competing players, revenue generation

More information

NEW TECHNIQUE TO DEAL WITH DYNAMIC DATA MINING IN THE DATABASE

NEW TECHNIQUE TO DEAL WITH DYNAMIC DATA MINING IN THE DATABASE www.arpapress.com/volumes/vol13issue3/ijrras_13_3_18.pdf NEW TECHNIQUE TO DEAL WITH DYNAMIC DATA MINING IN THE DATABASE Hebah H. O. Nasereddin Middle East University, P.O. Box: 144378, Code 11814, Amman-Jordan

More information

The Role of Visualization in Effective Data Cleaning

The Role of Visualization in Effective Data Cleaning The Role of Visualization in Effective Data Cleaning Yu Qian Dept. of Computer Science The University of Texas at Dallas Richardson, TX 75083-0688, USA qianyu@student.utdallas.edu Kang Zhang Dept. of Computer

More information

Interactive Exploration of Decision Tree Results

Interactive Exploration of Decision Tree Results Interactive Exploration of Decision Tree Results 1 IRISA Campus de Beaulieu F35042 Rennes Cedex, France (email: pnguyenk,amorin@irisa.fr) 2 INRIA Futurs L.R.I., University Paris-Sud F91405 ORSAY Cedex,

More information

Data Mining Framework for Direct Marketing: A Case Study of Bank Marketing

Data Mining Framework for Direct Marketing: A Case Study of Bank Marketing www.ijcsi.org 198 Data Mining Framework for Direct Marketing: A Case Study of Bank Marketing Lilian Sing oei 1 and Jiayang Wang 2 1 School of Information Science and Engineering, Central South University

More information

Knowledge Discovery Process and Data Mining - Final remarks

Knowledge Discovery Process and Data Mining - Final remarks Knowledge Discovery Process and Data Mining - Final remarks Lecturer: JERZY STEFANOWSKI Institute of Computing Sciences Poznan University of Technology Poznan, Poland Lecture 14 SE Master Course 2008/2009

More information

DATA MINING - A DOMAIN SPECIFIC ANALYTICAL TOOL FOR DECISION MAKING

DATA MINING - A DOMAIN SPECIFIC ANALYTICAL TOOL FOR DECISION MAKING International Journal of Emerging Trends in Engineering Research (IJETER), Vol. 3 No.6, Pages : 157-167 (2015) DATA MINING - A DOMAIN SPECIFIC ANALYTICAL TOOL FOR DECISION MAKING Ms. Somanjoli Mohapatra

More information

DATA MINING AND WAREHOUSING CONCEPTS

DATA MINING AND WAREHOUSING CONCEPTS CHAPTER 1 DATA MINING AND WAREHOUSING CONCEPTS 1.1 INTRODUCTION The past couple of decades have seen a dramatic increase in the amount of information or data being stored in electronic format. This accumulation

More information

Text Mining: The state of the art and the challenges

Text Mining: The state of the art and the challenges Text Mining: The state of the art and the challenges Ah-Hwee Tan Kent Ridge Digital Labs 21 Heng Mui Keng Terrace Singapore 119613 Email: ahhwee@krdl.org.sg Abstract Text mining, also known as text data

More information

Data Mining: Concepts and Techniques

Data Mining: Concepts and Techniques Data Mining: Concepts and Techniques Chapter 1 Introduction SURESH BABU M ASST PROF IT DEPT VJIT 1 Chapter 1. Introduction Motivation: Why data mining? What is data mining? Data Mining: On what kind of

More information

CRM - Customer Relationship Management

CRM - Customer Relationship Management CRM - Customer Relationship Management 1 Customer power Consumer choices gains importance in the decision making process of companies and they feel the need to think like a customer than a producer. 2

More information

Data Mining Analysis of a Complex Multistage Polymer Process

Data Mining Analysis of a Complex Multistage Polymer Process Data Mining Analysis of a Complex Multistage Polymer Process Rolf Burghaus, Daniel Leineweber, Jörg Lippert 1 Problem Statement Especially in the highly competitive commodities market, the chemical process

More information

Framework for Data Mining In Healthcare Information System in Developing Countries: A Case of Tanzania

Framework for Data Mining In Healthcare Information System in Developing Countries: A Case of Tanzania International Journal of Computational Engineering Research Vol, 03 Issue, 10 Framework for Data Mining In Healthcare Information System in Developing Countries: A Case of Tanzania 1, Salim Amour Diwani,

