Tuesday, 9 July 2013

Concepts, Constructs, Variables, and Measurement

2. Concepts, Constructs, Variables, and Measurement
Concepts and Constructs
  • Concepts are mental representations and are typically based on experience
    • concepts can be of real phenomena (dogs, clouds, pain)
    • concepts can be of agree-upon phenomena (truth, beauty, justice, prejudice, value, etc.)
  • Three classes of things can be measured
    • direct observables (height, weight, color, etc.)
    • indirect observables (questionnaires provide information on gender, age, income, etc.)
    • constructs (theoretical creations that are based on observations but which cannot be seen either directly or indirectly; things such as IQ, Leisure Satisfaction, Environmental Values, etc., are constructs
Variables and Measurement
  • Measurement is the assignment of symbols to observable phenomena.
    • There are two kinds of phenomena
      • Constants
      • Variables
      • Concepts or constructs must be free to vary if they are to be variables; otherwise they are constants
    • There are 3 ways of measuring things:
      • counting
      • ordering
      • classifying
  • Before variables can be measured they must be defined. Types of definitions:
    • Theoretical: the words used in a theory; basically dictionary or common use
    • Operational: a definition that explains how the variable is to be measured
  • Operational definition: assigns a meaning to a concept or variable by specifying the operations needed to measure it
  • Types of operational definitions
    • directly measured: IQ, weight, attitude
    • experimental: the details of how subjects are treated differently, such as: Aggressive behavior= banging toys, other children; frustration = what happens when children are in a room with toys they cannot reach.
  • Independent and Dependent variables (except purely descriptive research)
    • All research (except descriptive studies) must have at least two variables
      • one can be IV and the other DV
      • in symmetrical relationships, the question of which is independent and which is dependent is moot
    • Having an IV allows you to assume a cause-effect relationship: changes in the IV result in changes in the DV
    • If you cannot posit a cause-effect relationship, then you essentially have two IV's (the level/score of each is independent of the other [although both may depend on some other variable(s)])
    • Having an IV allows more control and better inference about what is going on, especially when you have an active IV.
  • Active and Attribute Independent Variables
    • attribute: level or score of the variable is brought to the experiment by the subject, usually as a natural characteristic such as sex, age, etc.
    • active: the level of the IV is manipulated by the experimenter
  • Intervening variables: uncontrolled or unobserved variables that may account for variation in the DV (also known as extraneous variables)
  • Control variables: any variable that may affect DV should be controlled; that is, measured and accounted for statistically or held constant (age, gender, socioeconomic status, etc., could be control variables)
Measurement levels of variables
  • Nominal (qualitative)
    • naming/classifying
    • no mathematical operations possible (except counting)
  • Ordinal (qualitative, but sometimes used quantitatively)
    • ordered on some dimension
    • Boolean operations possible
  • Interval (quantitative)
    • ordered with equal intervals
    • addition, subtraction, and Boolean operations
  • Ratio (quantitative)
    • ordered, equal intervals, absolute and meaningful zero
    • all mathematical operations possible
Problems with measurement of variables
  • Qualitative vs. quantitative variables
    • reliability and validity are essentially measurement problems
    • since qualitative variables are basically classificatory, there is less concern with reliability and validity
  • Reliability
    • reliability refers to the observation of variation in scores earned by an individual on repeated trials of the same measure (variation can be systematic or random)
    • so, reliability = consistency
  • Validity
    • validity is the degree to which the measuring instrument actually measures the concept in question
    • validity also refers to the accuracy of the measurement
    • it is possible to measure a concept more or less accurately if you are actually measuring the right concept but it is not possible to measure it accurately if you are not measuring it at all.
  • Measurement error
    • due to sampling
    • due to subject or experimenter effects
    • measurement error results in decreased reliability and validity
Relationship between variables
  • X and Y are correlated if they vary together
  • concomitant variation = correlation
  • correlation can be direct or inverse
Causal relationships
  • concomitant variation does not demonstrate causality
  • causality is difficult (or impossible) to demonstrate logically
  • However, we can make the case that X causes Y, if
    • there is a relationship between X and Y(birds go south in the fall), and
    • the relationship is asymmetrical so that a change in X results in a change in Y, but not vice versa (birds migrate because of fall but fall does not come because birds migrate), and
    • a change in X results in a change in Y regardless of the actions of other variables, and
    • generally, X should precede Y but sometimes symmetrical causality and simultaneous causality are allowed; the effect can never precede the cause
  • Necessary and sufficient cause
    • necessary ­ Y never occurs unless X also occurs (or has occurred)
    • sufficient ­ Y occurs every time X occurs (but could also occur without X; e.g., "smoking causes cancer")
    • necessary, but not sufficient (X must occur before Y but, X alone, is not enough for Y to occur; e.g., in order for me to shoot you with this gun (Y), I must point it at you (X), but X is not sufficient for Y)
    • sufficient, but not necessary (X is sufficient to cause Y, but Z can also cause Y; e.g., Fred is wet (Y) but did he fall into a pond (X) or did he get caught in the rain (Z)?
    • necessary and sufficient ­ Y will never occur without X and will always occur with X (e.g., the hand grenade will never explode without you pulling the pin and will always explode when you pull the pin)
  • Causality in social science
    • difficult to demonstrate theoretically as our theories are inadequate for the isolation of causes
    • difficult to demonstrate methodologically
      • survey methods usually do not give temporal sequences
      • laboratory methods help to demonstrate causality since we control and sequence independent and dependent variables

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