Quantitative research methods in business studies (doctoral course; 7,5 ECTS credits)



Similar documents
Quantitative research methods in business studies (doctoral course; 7,5 ECTS credits)

Executive Master of Public Administration. QUANTITATIVE TECHNIQUES I For Policy Making and Administration U6310, Sec. 03

Business Analytics (AQM5201)

SOCIOLOGY 311 RESEARCH METHODS

Curriculum - Doctor of Philosophy

BM3375 ADVANCED MARKET RESEARCH

Sociology 105: Research Design and Sociological Methods Spring 2014 Dr. Christopher Sullivan

DPLS 722 Quantitative Data Analysis

Research Methods & Experimental Design

Total Credits: 30 credits are required for master s program graduates and 51 credits for undergraduate program.

Fairfield Public Schools

Executive Master of Public Administration. QUANTITATIVE TECHNIQUES I For Policy Making and Administration U6311, Sec. 003

Courses Descriptions. Courses Generally Taken in Program Year One

Masters Programs Course Syllabus

Econometrics and Data Analysis I

DBA Courses and Sequence (2015-)

PHD PROGRAM IN FINANCE COURSE PROGRAMME AND COURSE CONTENTS

COURSE DESCPRIPTIONS. ZSEM international summer school June 27-July Zagreb School of Economics and Management, Zagreb, Croatia

Department of. Curriculum, Foundations, and Reading. Curriculum, Foundations, and Reading. Degrees. Endorsement. Doctoral Degrees

Prospects, Problems of Marketing Research and Data Mining in Turkey

JOHN R. MCCONNELL, III

Course Descriptions. Seminar in Organizational Behavior II

Ph.D. DEGREE IN ORGANIZATIONAL LEADERSHIP

School of Labor and Human Resources PhD program

Course Sequence Diagram Doctor of Business Administration

B2aiii. Acquiring knowledge and practicing principles of ethical professional practice.

Teaching model: C1 a. General background: 50% b. Theory-into-practice/developmental 50% knowledge-building: c. Guided academic activities:

The impact of quality management principles on business performance. A comparison between manufacturing and service organisations

NORTHWESTERN UNIVERSITY Department of Statistics. Fall 2012 Statistics 210 Professor Savage INTRODUCTORY STATISTICS FOR THE SOCIAL SCIENCES

Contextual factors that influence learning effectiveness: Hospitality students perspectives

MSc Financial Economics.

Advanced Psychological Statistics I. PSYX 520 Autumn 2015

Bachman, R., & Schutt, R. K. (2014). The Practice of Research in Criminology and Criminal Justice (5th ed.). Los Angeles, CA: Sage.

HYPOTHESIS TESTING: CONFIDENCE INTERVALS, T-TESTS, ANOVAS, AND REGRESSION

Curriculum Development for Doctoral Studies in Education

MASTER OF PHILOSOPHY IN RISK PSYCHOLOGY, ENVIRONMENT AND SAFETY

The University of Texas at Austin School of Social Work SOCIAL WORK STATISTICS

INSTITUTE OF CONTINUING AND DISTANCE EDUCATION

DATA ANALYSIS. QEM Network HBCU-UP Fundamentals of Education Research Workshop Gerunda B. Hughes, Ph.D. Howard University

Psychology (MA) Program Requirements 36 credits are required for the Master's Degree in Psychology as follows:

DESIGNING A QUALITATIVE RESEARCH CONCEPTUAL FRAMEWORK AND RESEARCH QUESTIONS. Nicholas J. Sitko PROJECT: INDABA AGRICULTURAL POLICY RESEARCH INSTITUTE

Doctor of Science in Emergency Management

BMM652 FOUNDATIONS OF MARKETING SCIENCE

1 Goals & Prerequisites

... About the PhD Program in Management, Finance and Accounting

SOCIOLOGY 311 RESEARCH METHODS

E-LEADERSHIP FOR PROJECT MANAGERS: A STUDY OF SITUATIONAL LEADERSHIP AND VIRTUAL PROJECT SUCCESS. Margaret R. Lee, Ph.D., PMP.

When I first tried written assignments in my large-enrollment classes,

The Power of Customer Relationship Management in Enhancing Product Quality and Customer Satisfaction

5 Winter & Summer W4182

WARSAW SCHOOL OF ECONOMICS

STA-201-TE. 5. Measures of relationship: correlation (5%) Correlation coefficient; Pearson r; correlation and causation; proportion of common variance

Alice P. Naylor, Program Director and Professor Ph.D., University of Toledo

Service courses for graduate students in degree programs other than the MS or PhD programs in Biostatistics.

