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Statistics and Research methods Wiskunde voor HMI Betsy van Dijk
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Introduction Statistics is about – Systematically studying phenomena in which we are interested – Quantifying variables in order to use mathematical techniques – Summarizing these quantities in order to describe and make inferences – Using these descriptions and inferences to make decisions or understand
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The Two Branches of Statistical Methods Descriptive statistics (beschrijvende statistiek) – Used to summarize, organize and simplify data Inferential statistics (toetsende statistiek) – Draw conclusions/make inferences that go beyond the numbers from a research study – Techniques that allow us to study samples and then make generalizations about the populations from which they were selected
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Descriptive Statistics Numbers that describe the characteristics of a particular data set – “The average age in the class is 27 years” – “The range of ages in class is 22 years, from a minimum of 20 to a maximum of 42”
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Inferential Statistics Descriptive statistics from a sample that are used to make inferences about the characteristics of a population. – “The average age of people taking Research Statistics is 27 years.” People taking Research Statistics A sample of people taking Research Statistics a “parameter”
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Basic Concepts - Variables Things that change – Environmental events or conditions – Personal characteristics or attributes – Behaviors Anything that takes on different values in different situations (even just through time)
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Basic Concepts Value – A possible number or category that a score can have Score – A particular person’s value on a variable Data – Scores or measurements of phenomena, behaviors, characteristics, etc. A Statistic – A number that summarizes a set of data in some way
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Populations and Samples Population – Set of all the individuals of interest in a population study Sample – Set of individuals selected from the population Sampling error – Discrepancy, or amount of error that exists between the sample statistic and population parameter
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Measurement Measurement is the process of assigning numbers to variables following a set of rules There are different levels of measurement – Nominal – Ordinal – Interval – Ratio
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Nominal Measurement Places data in categories Non-quantitative (e.g. qualitative), even though there might be numbers involved Nominal (categorical) variables Examples – Male/Female M,F (0,1) – Voting precinct Alucha, Dade, Palm Beach (023, 095, 167)
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Ordinal Measurement Places data in order Quantitative as far as ranking goes Rank-order (ordinal) variables Distance between values varies Examples – First, second, third (1,2,3) (2.7, 2.8, 7.6) – Young, Middle Age, Old – Very Good, Good, Intermediate, Bad, Very Bad (1,2,3,4,5)
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Interval Measurement Has all the characteristics of ordinal data Additionally, the differences between values represents a specific amount of whatever is being measured (equal intervals represent equal amounts) Examples – Temperature (the difference between 20C and 40C is the same as 60C and 80C, but 0 is not the absence of temperature) Note: Many rating scales are treated like interval measurements
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Ratio Measurement Has all the characteristics of interval data Additionally, has a true zero which represents the absence of whatever is being measured Examples – Time (e.g. reaction time) – Distance The zero point allows you to make statements about ratios (e.g. 100 feet is twice as far as 50 feet)
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A Few More Things Continuous variables – Take on an infinite number of values between two measured levels (e.g. time measurements) Discrete variables – Have no intermediate values (e.g. number of people in class)
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Math Warm-Up Order of operations – Parentheses, exponents, multiplication/division, addition/subtraction – PEMDAS, or “please excuse my dear aunt sally” – Summation using the summation statistic before other addition/substraction Proportion – Some portion of some total amount – Expressed by a fraction or a decimal – To calculate, divide the portion by the total amount Percentage – A proportion that is scaled to be out of 100 (instead of some other total amount) – To calculate, first calculate the proportion, then multiply by 100 Mathematical operators – Exponents, square roots, parentheses, summation, indexing
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Math Warm-Up Practice problems
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Frequency Tables Used to summarize data Steps in making a frequency table 1. Make a list of each possible value 2. Count up the number of scores with each value 3. Make a table Frequency table shows how often each value occurs
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A Frequency Table
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Histogram -- Stress-rating Data
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Grouped Frequency Table A frequency table that uses intervals
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Frequency Graphs Histogram
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Frequency Graphs Frequency polygon
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Shapes of Frequency Distributions Unimodal, bimodal, and rectangular
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Shapes of Frequency Distributions Unimodal – there is a single most frequent value or “peak” Bimodal – there are two most-frequent values or peaks Rectangular – there is no peak; all values are about equally frequent
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Shapes of Frequency Distributions Symmetrical and skewed distributions
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Shapes of Frequency Distributions Symmetrical – left and right halves of the distribution have approximately the same shape Skewed – left and right halves of the distribution do not have the same shape “skew” is towards the side with the fewer cases Right (or positive) skew = few cases with large scores Left (or negative) skew = few cases with small scores
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Skewed distributions may be caused by: “Ceiling effects” – limitation in the high end of the scale “Floor effects” – limitation in the low end of the scale
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Sometimes skewed distributions occur because of the nature of the variable itself…
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Shapes of Frequency Distributions Normal and kurtotic distributions
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Measures of Central Tendency Median – The value in the middle Mode – The most common value Mean – The average value
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The Mean M = the mean X = the scores N = the number of scores
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The Median Rank the scores from lowest to highest Median is the score in the middle – if even number of scores, by convention take the average of the two middle ones Median is not as sensitive to extreme values as the mean
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The Mode The most frequent score To compute the mode: look at a frequency table and find the most frequent score. In a symmetrical, unimodal distribution, the mean, median and mode are all the same.
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Symmetrical Distribution FrequencyFrequency Mean Median Mode
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Question Negative Skew FrequencyFrequency Where (approximately) will Mean, Median and Mode be situated?
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Problem with the Mean The mean can be strongly influenced by outliers – This distorts the mean as a measure of central tendency The median and mode are less affected by outliers
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Measures of Variance – A single number that tells you how spread out a distribution is All M = 15.0
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Measures of Variance Range: difference between the maximum and minimum observed values Variance: a measure of the amount that values differ from the mean of their distribution Standard deviation: the average amount (approximately) that values differ from the mean of their distribution
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Formula for the sample variance: Estimate of the population variance: Unbiased estimate of population variance Degrees of freedom: df = N-1 Variance
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Describing Individual Values Sometimes observations have values that people are familiar with – Rating 1 to 10, Age, Temperature, SAT But sometimes values are on an unfamiliar scale – Score on the Wisconsin Card Sorting Task – APGAR score How can you communicate the relative value of a given observation? – Is that a very high value? very low? somewhere in the middle?
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Z Scores Characterize a score in relation to the distribution The number of standard deviations the score is above or below the mean is called the Z score Formula for Z score:
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Standard and Raw Scores Z scores are also called “standard scores” The original scores are called “raw scores” For a distribution of Z scores, always M = 0... and always SD = 1
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