1 Statistics This lecture covers chapter 1 and 2 sections 3.1-3.2 in Howell Why study maths in psychology? “Mathematics has the advantage of teaching you.

Slides:



Advertisements
Similar presentations
Statistics for the Social Sciences Psychology 340 Fall 2006 Distributions.
Advertisements

Chapter 2: Frequency Distributions
CHAPTER TWELVE ANALYSING DATA I: QUANTITATIVE DATA ANALYSIS.
DEPICTING DISTRIBUTIONS. How many at each value/score Value or score of variable.
1 Practical Psychology 1 Week 5 Relative frequency, introduction to probability.
TYPES OF DATA. Qualitative vs. Quantitative Data A qualitative variable is one in which the “true” or naturally occurring levels or categories taken by.
Introduction to Statistics Quantitative Methods in HPELS 440:210.
Statistics.
© Biostatistics Basics An introduction to an expansive and complex field.
QUANTITATIVE DATA ANALYSIS
PED 471: Height Histogram Spring Introduction to Statistics Giving Meaning to Measurement Chapter 4:
Data Analysis Statistics. OVERVIEW Getting Ready for Data Collection Getting Ready for Data Collection The Data Collection Process The Data Collection.
Descriptive Statistics
PY 427 Statistics 1Fall 2006 Kin Ching Kong, Ph.D Lecture 1 Chicago School of Professional Psychology.
PPA 415 – Research Methods in Public Administration Lecture 2 - Counting and Charting Responses.
Thomas Songer, PhD with acknowledgment to several slides provided by M Rahbar and Moataza Mahmoud Abdel Wahab Introduction to Research Methods In the Internet.
Basic Descriptive Statistics Healey, Chapter 2
The Stats Unit.
Statistics 300: Introduction to Probability and Statistics Section 2-2.
Today: Central Tendency & Dispersion
Basic Descriptive Statistics Chapter 2. Percentages and Proportions Most used statistics Could say that 927 out of 1,516 people surveyed said that hard.
Statistical Analysis I have all this data. Now what does it mean?
STA 2023 Chapter 1 Notes. Terminology  Data: consists of information coming from observations, counts, measurements, or responses.  Statistics: the.
Chapter 1: Introduction to Statistics
Statistics for Linguistics Students Michaelmas 2004 Week 1 Bettina Braun.
Statistics 1 Course Overview
Descriptive and inferential statistics
Statistics and Research methods Wiskunde voor HMI Betsy van Dijk.
Data Presentation.
Chapter 3: Central Tendency. Central Tendency In general terms, central tendency is a statistical measure that determines a single value that accurately.
Types of data and how to present them 47:269: Research Methods I Dr. Leonard March 31, :269: Research Methods I Dr. Leonard March 31, 2010.
Smith/Davis (c) 2005 Prentice Hall Chapter Four Basic Statistical Concepts, Frequency Tables, Graphs, Frequency Distributions, and Measures of Central.
Statistical Tools in Evaluation Part I. Statistical Tools in Evaluation What are statistics? –Organization and analysis of numerical data –Methods used.
Statistical Analysis I have all this data. Now what does it mean?
PPA 501 – Analytical Methods in Administration Lecture 5a - Counting and Charting Responses.
COURSE: JUST 3900 INTRODUCTORY STATISTICS FOR CRIMINAL JUSTICE Instructor: Dr. John J. Kerbs, Associate Professor Joint Ph.D. in Social Work and Sociology.
 Frequency Distribution is a statistical technique to explore the underlying patterns of raw data.  Preparing frequency distribution tables, we can.
STA Lecture 51 STA 291 Lecture 5 Chap 4 Graphical and Tabular Techniques for categorical data Graphical Techniques for numerical data.
An Introduction to Statistics. Two Branches of Statistical Methods Descriptive statistics Techniques for describing data in abbreviated, symbolic fashion.
1 STAT 500 – Statistics for Managers STAT 500 Statistics for Managers.
Handout week 1 course Renske Doorenspleet 1 Chapter 1 -A. The role of statistics in the research process -B. Statistical applications -C. Types of variables.
Presentation Of Data. Data Presentation All business decisions are based on evaluation of some data All business decisions are based on evaluation of.
The Normal Curve Theoretical Symmetrical Known Areas For Each Standard Deviation or Z-score FOR EACH SIDE:  34.13% of scores in distribution are b/t the.
Chapter 11 Univariate Data Analysis; Descriptive Statistics These are summary measurements of a single variable. I.Averages or measures of central tendency.
Chapter 11 Data Descriptions and Probability Distributions Section 1 Graphing Data.
Two Main Uses of Statistics: 1)Descriptive : To describe or summarize a collection of data points The data set in hand = the population of interest 2)Inferential.
Psy 230 Jeopardy Measurement Research Strategies Frequency Distributions Descriptive Stats Grab Bag $100 $200$200 $300 $500 $400 $300 $400 $300 $400 $500.
Lecture 2.  A descriptive technique  An organized tabulation showing exactly how many individuals are located in each category on the scale of measurement.
© 2011 Cengage Learning. All Rights Reserved. May not be copied, scanned, or duplicated, in whole or in part, except for use as permitted in a license.
Copyright © 2012 by Nelson Education Limited.1-1 Chapter 1 Introduction.
Introduction. The Role of Statistics in Science Research can be qualitative or quantitative Research can be qualitative or quantitative Where the research.
BASIC STATISTICAL CONCEPTS Chapter Three. CHAPTER OBJECTIVES Scales of Measurement Measures of central tendency (mean, median, mode) Frequency distribution.
IMPORTANCE OF STATISTICS MR.CHITHRAVEL.V ASST.PROFESSOR ACN.
Introduction To Statistics
Chapter 2: Frequency Distributions. Frequency Distributions After collecting data, the first task for a researcher is to organize and simplify the data.
Introduction to statistics I Sophia King Rm. P24 HWB
Outline of Today’s Discussion 1.Displaying the Order in a Group of Numbers: 2.The Mean, Variance, Standard Deviation, & Z-Scores 3.SPSS: Data Entry, Definition,
Chapter 2 Describing and Presenting a Distribution of Scores.
Basic Statistics for Testing. Why we need statistics Types of scales Frequency distributions Percentile ranks.
Chapter 2 Frequency Distributions PowerPoint Lecture Slides Essentials of Statistics for the Behavioral Sciences Seventh Edition by Frederick J Gravetter.
Chapter 4: Measures of Central Tendency. Measures of central tendency are important descriptive measures that summarize a distribution of different categories.
Statistics Vocabulary. 1. STATISTICS Definition The study of collecting, organizing, and interpreting data Example Statistics are used to determine car.
Tips for exam 1- Complete all the exercises from the back of each chapter. 2- Make sure you re-do the ones you got wrong! 3- Just before the exam, re-read.
Chapter 5 STATISTICS (PART 1).
An Introduction to Statistics
Introduction to Statistics
An introduction to an expansive and complex field
DESCRIPTIVE STATISTICS BORAM KANG
Week 4 Frequencies.
Descriptive Statistics
Presentation transcript:

1 Statistics This lecture covers chapter 1 and 2 sections in Howell Why study maths in psychology? “Mathematics has the advantage of teaching you the habit of thinking without passion. You learn to use your mind primarily upon material where passion can’t come in, and having trained it that way you can then use it passionately upon matters about which you feel passionately. Then you’re much more likely to come to true conclusions”- Bertrand Russell

2 Statistical terminology 2 types of statistics: Descriptive - describe a sample or population Inferential - draw inferences about relationships between samples and populations Samples and populations: Population: complete set of events we are investigating (eg all IQ scores) Sample: subset of a population (IQ scores of 10 people)

3 Terminology 2 Statistics and parameters: Statistic: a number which speaks about a sample (abbreviated with a latin letter, eg. s) Parameter: a number which speaks about a population (abbreviated with a greek letter eg  ) Variable: a property of an object/event that is measured

4 Variables Statistics allows one to look at variables behaviour relationships between variables Types of variables: Discrete variables: can only take on certain values, eg: …. (only whole numbers) …. (whole numbers and halves) Examples: gender, number of children, sexual preference

5 Variables (2) Continuous variables Can take on any value (there exists a value between any two values) eg: 1, 1.1, 1.11, 1.111, , ….. Examples: length, age, IQ, dosage of Valium For stats, all variables must contain only numbers convert “word” values into numbers eg: male/female becomes 100/101

6 Scales of measurement Not all statistical techniques can be applied to all types of variable which is more - male or female? By looking at the property a variable represents, and how that property was measured (its scale), we can decide if a particular technique is appropriate

7 Nominal scale Simply labels items 723 = male, 742=female, 857=Prince Differences between numbers mean nothing Order of numbers mean nothing Often expressed as words rather than numbers Cannot do very much stats with nominal scales