MKX4080 Quantitative research methods in marketing. Unit Guide. Semester 1, 2015

Virginia Tech Department of Accounting and Information Systems Ph.D. Program GENERAL INFORMATION

MKTG MARKETING RESEARCH 2010 INSTRUCTOR INFORMATION

Learning Objectives Lean Six Sigma Black Belt Course

Introduction to Research Methods and Applied Data Analysis

Influence of Tactical Factors on ERP Projects Success

Doctor of Public Health Health Behavior Department of Prevention and Community Health Program Director

Name of the module: Multivariate biostatistics and SPSS Number of module:

Chapter 8: Quantitative Sampling

Study on the Working Capital Management Efficiency in Indian Leather Industry- An Empirical Analysis

Developing Critical Thinking: Student Perspectives LILAC 10 Discussion Paper Dr Angus Nurse, University of Lincoln

FDU-Vancouver Bachelor of Science in Business Administration International Business Concentration Course Descriptions

Business Statistics. Successful completion of Introductory and/or Intermediate Algebra courses is recommended before taking Business Statistics.

MBAD/DSBA 6278 (U90): Innovation Analytics (IA)

DEPARTMENT OF INFORMATION AND LIBRARY SCIENCE

Module handbook. M.Sc. Sport Management [M.Sc. SMA] Valid for students who started: Winter term semester 2014/15

The Role of Controlled Experiments in Software Engineering Research

IMPACT OF TRUST, PRIVACY AND SECURITY IN FACEBOOK INFORMATION SHARING

Management MBA (MGMTMBA)

Educational Administration, K-12 Educational Leadership Department of Professional Studies. Ph.D. Program Requirements

PHD SPECIALIZATION IN HOSPITALITY ADMINISTRATION SCHOOL OF HOTEL AND RESTAURANT ADMINISTRATION COLLEGE OF HUMAN SCIENCES OKLAHOMA STATE UNIVERSITY

Master's of Public Administration (Courses Option)

PROBABILITY AND STATISTICS. Ma To teach a knowledge of combinatorial reasoning.

MSc Money and Banking Programme Specification. Course Title

Introduction to Regression and Data Analysis

Tel: Tuesdays 12:00-2:45

James E. Bartlett, II is Assistant Professor, Department of Business Education and Office Administration, Ball State University, Muncie, Indiana.

Projects Involving Statistics (& SPSS)

CRITICAL WRITING WORKSHOP

Department of Industrial Engineering

Exploring the Drivers of E-Commerce through the Application of Structural Equation Modeling

Accounting. Management. Environment of Business. Business Law for Accountants. Stats Business & Econ I. Management

Survey Research: Choice of Instrument, Sample. Lynda Burton, ScD Johns Hopkins University

King Saud University. Deanship of Graduate Studies. College of Business Administration. Council of Graduate Programs in Business Administration

Social Media Marketing Management 社 會 媒 體 行 銷 管 理 確 認 性 因 素 分 析. (Confirmatory Factor Analysis) 1002SMMM12 TLMXJ1A Tue 12,13,14 (19:20-22:10) D325

COLLEGE OF ENGINEERING

Psychology Courses (PSYCH)

Management Accounting

Public Administration

Transcription:

Quantitative research methods in business studies (doctoral course; 7,5 ECTS credits) Course director Mandar Dabhilkar, associate professor of operations management, email: mda@fek.su.se Learning objectives The aim of this course is to introduce new doctoral students to quantitative research methods in business studies. On successful completion of the course students are expected to be able to: Describe basic ideas, underlying assumptions, and elements of design and implementation of different research approaches, data collection, and analysis techniques available to a quantitative researcher in the field of business studies, e.g., surveys, patent data, hospital and patient data and event studies Reflect over contemporary methodological problems and possible solutions Understand how to report and read quantitative research in a critical and publishable way Be familiar with basic central concepts associated with quantitative methods, such as statistical inference, statistical association and causation among variables Be familiar with and able to use basic multivariate data analysis techniques, using computer based statistical packages such as SPSS 1

Content The course deals with the following topics: Differences between qualitative and quantitative research The quantitative research process: models, constructs, measurement, design Use of primary data sources such as in survey research Use of secondary data sources such as in patent data-, health care hospital and patient data-, bibliometrical- and event studies Validity and reliability Pooling data across transparently different groups of key informants Techniques for improving response rates Introduction to SPSS Basic statistical analysis: summarizing and describing samples of data Statistical inference (from samples to populations): probability; estimation; hypothesis testing for relationships between variables and comparing groups. Statistical association and causation among variables Key statistical tests of hypothesis: t-tests; Chi-Square, F-test Analysis of Variance (ANOVA) Regression analysis Multiple regression analysis Factor analysis Cluster analysis Teaching and learning activities The course consists of seminars, lectures and exercises. The emphasis is on business studies which for example will be reflected in the reading list for each seminar and the statistical exercises. There are six parts: 1. Seminar on quantitative research methodology in business studies 2. Seminar on survey research 3. Seminar on patent data- and hospital and patient data studies 4. Seminar on event study methods 5. Lecture and exercise on descriptive statistics 6. Lecture and exercise on multivariate statistics and hypothesis testing 2