More information

Data Science at U of U

Data Science at U of U Data Science at U of U Je M. Phillips Assistant Professor, School of Computing Center for Extreme Data Management, Analysis, and Visualization Director, Data Management and Analysis Track University of

More information

The Management and Mining of Multiple Predictive Models Using the Predictive Modeling Markup Language (PMML)

The Management and Mining of Multiple Predictive Models Using the Predictive Modeling Markup Language (PMML) The Management and Mining of Multiple Predictive Models Using the Predictive Modeling Markup Language (PMML) Robert Grossman National Center for Data Mining, University of Illinois at Chicago & Magnify,

More information

Explanation-Oriented Association Mining Using a Combination of Unsupervised and Supervised Learning Algorithms

Explanation-Oriented Association Mining Using a Combination of Unsupervised and Supervised Learning Algorithms Explanation-Oriented Association Mining Using a Combination of Unsupervised and Supervised Learning Algorithms Y.Y. Yao, Y. Zhao, R.B. Maguire Department of Computer Science, University of Regina Regina,

More information

Machine Learning, Data Mining, and Knowledge Discovery: An Introduction

Machine Learning, Data Mining, and Knowledge Discovery: An Introduction Machine Learning, Data Mining, and Knowledge Discovery: An Introduction AHPCRC Workshop - 8/17/10 - Dr. Martin Based on slides by Gregory Piatetsky-Shapiro from Kdnuggets http://www.kdnuggets.com/data_mining_course/

More information

relevant to the management dilemma or management question.

relevant to the management dilemma or management question. CHAPTER 5: Clarifying the Research Question through Secondary Data and Exploration (Handout) A SEARCH STRATEGY FOR EXPLORATION Exploration is particularly useful when researchers lack a clear idea of the

More information

Mining an Online Auctions Data Warehouse

Mining an Online Auctions Data Warehouse Proceedings of MASPLAS'02 The Mid-Atlantic Student Workshop on Programming Languages and Systems Pace University, April 19, 2002 Mining an Online Auctions Data Warehouse David Ulmer Under the guidance

More information

Example application (1) Telecommunication. Lecture 1: Data Mining Overview and Process. Example application (2) Health

Example application (1) Telecommunication. Lecture 1: Data Mining Overview and Process. Example application (2) Health Lecture 1: Data Mining Overview and Process What is data mining? Example applications Definitions Multi disciplinary Techniques Major challenges The data mining process History of data mining Data mining

More information

Toward Standardization in Privacy-Preserving Data Mining

Toward Standardization in Privacy-Preserving Data Mining Toward Standardization in Privacy-Preserving Data Mining Stanley R. M. Oliveira 1,2 and Osmar R. Zaïane 1 {oliveira zaiane}@cs.ualberta.ca 1 Department of Computing Science University of Alberta, Edmonton,

More information

Revenue Recovering with Insolvency Prevention on a Brazilian Telecom Operator

Revenue Recovering with Insolvency Prevention on a Brazilian Telecom Operator Revenue Recovering with Insolvency Prevention on a Brazilian Telecom Operator Carlos André R. Pinheiro Brasil Telecom SIA Sul ASP Lote D Bloco F 71.215-000 Brasília, DF, Brazil andrep@brasiltelecom.com.br

More information

Knowledge-Driven Decision Support System Based on Knowledge Warehouse and Data Mining for Market Management

Knowledge-Driven Decision Support System Based on Knowledge Warehouse and Data Mining for Market Management Knowledge-Driven Decision Support System Based on Knowledge Warehouse and Data Mining for Market Management Dr. Murtadha M. Hamad 1 and Banaz Anwer Qader 2 1,2 College of Computer - Anbar University Anbar

More information

Healthcare Applications of Knowledge Discovery in Databases

Healthcare Applications of Knowledge Discovery in Databases Healthcare Applications of Knowledge Discovery in Databases Kristin B. DeGruy, MSHS ABSTRACT Many healthcare leaders find themselves overwhelmed with data, but lack the information they need to make informed

More information

Cost Drivers of a Parametric Cost Estimation Model for Data Mining Projects (DMCOMO)

Cost Drivers of a Parametric Cost Estimation Model for Data Mining Projects (DMCOMO) Cost Drivers of a Parametric Cost Estimation Model for Mining Projects (DMCOMO) Oscar Marbán, Antonio de Amescua, Juan J. Cuadrado, Luis García Universidad Carlos III de Madrid (UC3M) Abstract Mining is

