Essay

According to the provided text, why must researchers be cautious about inferring causality in non-experimental factorial designs? Identify the two specific problems that limit causal inference, and state the measured variables in the study used to illustrate these limitations.

Question: According to the provided text, why must researchers be cautious about inferring causality in non-experimental factorial designs? Identify the two specific problems that limit causal inference, and state the measured variables in the study used to illustrate these limitations.

Sample answer: Researchers must be cautious about inferring causality in non-experimental factorial designs because they rely entirely on measured rather than manipulated variables. This reliance leads to the directionality problem and the third-variable problem. The text illustrates this using an example study that measured participants' moods and their willingness to have unprotected sex, noting that a causal link cannot be claimed because an unmeasured third variable correlated with mood might cause the sexual willingness behavior.

Key points:

  • Non-experimental factorial designs rely on measured rather than manipulated variables.
  • Causal inference is limited by the directionality problem.
  • Causal inference is limited by the third-variable problem.
  • The example study measures participants' moods and their willingness to have unprotected sex.
  • An unmeasured third variable correlated with mood could cause the observed risk-taking behavior.

Rubric: The response must correctly state that non-experimental factorial designs use measured instead of manipulated variables. It must identify the directionality problem and the third-variable problem as the two causal limitations. Finally, it must recall the specific variables from the example: measured mood and willingness to have unprotected sex.

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Updated 2026-05-27

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Research Methods in Psychology - 4th American Edition @ KPU

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