Quantitative Analysis Su White

Slides:



Advertisements
Similar presentations
Program Goals Just Arent Enough: Strategies for Putting Learning Outcomes into Words Dr. Jill L. Lane Research Associate/Program Manager Schreyer Institute.
Advertisements

SPSS Session 1: Levels of Measurement and Frequency Distributions
Agenda for January 27 th Administrative Items/Announcements Attendance Handout: presentation signup Pictures today! Finish this week’s topic: Research.
Chapter 13 Conducting & Reading Research Baumgartner et al Data Analysis.
Statistics for Decision Making Descriptive Statistics QM Fall 2003 Instructor: John Seydel, Ph.D.
INTERPRET MARKETING INFORMATION TO TEST HYPOTHESES AND/OR TO RESOLVE ISSUES. INDICATOR 3.05.
Nemours Biomedical Research Statistics March 2009 Tim Bunnell, Ph.D. & Jobayer Hossain, Ph.D. Nemours Bioinformatics Core Facility.
1 Economics 240A Power One. 2 Outline w Course Organization w Course Overview w Resources for Studying.
Chapter 13 Analyzing Quantitative data. LEVELS OF MEASUREMENT Nominal Measurement Ordinal Measurement Interval Measurement Ratio Measurement.
Chapter 14 Analyzing Quantitative Data. LEVELS OF MEASUREMENT Nominal Measurement Nominal Measurement Ordinal Measurement Ordinal Measurement Interval.
QM Spring 2002 Statistics for Decision Making Descriptive Statistics.
Embedding NVivo in postgraduate social research training Howard Davis & Anne Krayer 6 th ESRC Research Methods Festival 8-10 July 2014.
Graphing Scientific Data From a Mathematics Across the Curriculum (MAC) coordinated studies class with Biology 201 (Fall 2000) at Edmonds Community College.
RESUME WRITING TIPS FEA Career Development Center.
NSW Curriculum and Learning Innovation Centre Tinker with Tinker Plots Elaine Watkins, Senior Curriculum Officer, Numeracy.
Teaching statistics: what I have learned (so far) John Reidy Sheffield Hallam University Co-sponsored by: Scottish Universities Psychology.
Statistics 3502/6304 Prof. Eric A. Suess Chapter 3.
Research Methods in Computer Science Lecture: Quantitative and Qualitative Data Analysis | Department of Science | Interactive Graphics System.
EDIT 6900: Research Methods in Instructional Technology UGA, Instructional Technology Spring, 2008 If you can hear audio, click If you cannot hear audio,
1.
Education 793 Class Notes Welcome! 3 September 2003.
Developing Student Researchers Part 4 Dr. Gene and Ms. Tarfa Al- Naimi Research Skills Development Unit Education Institute.
Unit 2: Engineering Design Process
Dr. Engr. Sami ur Rahman Quantitative and Qualitative Data Analysis Lecture 1: Introduction.
Analyzing and Interpreting Quantitative Data
TAUCHI – Tampere Unit for Computer-Human Interaction 1 Statistical Models of Human Performance I. Scott MacKenzie.
Very Short Guide to Stats for SGR Basics of aggregate and statistical data.
© 2005 McGraw-Hill Ryerson Ltd. 1-1 Statistics A First Course Donald H. Sanders Robert K. Smidt Aminmohamed Adatia Glenn A. Larson.
How to read a scientific paper
Analyzing Research Data and Presenting Findings
Developing online activities for postgraduate students in computing Centre for Open Learning of Mathematics, Science, Computing and Technology (COLMSCT)
Research Seminars in IT in Education (MIT6003) Quantitative Educational Research Design 2 Dr Jacky Pow.
Developing Professional Presentations San Jose State University Department of Human Performance 2010.
Educational Research: Competencies for Analysis and Application, 9 th edition. Gay, Mills, & Airasian © 2009 Pearson Education, Inc. All rights reserved.
Social Science Inquiry Model. Scientific inquiry has 5 steps Identify a problem Develop a hypothesis Gather data Analyze the data Draw conclusions.
Progression in fieldwork skills and their assessment at A2 Unit 4A.
Statistical Analysis Quantitative research is first and foremost a logical rather than a mathematical (i.e., statistical) operation Statistics represent.
Chapter 6: Analyzing and Interpreting Quantitative Data
The field of statistics deals with the collection,
1 UNIT 13: DATA ANALYSIS. 2 A. Editing, Coding and Computer Entry Editing in field i.e after completion of each interview/questionnaire. Editing again.
Math 205 Introduction to Statistical Methods. Online homework: My webpage: people.adams.edu/~rjastalos.
Collecting and Processing Information Foundations of Technology Collecting and Processing Information © 2013 International Technology and Engineering Educators.
Population and Sample Means Slide 12.1A. Population and Sample Means Slide 12.1.
THE ROLE OF STATISTICS IN RESEARCH. Reading APPENDIX A: Statistics pp
My Industrial Placement 15 th February Where I work Company: Pfizer Pfizer is the world’s largest research-based pharmaceutical company Division:
1 - COURSE 4 - DATA HANDLING AND PRESENTATION UNESCO-IHE Institute for Water Education Online Module Water Quality Assessment.
COMP6049 Week 8 Surveys: Purpose Paradigms Protocols and Pragmatics November 2010 Dr Su White.
Preparing for Data Analysis Some tips and tricks for getting your data organized so that you can do the “fun stuff”!
COMP6043 w5 Surveys COMP6043 Week 5 Survey Systems November 2009 Dr Su White.
Appendix I A Refresher on some Statistical Terms and Tests.
Mail Call Us: , , Data Science Training In Ameerpet
Quantitative variables continued
Engineering Probability and Statistics - SE-205 -Chap 1
WEBS2002 Interdisciplinary Project
Statistics PSY302 Quiz One
WEBS6203 Interdisciplinary Thinking handins
COMP6043 Week 5 Surveys November 2009
Su White Visual Literacy Thinking about images Su White
The General Education Core in CLAS
SOCIAL NETWORK AS A VENUE OF PARTICIPATION AND SHARING AMONG TEENAGERS
Quantitative Data Analysis
INFO2009 Group work preparation
Module 6: Descriptive Statistics
Facilitator Linda C. Hodges
Centre for Multilevel Modelling, University of Bristol
Pima Medical Institute Online Education
Pima Medical Institute Online Education
Pima Medical Institute Online Education
RESEARCH TOOLS OR INSTRUMENTS
DATA ANALYSIS DR. ELIZABETH M. ANTHONY
Presentation transcript:

