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9.5: Cautions with Correlation and Causation

  • Page ID
    58935
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    By now, you’ve seen that two quantitative variables can have a strong positive or negative relationship. That’s what correlation helps us measure. But it’s also important to know what correlation does not tell us.


    Definition: Causation

    Causation means that a change in one variable directly causes a change in the other.

    This means that changing variable \( x \) produces a predictable change in variable \( y \), through a direct influence or mechanism.

    Just because two variables change together doesn’t mean one causes the other to change. This is the classic warning:

    Correlation does not imply causation.


    Examples of Correlated—But Not Causal—Relationships

    Example 1: Ice Cream Sales and Drowning

    Across many cities, ice cream sales and drowning rates both rise in the summer. The correlation is strong and positive.

    • But that doesn’t mean buying ice cream causes drowning.
    • There’s a third factor (weather/season) that increases both.

    Example 2: Number of NIC Cage Films and Spelling Bee Winners

    From 1999–2009, there was a high correlation between the number of Nicolas Cage films released each year and deaths from falling into pools.

    • This is pure coincidence — no one thinks one affects the other.
    • But without context, the correlation looks “strong.”

    Example 3: Shoe Size and Reading Score (in Children)

    Shoe size and reading score among children ages 3–10 are strongly correlated.

    • Bigger shoe size doesn’t improve reading ability.
    • They’re both linked to age. Growing older increases both.

    Why This Matters

    It’s tempting to look at a pattern and say one variable causes the other. But that leap requires more than just a statistic—it needs thoughtful reasoning, study design, and evidence.

    Things that help support a causal conclusion include:

    • Study design (e.g., randomized controlled trials)
    • Plausible mechanism or theory
    • Temporal order (cause precedes effect)
    • Replication across populations or time

    Correlation can be a clue, but never the whole story on its own.

    Think About It:
    • Have you ever read a headline that confused correlation with causation?
    • What other variables might explain a strong correlation you've seen?
    • How can researchers responsibly use correlation to develop better studies?

    This page titled 9.5: Cautions with Correlation and Causation is shared under a CC BY 4.0 license and was authored, remixed, and/or curated by Mathematics Department.

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