More information

Introduction to Data Mining and Business Intelligence Lecture 1/DMBI/IKI83403T/MTI/UI

Introduction to Data Mining and Business Intelligence Lecture 1/DMBI/IKI83403T/MTI/UI Introduction to Data Mining and Business Intelligence Lecture 1/DMBI/IKI83403T/MTI/UI Yudho Giri Sucahyo, Ph.D, CISA (yudho@cs.ui.ac.id) Faculty of Computer Science, University of Indonesia Objectives

More information

Lluis Belanche + Alfredo Vellido. Intelligent Data Analysis and Data Mining

Lluis Belanche + Alfredo Vellido. Intelligent Data Analysis and Data Mining Lluis Belanche + Alfredo Vellido Intelligent Data Analysis and Data Mining a.k.a. Data Mining II Office 319, Omega, BCN EET, office 107, TR 2, Terrassa avellido@lsi.upc.edu skype, gtalk: avellido Tels.:

More information

INTERNATIONAL JOURNAL FOR ENGINEERING APPLICATIONS AND TECHNOLOGY DATA MINING IN HEALTHCARE SECTOR. ankitanandurkar2394@gmail.com

INTERNATIONAL JOURNAL FOR ENGINEERING APPLICATIONS AND TECHNOLOGY DATA MINING IN HEALTHCARE SECTOR. ankitanandurkar2394@gmail.com IJFEAT INTERNATIONAL JOURNAL FOR ENGINEERING APPLICATIONS AND TECHNOLOGY DATA MINING IN HEALTHCARE SECTOR Bharti S. Takey 1, Ankita N. Nandurkar 2,Ashwini A. Khobragade 3,Pooja G. Jaiswal 4,Swapnil R.

More information

Using Big Data to Advance Healthcare Gregory J. Moore MD, PhD February 4, 2014

Using Big Data to Advance Healthcare Gregory J. Moore MD, PhD February 4, 2014 Using Big Data to Advance Healthcare Gregory J. Moore MD, PhD February 4, 2014 Sequencing Technology - Hype Cycle (Gartner) Gartner - Hype Cycle for Healthcare Provider Applications, Analytics and Systems,

More information

Standardization of Components, Products and Processes with Data Mining

Standardization of Components, Products and Processes with Data Mining B. Agard and A. Kusiak, Standardization of Components, Products and Processes with Data Mining, International Conference on Production Research Americas 2004, Santiago, Chile, August 1-4, 2004. Standardization

More information

A Review on Data Mining: Its Challenges, Issues and Applications

A Review on Data Mining: Its Challenges, Issues and Applications Review Article International Journal of Current Engineering and Technology ISSN 2277-4106 2013 INPRESSCO. All Rights Reserved. Available at http://inpressco.com/category/ijcet A Review on Data Mining:

More information

How To Create A Healthcare Data Management For Providers Solution From An Informatica Data Management Solution

How To Create A Healthcare Data Management For Providers Solution From An Informatica Data Management Solution White Paper Healthcare Data Management for Providers Expanding Insight, Increasing Efficiency, Improving Care This document contains Confidential, Proprietary and Trade Secret Information ( Confidential

More information

Data Mining is sometimes referred to as KDD and DM and KDD tend to be used as synonyms

Data Mining is sometimes referred to as KDD and DM and KDD tend to be used as synonyms Data Mining Techniques forcrm Data Mining The non-trivial extraction of novel, implicit, and actionable knowledge from large datasets. Extremely large datasets Discovery of the non-obvious Useful knowledge

More information

ETPL Extract, Transform, Predict and Load

ETPL Extract, Transform, Predict and Load ETPL Extract, Transform, Predict and Load An Oracle White Paper March 2006 ETPL Extract, Transform, Predict and Load. Executive summary... 2 Why Extract, transform, predict and load?... 4 Basic requirements

More information

Data Warehousing: A Technology Review and Update Vernon Hoffner, Ph.D., CCP EntreSoft Resouces, Inc.