Preliminary reading list (subject to change) Seminar on survey research Forza, C. (2002). Survey research in operations management: A process based perspective. International Journal of Operations & Production Management, 22(2), 152-194. Rungtusanatham, M., Ng, C. H., Zhao, X., & Lee, T. S. (2008). Pooling Data Across Transparently Different Groups of Key Informants: Measurement Equivalence and Survey Research*. Decision Sciences, 39(1), 115-145. doi: 10.1111/j.1540-5915.2008.00184.x Frohlich, M. T. (2002). Techniques for improving response rates in OM survey research. Journal of Operations Management, 20(1), 53-62. Boyer, K. K., & Pagell, M. (2000). Measurement issues in empirical research: improving measures of operations strategy and advanced manufacturing technology. Journal of Operations Management, 18(3), 361-374. doi: 10.1016/s0272-6963(99)00029-7 Boyer, K. K., & Lewis, M. W. (2002). COMPETITIVE PRIORITIES: INVESTIGATING THE NEED FOR TRADE-OFFS IN OPERATIONS STRATEGY. Production and Operations Management, 11(1), 9-20. doi: 10.1111/j.1937-5956.2002.tb00181.x Ferdows, K., & De Meyer, A. (1990). Lasting Improvements in Manufacturing Performance: In Search of a New Theory. Journal of Operations Management, 9(2), 168-184. Dabhilkar, M. (2011). Trade-offs in make-buy decisions. Journal of Purchasing and Supply Management, 17(3), 158-166. doi: 10.1016/j.pursup.2011.04.002 González-Benito, J. (2007). A theory of purchasing's contribution to business performance. Journal of Operations Management, 25(4), 901-917. Seminar on patent data- and hospital and patient data studies: Bergek, A, Tell, F, Berggren, C & Watson, J. (2008) Technological capabilities and late shakeouts: industrial dynamics in the advanced gas turbine industry, 1987 2002, Industrial and Corporate Change, 17(2): 335-392 Brusoni, S., Prencipe, A., & Pavitt, K. (2001) Knowledge Specialization, Organizational Coupling, and the Boundaries of the Firm: Why Do Firms Know More than They Make? Administrative Sciences Quarterly, Vol 46, No 4, pp 597-621 3

Capkun, V., Messner, M., & Rissbacher, C. (2012). Service specialization and operational performance in hospitals. International Journal of Operations & Production Management, 32(4), 468-495. McDermott, C. M., & Stock, G. N. (2011). Focus as emphasis: conceptual and performance implications for hospitals. Journal of Operations Management, 29(6), 616-626. Clark, J. R., & Huckman, R. S. (2012). Broadening focus: Spillovers, complementarities, and specialization in the hospital industry. Management Science, 58(4), 708-722. Clark, J. R. (2012). Comorbidity and the Limitations of Volume and Focus as Organizing Principles. Medical Care Research and Review, 69(1), 83-102. KC, D. S., & Terwiesch, C. (2011). The effects of focus on performance: Evidence from California hospitals. Management Science, 57(11), 1897-1912. Seminar on event study methods Hendricks, K. B., V. R. Singhal. 2003. "The effect of supply chain glitches on shareholder value. Journal of Operations Management, 21, 5, December 2003, Pages 501-522. Hendricks, K. B., V. R. Singhal, V. R. 2001. "The Long-Run Stock Price performance of Firms with Effective TQM Programs as Proxied by Quality Award Winners". Management Science, 47, 359-368. Hendricks, K. B. and Singhal, V. R. 2008. The effect of product introduction delays on operating performance. Management Science, 54, 878-892. Brown, S., J. Warner. 1985. "Using daily stock returns: The case of event studies". Journal of Financial Economics, 14, 3-31. MacKinlay, C. A. 1997. The event studies in economics and finance. Journal of Economic Literature, 35, 13-39. Barber, B. M., J. D. Lyon. 1997. Detecting Long-Run Abnormal Stock Returns: The Empirical Power and Specification of Test-Statistics. Journal of Financial Economics, 43, 341-372. Kothari, S. P., J. B. Warner. 1997. Measuring Long-Horizon Security Price Performance. Journal of Financial Economics, 43, 301-339. 4

Reference literature for statistical exercises Hair, J. P., Anderson, R. E., Tatham, R. L., & Black, W. C. (1998). Multivariate data analysis. New Jersey: Prentice Hall. Examination The course is examined through active participation in seminars and exercises and through one final assignment. The final assignment consists of three parts: 1. Discussion of how one or more of the approaches to data collection possibly could be adopted in the doctoral student s own research, eg survey, patent- or patient data and/or event studies. Reflect on advantages and disadvantages with the selected approaches. 2. Selection of a few articles that are based on quantitative research methods in the doctoral student s dissertation area (eg marketing, finance, accounting, operations management or organization studies) and reflect on key particularities for their field. 3. Using and trying out statistical techniques taught in the course, eg descriptive statistics, regression analysis and factor analysis. A dataset and instructions will be provided by the course director. The student s performance in relation to the learning objectives for the course is assessed according to a pass/fail grading scale. Further guidelines and criteria will be distributed in due course. Schedule April 22: 09-13 April 29: 09-13 May 6: 09-13 May 13: 09-13 May 20: 09-13 May 27: 09-13 All meetings in room Svante Sköldberg, building no. 15, 3 rd floor. 5