* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
Download Lect 4_Oct 25_Measurement_on line
Survey
Document related concepts
Transcript
Research Methodology and Methods of Social Inquiry GSSR October 25, 2011 Measurement – Definitions; Indicators; Error MEASUREMENT - the process of assigning numbers or labels to units of analysis to represent the properties of concepts (variables). Operationalization In scientific inquiry we rely on operational definitions to specify concepts. An operational definition is a description of the “operations” that will be undertaken in measuring a concept. As a result of operational definitions we postulate variables. Theory informs operationalization: why you decide to measure the variable in that way and not in any other. A variable (age) is a measurable characteristic that differs across the units of observation (individuals). The observations (years) are the values of the variables for each unit. Each variable assumes a set of some definite values. A full measurement procedure specifies values for each variable across all observation units. Levels of Measurement Nominal, ordinal, interval & ratio scales of measurement Nominal variables (qualitative): observations consist of separate categories that are labeled (cannot order them). “Dummy” (dichotomous) variables; Examples: Religious affiliation; Party affiliation; Social Class; Dummy: Gender Ordinal variables: - observations consist of separate categories that are arranged in rank order (can be ordered, but we don’t know if the distance between the steps is equal for all steps). Ex: Likert scales When no. of categories = large (7/more) treat rank-order scales as continuous Interval variables: observations consist of ordered categories, where distances between categories, called intervals, reflect differences in magnitude. Ex: Celsius Ratio variables: interval scale with the additional feature of an absolute zero point. Ex: Income (in Zloty, Dollars, …), Education (in years) STATA example An indicator consists of a single observable measure, such as a single questionnaire item. Ex: What year have you been born in? Composite measures: Scales & Indexes - use several indicators combined, to create a new variable Ex: attitudes toward immigrants; self-esteem scale; Notingham scale Relationships btw. Variables Changes in one variable are accompanied by systematic changes in the other(s). For nominal variables: measures of association that tell us: - If the relationship exists (i.e. is it statistically significant) - How strongly are the two variables associated For ordinal & interval variables: is the relationship linear or not? Linear Relationship (correlation): Y = a +b*X Positive correlation: the 2 variables consistently change in the same direction Ex: higher values on education ‘go together with’ (correspond to) higher values on income; lower values on education go together with lower values on income. Negative correlation: changes in one variable are in opposite direction to changes in the other variable. Ex: higher values on age go together with lower values on hearing accuracy Measures of correlation for interval variables (assuming linear relationship) tell us: (a) How strongly the 2 variables are related (value of coefficient): r = 1; -1 perfect correlation r = 0 no relationship (b) If the relationship is positive/negative (sign of coefficent) Test of statistical significance to assess whether the relationship btw. the 2 variables exists in the population Statistical Significance: - a result is significant if it is NOT likely that it occurred by chance. When we find a relationship whose probability of happening by chance is equal to, or less (p 0.05) than 5 in 100 random samples we conclude that our result is statistically significant Null hypothesis: there is no relationship in the larger population from which we drew our sample (i.e. r = 0) Approaches to measurement: - Verbal reports (self-report); Surveys; Observation (firsthand, or through various devices); Archival records (statistical documents, diaries, mass communications, etc). In social research, one is interested in representing and/or explaining differences (variations) btw. the units of observation (cases). Three sources of variation: Observed variation = true differences + systematic measurement error + random measurement error