Quantitative Analysis Su White

Reality Check You can’t learn statistical analysis is an hour I can’t begin to teach you all there is to know about statistical analysis in an hour Some of you may already have expertise in this area – please contribute So…. Lets get a bit of an overview Think about how this might be relevant to your future research Discuss it with your tutor/supervisor Think about taking a specialist course…

Back to our classic abstract This is the way the world is This is what is wrong with the world This is my startling/innovative idea Here is what I found Description + Analysis

Quantitative Analysis Descriptive statistics measures of tendency averages - mean, median and mode measures of variability around the average range and standard deviation Provide a picture of collected data Inferential statistics outcomes of statistical tests supports deductions from the data tests hypotheses relates findings to sample/population The process of presenting and interpreting numerical data descriptive statistics and inferential statistics

Example In studying the effect of Facebook on students’ performance I might Describe the sample Describe the marks, and the marks distribution Mode, median, mean Standard deviation I can visualise/represent these descriptions diagrammatically Evaluate the data to see if I can identify any correlation between marks, use of Facebook time online or other variables I had determined e.g. Gender Age I can visualise/represent these descriptions diagrammatically

Think about the disciplinary perspective Your supervisors Their preferred texts Their preferred tools Simple choice Excel SPSS (matlab) Get some specialist training Get some experience Your community/ies of practice Summer schools Publications/consensus Review Update See next slide to understand what I mean

Example of a disciplinary perspective

Download from soton eprints

You need to decide your approach When you plan your study When you review your statistics Preparation is part of that process Generic – get training/attend specialist modules Discipline – sanity check, participate in the dialogue Just in Time – review what the current view is Sanity Check – discuss with your supervisor and peers

Class exercise 1 Read the paper – methods review (Mulee, 2005) Quick discussion in pairs/threes What do you need to check/update What of the paper is generic? Is it discipline specific? If you have a computer, have you found any comparable resources

Online Textbook

National Centre for Research Methods

Analytical Statistical Methods

Class exercise 2 Review the paper – skim speed read (Barjak and Thelwall 2008) What methods are used Can you identify the descriptive part? Can you identify the analytical part? What is your critique of the paper

Social Research Methods

Research Methods Knowledge base

SR3i

Excel – tips and warnings

Online module

Beware… Sloppy statistics shame science”, The Economist, 3 June “Far too many scientists have only a shaky grasp of the statistical techniques they are using. They employ them as an amateur chef employs a cookbook, believing the recipes will work without understanding why...”

Keep on thinking about numbers… Podcasts, available indefinitely! Co-produced with OU

Further Information

references Barjak F and Thelwall M., 2008, A statistical analysis of the Web Presence of European Life Sciences Research Teams, Journal Of The American Society For Information Science And Technology, 59(4):628–643, 2008 Huff D, “How to Lie with Statistics”, Penguin Mullee, Mark A. (2005) Web-based resources to assist the statistical analysis and presentation of data. Pharmaceutical Statistics, 4, (2), doi: /pst.168 doi: /pst.168 Steele, J. M. (2005) Darrell Huff and Fifty Years of "How to Lie with Statistics". Statistical Science, 20: 3, Tufte, E.R., 1995,The Visual Display of Quantitative Information, Graphics Press, Cheshire, CT Visual Display of Quantitative Information

Further Information References for quantitative analysis Graphical presentation of information: Demos on visual literacy for scientists/engineers and for business and communication: literacy.org/ literacy.org/ Tufte, Edward R. (1983). The visual display of quantitative information. Graphics Press, Cheshire, Conn, ISBN X Wilkinson, Leland. (1999). The grammar of graphics / Leland Wilkinson. Springer, New York, ISBN Webliography further information on statistical and numerical methods of analysis: (JISC, no longer updated) (EPSRC national research centre) (University of Southampton SR3I, national research centre) atistics.html/ (Wolfram Mathematics) atistics.html/ StatSoft Online text book Notes on Data Visualisation Excel tips and warnings ml (University of Reading) ml Online module (University of Southampton)

Leisure statistics and visualisations More or Less – Podcasts JunkCharts Many Eyes Information is Beautiful

This resource in EdShare