Statistical Misconception
(Redirected from Statistical Reasoning Error)
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A Statistical Misconception is a domain-specific systematic cognitive misconception that involves incorrect understanding or application of statistical concepts, statistical methods, or statistical inferences.
- AKA: Statistical Fallacy, Statistical Misunderstanding, Statistical Interpretation Error, Statistical Reasoning Error.
- Context:
- It can typically manifest in Research Publications through incorrect statistical claims.
- It can typically affect Data-Driven Decision Making through flawed statistical reasoning.
- It can typically propagate through Statistical Education Systems lacking conceptual emphasis.
- It can often arise from Intuitive Reasoning Conflict with statistical principles.
- It can often persist despite Statistical Training due to cognitive bias reinforcement.
- It can often lead to Invalid Research Conclusions despite correct computational procedures.
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- It can range from being a Computational Statistical Misconception to being a Conceptual Statistical Misconception, depending on its error type focus.
- It can range from being a Elementary Statistical Misconception to being an Advanced Statistical Misconception, depending on its statistical concept complexity.
- It can range from being a Descriptive Statistical Misconception to being an Inferential Statistical Misconception, depending on its statistical domain.
- It can range from being a Frequentist Statistical Misconception to being a Bayesian Statistical Misconception, depending on its statistical framework.
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- It can undermine Evidence-Based Practice across scientific disciplines.
- It can contribute to Reproducibility Crisis in empirical research.
- It can influence Public Policy Formation through misinterpreted statistical evidence.
- It can affect Medical Decision Making through incorrect risk assessment.
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- Example(s):
- Probability Misconceptions, such as:
- Gambler's Fallacy misunderstanding independence in random events.
- Base Rate Fallacy ignoring prior probability in conditional reasoning.
- Conjunction Fallacy violating probability laws in likelihood judgment.
- Sampling Misconceptions, such as:
- Sample Size Insensitivity ignoring impact of sample size on estimate precision.
- Survivorship Bias overlooking selection effects in observed samples.
- Regression to Mean Misconception misinterpreting statistical regression phenomenon.
- Hypothesis Testing Misconceptions, such as:
- Common P-Value Misconception equating p-value with error probability.
- Statistical Significance Worship overemphasizing significance thresholds.
- Multiple Testing Ignorance ignoring family-wise error rate.
- Correlation Misconceptions, such as:
- Correlation-Causation Conflation inferring causal relationship from correlation.
- Ecological Fallacy applying group-level patterns to individual cases.
- Simpson's Paradox Confusion misunderstanding aggregation effects.
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- Probability Misconceptions, such as:
- Counter-Example(s):
- Statistical Literacy, which represents correct understanding of statistical concepts.
- Computational Error, which involves calculation mistakes rather than conceptual misunderstanding.
- Data Entry Error, which represents transcription mistakes rather than interpretation errors.
- Modeling Assumption Violation, which involves technical requirements rather than conceptual confusion.
- See: Misconception, Cognitive Bias, Statistical Reasoning, Statistical Education, Research Methodology, Statistical Literacy, Evidence-Based Practice.