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INF 397C Introduction to Research in Library and Information Science Spring, 2005 Day 4. 3 things today. Work the sample problems z scores and “area under the curve” Start to look at experimental design. z scores – table values. z = (X - µ)/ σ
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INF 397CIntroduction to Research in Library and Information ScienceSpring, 2005Day 4
3 things today • Work the sample problems • z scores and “area under the curve” • Start to look at experimental design
z scores – table values • z = (X - µ)/σ • It is often the case that we want to know “What percentage of the scores are above (or below) a certain other score”? • Asked another way, “What is the area under the curve, beyond a certain point”? • THIS is why we calculate a z score, and the way we do it is with the z table, on p. 306 of Hinton.
z table practice • What percentage of scores fall above a z score of 1.0? • What percentage of scores fall between the mean and one standard deviation above the mean? • What percentage of scores fall within two standard deviations of the mean? • My z score is .1. How many scores did I “beat”? • My z score is .01. How many scores did I “beat”? • My score was higher than only 3% of the class. (I suck.) What was my z score. • Oooh, get this. My score was higher than only 3% of the class. The mean was 50 and the standard deviation was 10. What was my raw score?
More than anything else . . . • . . . scientists are skeptical. • P. 28: Scientific skepticism is a gullible public’s defense against charlatans and others who would sell them ineffective medicines and cures, impossible schemes to get rich, and supernatural explanations for natural phenomena.”
Research Methods S, Z, & Z, Chapters 1, 2, 3, 7, 8 Researchers are . . . • like detectives – gather evidence, develop a theory. • Like judges – decide if evidence meets scientific standards. • Like juries – decide if evidence is “beyond a reasonable doubt.”
Science . . . • . . . Is a cumulative affair. Current research builds on previous research. • The Scientific Method: • is Empirical (acquires new knowledge via direct observation and experimentation) • entails Systematic, controlled observations. • is unbiased, objective. • entails operational definitions. • is valid, reliable, testable, critical, skeptical.
CONTROL • . . . is the essential ingredient of science, distinguishing it from nonscientific procedures. • The scientist, the experimenter, manipulates the Independent Variable (IV – “treatment – at least two levels – “experimental and control conditions”) and controls other variables.
More control • After manipulating the IV (because the experimenter is independent – he/she decides what to do) . . . • He/she measures the effect on the Dependent Variable (what is measured – it depends on the IV).
Key Distinction • IV vs. Individual Differences variable • The scientist MANIPULATES an IV, but SELECTS an Individual Differences variable (or “subject” variable). • Can’t manipulate a subject variable. • “Select a sample. Have half of ‘em get a divorce.” • Consider an Individual Difference, or Subject Variable, as a TYPE of IV.
Operational Definitions • Explains a concept solely in terms of the operations used to produce and measure it. • Bad: “Smart people.” • Good: “People with an IQ over 120.” • Bad: “People with long index fingers.” • Good: “People with index fingers at least 7.2 cm.” • Bad: Ugly guys. • Good: “Guys rated as ‘ugly’ by at least 50% of the respondents.”
Validity and Reliability • Validity: the “truthfulness” of a measure. Are you really measuring what you claim to measure? “The validity of a measure . . . the extent that people do as well on it as they do on independent measures that are presumed to measure the same concept.” • Reliability: a measure’s consistency. • A measure can be reliable without being valid, but not vice versa.
Theory and Hypothesis • Theory: a logically organized set of propositions (claims, statements, assertions) that serves to define events (concepts), describe relationships among these events, and explain their occurrence. • Theories organize our knowledge and guide our research • Hypothesis: A tentative explanation. • A scientific hypothesis is TESTABLE.
Goals of Scientific Method • Description • Nomothetic approach – establish broad generalizations and general laws that apply to a diverse population • Versus idiographic approach – interested in the individual, their uniqueness (e.g., case studies) • Prediction • Correlational study – when scores on one variable can be used to predict scores on a second variable. (Doesn’t necessarily tell you “why.”) • Understanding – con’t. on next page • Creating change • Applied research
Understanding • Three important conditions for making a causal inference: • Covariation of events. (IV changes, and the DV changes.) • A time-order relationship. (First the scientist changes the IV – then there’s a change in the DV.) • The elimination of plausible alternative causes.
Confounding • When two potentially effective IVs are allowed to covary simultaneously. • Poor control! • Remember week 1 – Men, overall, did a better job of remembering the 12 “random” letters. But the men had received a different “clue” (“Maybe they’re the months of the year.”) • So GENDER (what type of IV? A SUBJECT variable, or indiv. differences variable) was CONFOUNDED with “type of clue” (an IV).
Intervening Variables • Link the IV and the DV, and are used to explain why they are connected. • Here’s an interesting question: WHY did the authors put this HERE in the chapter? • Because intervening variables are important in theories.
A bit more about theories • Good theories provide “precision of prediction” • The “rule of parsimony” is followed • The simplest alternative explanations are accepted • A good scientific theory passes the most rigorous tests • Testing will be more informative when you try to DISPROVE (falsify) a theory
Populations and Samples • Population: the set of all cases of interest • Sample: Subset of all the population that we choose to study.
Ch. 3 -- Ethics • Read the chapter. • Understand informed consent, p. 57 – a person’s expressed willingness to participate in a research project, based on a clear understanding of the nature of the research, the consequences of declining, and other factors that might influence the decision. • Odd quote, p. 69 – Debriefing should be informal and indirect. • Know that UT has an IRB: http://www.utexas.edu/research/rsc/humanresearch/