8 Ordinal Scale Labels items, puts them in order Eg expense 1 = Woolworths, 2 = Pick n Pay, 3 = Shoprite Differences between numbers mean nothing eg. 4 is not twice as bad as 2 Order is important eg. 1 is the best, 5 is worse than 1-4 but better than 6 down, etc. Useful in ranking items (highest to lowest) when specific values are not important

9 Interval Scale Order is important, as is the difference between points eg. Degrees celcius: 10 C is the same distance from 0 C as 40 C is from 50 C BUT: it has no absolute zero, so cannot speak about multiplication eg. “40 is twice as much as 20” - WRONG! Most Likert-type items are of this scale

10 Ratio Scale The most versatile: has differences and multiplication 40 is twice as much as 20, AND = It is like an interval scale, but has an absolute zero. Very few in psychology: IQ is the best known

11 Notes on the scales Discrete variables may be on the nominal or ordinal scales only Continuous variables can be on any, mostly interval & ratio Difficult to decide what scale a variable belongs to “Absolute zero” is contentious Making a wrong decision can lead to silly stats - the average family has 2.3 children!!

12 Frequency A descriptive statistic Applies to all scales of measurement Asks: How often did particular things come up? Mostly a matter of counting!

13 Expressing frequency Work with four varieties of frequency Frequency: how often did this observation occur? Eg. How many males in this sample? Cumulative frequency: how often has this score, or scores less than this score, occurred? Eg. How many people scored 25 marks or less for the test?

14 Expressing frequency Percentage frequency: frequency expressed as a percentage of all observations Eg. 52% of all Capetonians are male Percentage cumulative frequency: cumulative frequency expressed as a percentage of all observations Eg. 30% of the class failed the test

15 Frequency tables All 4 types of frequency are summarised on a frequency table, which has the columns: Value F Cum. F %F % Cum F.

16 Making a freq table - discrete var Given a sample of x, a discrete variable which ranges from 1-6: Start the table by putting in the values: Value F Cum F %F % Cum F

17 Working out F Add in the F - count how often each value occurs, add it in Value F Cum F %F % Cum F

18 Working out Cum. F Add the F for this value to the Cum.F score for the previous value Value F Cum F %F % Cum F

19 Working out %F Count the total number of observations, n (11) For each value, divide F by n, multiply by 100 Value F Cum F %F % Cum F 1000% 22218% 34636% 42818% % 61119%

20 Working out % Cum. F Count the total number of observations, n (11) For each value, divide Cum. F by n, multiply by 100 Value F Cum F %F % Cum F 1000%0% 22218%18% 34636%55% 42818%72% %90% 61119%100%

21 Things to remember The Cum. F. for the last value must be the same as n The % Cum. F. for the last value must be 100% Cum.F and % Cum. F. always get bigger as you go down

22 Distribution of a variable The frequency table tells us how x is distributed The proportion of high and low scores; what scores come up most often; how “wide” or “narrow” the data is Distributions tells us what we can expect from a variable - which scores are likely and which are unlikely?

23 Example: distribution of x Look at the freq table: Value F Cum F %F % Cum F 1000%0% 22218%18% 34636%55% 42818%72% %90% 61119%100% Which values are most likely to occur again? (3 and 2, 4, 5) The data are widely spread (from 2 all the way to 6)

24 Drawing a picture of x We can draw a histogram of x to see things better: Shows distribution visually - handy to understand what is happening

25 Drawing histograms Very simple: Use the F column from the table For each value, draw (in scale) a bar of the height represented by F Do this for all values Remember: label the X and Y axes (X: variable name; Y: “Frequency”)

26 Frequency of continuous variables Problem: cannot write all the values of a continuous variable: value: 1, 1.1, 1.111, , …. Infinitely many! This problem can be overcome by using data buckets

27 Buckets A bucket is a range of values which you group together, eg [2-3], [3-4]…. Here, the first bucket holds all values gretaer than or equal to 2 and less than 3, the second all values greater than or equal to 3, less than 4, etc. Each value in the dataset is placed into a bucket Once buckets are created, you make a frequency table and histogram in the normal way

28 Bucket example x is a continuous variable, from which a sample is drawn: 2.2, 3.5, 3.75, 2.34, 5.33, 3.2, 3.51 Use the following buckets: [ ], [ ], [ ], [ ]

29 Bucket example: F BucketF [0-1.5]0 [1.5-3]2 [3-4.5]4 [4.5-6]1 CF, %F, and %CF are worked out as before. A histogram is drawn as before, but labelling the X axis with the buckets.