Data Warehousing: A Technology Review and Update Vernon Hoffner, Ph.D., CCP EntreSoft Resouces, Inc. Warehousing: A Technology Review and Update Vernon Hoffner, Ph.D., CCP EntreSoft Resouces, Inc. Introduction Abstract warehousing has been around for over a decade. Therefore, when you read the articles

More information

20 A Visualization Framework For Discovering Prepaid Mobile Subscriber Usage Patterns

20 A Visualization Framework For Discovering Prepaid Mobile Subscriber Usage Patterns 20 A Visualization Framework For Discovering Prepaid Mobile Subscriber Usage Patterns John Aogon and Patrick J. Ogao Telecommunications operators in developing countries are faced with a problem of knowing

More information

2.1. Data Mining for Biomedical and DNA data analysis

2.1. Data Mining for Biomedical and DNA data analysis Applications of Data Mining Simmi Bagga Assistant Professor Sant Hira Dass Kanya Maha Vidyalaya, Kala Sanghian, Distt Kpt, India (Email: simmibagga12@gmail.com) Dr. G.N. Singh Department of Physics and

More information

Rule based Classification of BSE Stock Data with Data Mining

Rule based Classification of BSE Stock Data with Data Mining International Journal of Information Sciences and Application. ISSN 0974-2255 Volume 4, Number 1 (2012), pp. 1-9 International Research Publication House http://www.irphouse.com Rule based Classification

More information

A Business Intelligence Training Document Using the Walton College Enterprise Systems Platform and Teradata University Network Tools Abstract

A Business Intelligence Training Document Using the Walton College Enterprise Systems Platform and Teradata University Network Tools Abstract A Business Intelligence Training Document Using the Walton College Enterprise Systems Platform and Teradata University Network Tools Jeffrey M. Stewart College of Business University of Cincinnati stewajw@mail.uc.edu

More information

Editors Prof. Amos DAVID & Prof. Charles UWADIA

Editors Prof. Amos DAVID & Prof. Charles UWADIA 1 Editors Prof. Amos DAVID & Prof. Charles UWADIA Decision Support System to assist Health Service Administrators using the concepts of Observatory and Competitive Intelligence BREMANG Appah Department

More information

DATA MINING AND KNOWLEDGE DISCOVERY FROM RESEARCH PROBLEMS

DATA MINING AND KNOWLEDGE DISCOVERY FROM RESEARCH PROBLEMS DATA MINING AND KNOWLEDGE DISCOVERY FROM RESEARCH PROBLEMS Kamlesh Kumar 1, Bhavesh Kumar Chauhan 2, J.P. Pandey 3, Arvind Kumar Tomer 4 Abstract As in reference this paper begins with the definition of

More information

Data Mart/Warehouse: Progress and Vision

Data Mart/Warehouse: Progress and Vision Data Mart/Warehouse: Progress and Vision Institutional Research and Planning University Information Systems What is data warehousing? A data warehouse: is a single place that contains complete, accurate

More information

Why do statisticians "hate" us?

Why do statisticians hate us? Why do statisticians "hate" us? David Hand, Heikki Mannila, Padhraic Smyth "Data mining is the analysis of (often large) observational data sets to find unsuspected relationships and to summarize the data

More information

In-Database Analytics

In-Database Analytics Embedding Analytics in Decision Management Systems In-database analytics offer a powerful tool for embedding advanced analytics in a critical component of IT infrastructure. James Taylor CEO CONTENTS Introducing

More information

Data Catalogs for Hadoop Achieving Shared Knowledge and Re-usable Data Prep. Neil Raden Hired Brains Research, LLC

Data Catalogs for Hadoop Achieving Shared Knowledge and Re-usable Data Prep. Neil Raden Hired Brains Research, LLC Data Catalogs for Hadoop Achieving Shared Knowledge and Re-usable Data Prep Neil Raden Hired Brains Research, LLC Traditionally, the job of gathering and integrating data for analytics fell on data warehouses.

More information

A Comparison of Approaches For Maximizing Business Payoff of Prediction Models

A Comparison of Approaches For Maximizing Business Payoff of Prediction Models From: KDD-96 Proceedings. Copyright 1996, AAAI (www.aaai.org). All rights reserved. A Comparison of Approaches For Maximizing Business Payoff of Prediction Models Brij Masand and Gregory Piatetsky-Shapiro

More information

Information Security in Big Data using Encryption and Decryption

Information Security in Big Data using Encryption and Decryption International Research Journal of Computer Science (IRJCS) ISSN: 2393-9842 Information Security in Big Data using Encryption and Decryption SHASHANK -PG Student II year MCA S.K.Saravanan, Assistant Professor

More information

Gaining Strategic Advantage through Bibliomining: Scott Nicholson. Jeffrey Stanton. Syracuse University School of Information Studies.

Gaining Strategic Advantage through Bibliomining: Scott Nicholson. Jeffrey Stanton. Syracuse University School of Information Studies. Preprint version of Nicholson, S. & Stanton, J. (2003). Gaining strategic advantage through bibliomining: Data mining for management decisions in corporate, special, digital, and traditional libraries.

More information

ECLT 5810 E-Commerce Data Mining Techniques - Introduction. Prof. Wai Lam

ECLT 5810 E-Commerce Data Mining Techniques - Introduction. Prof. Wai Lam ECLT 5810 E-Commerce Data Mining Techniques - Introduction Prof. Wai Lam Data Opportunities Business infrastructure have improved the ability to collect data Virtually every aspect of business is now open

More information

A STUDY ON DATA MINING INVESTIGATING ITS METHODS, APPROACHES AND APPLICATIONS

A STUDY ON DATA MINING INVESTIGATING ITS METHODS, APPROACHES AND APPLICATIONS A STUDY ON DATA MINING INVESTIGATING ITS METHODS, APPROACHES AND APPLICATIONS Mrs. Jyoti Nawade 1, Dr. Balaji D 2, Mr. Pravin Nawade 3 1 Lecturer, JSPM S Bhivrabai Sawant Polytechnic, Pune (India) 2 Assistant

More information

A Framework for Data Warehouse Using Data Mining and Knowledge Discovery for a Network of Hospitals in Pakistan

A Framework for Data Warehouse Using Data Mining and Knowledge Discovery for a Network of Hospitals in Pakistan , pp.217-222 http://dx.doi.org/10.14257/ijbsbt.2015.7.3.23 A Framework for Data Warehouse Using Data Mining and Knowledge Discovery for a Network of Hospitals in Pakistan Muhammad Arif 1,2, Asad Khatak

More information

Data Security and Privacy in Data Mining: Research Issues & Preparation

Data Security and Privacy in Data Mining: Research Issues & Preparation Data Security and Privacy in Data Mining: Research Issues & Preparation Dileep Kumar Singh #1, Vishnu Swaroop *2 # IT Resource Centre Madan Mohan Malaviya Engineering College, Gorakhpur, India * Dept.

More information

Overview Applications of Data Mining In Health Care: The Case Study of Arusha Region

Overview Applications of Data Mining In Health Care: The Case Study of Arusha Region International Journal of Computational Engineering Research Vol, 03 Issue, 8 Overview Applications of Data Mining In Health Care: The Case Study of Arusha Region 1, Salim Diwani, 2, Suzan Mishol, 3, Daniel

More information

Information Visualization WS 2013/14 11 Visual Analytics

Information Visualization WS 2013/14 11 Visual Analytics 1 11.1 Definitions and Motivation Lot of research and papers in this emerging field: Visual Analytics: Scope and Challenges of Keim et al. Illuminating the path of Thomas and Cook 2 11.1 Definitions and

More information

An Overview of Temporal Data Mining

An Overview of Temporal Data Mining An Overview of Temporal Data Mining Weiqiang Lin Department of Computing I.C.S., Macquarie University Sydney, NSW 2109, Australia wlin@ics.mq.edu.au Mehmet A. Orgun Department of Computing I.C.S., Macquarie

More information

Decision Support System for predicting Football Game result

Decision Support System for predicting Football Game result Decision Support System for predicting Football Game result João Gomes, Filipe Portela, Manuel Filipe Santos Abstract there is an increase of bookmaker s number over the last decade, leading to the conclusion

More information

While people are often a corporation s true intellectual property, data is what

While people are often a corporation s true intellectual property, data is what While people are often a corporation s true intellectual property, data is what feeds the people, enabling employees to see where the company stands and where it will go. Quick access to quality data helps

More information

Addressing the Challenges of Data Governance

Addressing the Challenges of Data Governance Debbie Schmidt FIS Consulting Services www.fisglobal.com Executive Summary Addressing the Challenges of Sound bank management ceases to exist without reliable, accurate information. This paper will explore

More information

The Informatica Solution for Improper Payments

The Informatica Solution for Improper Payments The Informatica Solution for Improper Payments Reducing Improper Payments and Improving Fiscal Accountability for Government Agencies WHITE PAPER This document contains Confidential, Proprietary and Trade

More information