Logical Fallacies in Scientific Discourse
**Examples:** - "I took this supplement and my cold went away, so the supplement cured my cold." - "Autism diagnoses increased after vaccine schedules changed, so vaccines cause autism." - "I wore my lucky socks and won the game, so the socks caused the win."
Overview
Logical Fallacies in Scientific Discourse
Fallacies of Causation
1. Post Hoc Ergo Propter Hoc (After This, Therefore Because of This)
Description: Assuming that because B happened after A, A caused B.
Examples:
- "I took this supplement and my cold went away, so the supplement cured my cold."
- "Autism diagnoses increased after vaccine schedules changed, so vaccines cause autism."
- "I wore my lucky socks and won the game, so the socks caused the win."
Why fallacious: Temporal sequence is necessary but not sufficient for causation. Correlation ≠ causation.
Related: Cum hoc ergo propter hoc (with this, therefore because of this) - correlation mistaken for causation even without temporal order.
2. Confusing Correlation with Causation
Description: Assuming correlation implies direct causal relationship.
Examples:
- "Countries that eat more chocolate have more Nobel Prize winners, so chocolate makes you smarter."
- "Ice cream sales correlate with drowning deaths, so ice cream causes drowning."
Reality: Often due to confounding variables (hot weather causes both ice cream sales and swimming).
3. Reverse Causation
Description: Confusing cause and effect direction.
Examples:
- "Depression is associated with inflammation, so inflammation causes depression." (Could be: depression causes inflammation)
- "Wealthy people are healthier, so wealth causes health." (Could be: health enables wealth accumulation)
Solution: Longitudinal studies and experimental designs to establish temporal order.
4. Single Cause Fallacy
Description: Attributing complex phenomena to one cause when multiple factors contribute.
Examples:
- "Crime is caused by poverty." (Ignores many other contributing factors)
- "Heart disease is caused by fat intake." (Oversimplifies multifactorial disease)
Reality: Most outcomes have multiple contributing causes.
Fallacies of Generalization
5. Hasty Generalization
Description: Drawing broad conclusions from insufficient evidence.
Examples:
- "My uncle smoked and lived to 90, so smoking isn't dangerous."
- "This drug worked in 5 patients, so it's effective for everyone."
- "I saw three black swans, so all swans are black."
Why fallacious: Small, unrepresentative samples don't support universal claims.
6. Anecdotal Fallacy
Description: Using personal experience or isolated examples as proof.
Examples:
- "I know someone who survived cancer using alternative medicine, so it works."
- "My grandmother never exercised and lived to 100, so exercise is unnecessary."
Why fallacious: Anecdotes are unreliable due to selection bias, memory bias, and confounding. Plural of anecdote ≠ data.
7. Cherry Picking (Suppressing Evidence)
Description: Selecting only evidence that supports your position while ignoring contradictory evidence.
Examples:
- Citing only studies showing supplement benefits while ignoring null findings
- Highlighting successful predictions while ignoring failed ones
- Showing graphs that start at convenient points
Detection: Look for systematic reviews, not individual studies.
8. Ecological Fallacy
Description: Inferring individual characteristics from group statistics.
Example:
- "Average income in this neighborhood is high, so this person must be wealthy."
- "This country has low disease rates, so any individual from there is unlikely to have disease."
Why fallacious: Group-level patterns don't necessarily apply to individuals.
Fallacies of Authority and Tradition
9. Appeal to Authority (Argumentum ad Verecundiam)
Description: Accepting claims because an authority figure said them, without evidence.
Examples:
- "Dr. X says this treatment works, so it must." (If Dr. X provides no data)
- "Einstein believed in God, so God exists." (Einstein's physics expertise doesn't transfer)
- "99% of doctors recommend..." (Appeal to majority + authority without evidence)
Valid use of authority: Experts providing evidence-based consensus in their domain.
Invalid: Authority opinions without evidence, or outside their expertise.
10. Appeal to Antiquity/Tradition
Description: Assuming something is true or good because it's old or traditional.
Examples:
- "Traditional medicine has been used for thousands of years, so it must work."
- "This theory has been accepted for decades, so it must be correct."
Why fallacious: Age doesn't determine validity. Many old beliefs have been disproven.
11. Appeal to Novelty
Description: Assuming something is better because it's new.
Examples:
- "This is the latest treatment, so it must be superior."
- "New research overturns everything we knew." (Often overstated)
Why fallacious: New ≠ better. Established treatments often outperform novel ones.
Fallacies of Relevance
12. Ad Hominem (Attack the Person)
Description: Attacking the person making the argument rather than the argument itself.
Types:
- Abusive: "He's an idiot, so his theory is wrong."
- Circumstantial: "She's funded by industry, so her findings are false."
- Tu Quoque: "You smoke, so your anti-smoking argument is invalid."
Why fallacious: Personal characteristics don't determine argument validity.
Note: Conflicts of interest are worth noting but don't invalidate evidence.
13. Genetic Fallacy
Description: Judging something based on its origin rather than its merits.
Examples:
- "This idea came from a drug company, so it's wrong."
- "Ancient Greeks believed this, so it's outdated."
Better approach: Evaluate evidence regardless of source.
14. Appeal to Emotion
Description: Manipulating emotions instead of presenting evidence.
Types:
- Appeal to fear: "If you don't vaccinate, your child will die."
- Appeal to pity: "Think of the suffering patients who need this unproven treatment."
- Appeal to flattery: "Smart people like you know that..."
Why fallacious: Emotional reactions don't determine truth.
15. Appeal to Consequences (Argumentum ad Consequentiam)
Description: Arguing something is true/false based on whether consequences are desirable.
Examples:
- "Climate change can't be real because the solutions would hurt the economy."
- "Free will must exist because without it, morality is impossible."
Why fallacious: Reality is independent of what we wish were true.
16. Appeal to Nature (Naturalistic Fallacy)
Description: Assuming "natural" means good, safe, or effective.
Examples:
- "This treatment is natural, so it's safe."
- "Organic food is natural, so it's healthier."
- "Vaccines are unnatural, so they're harmful."
Why fallacious:
- Many natural things are deadly (arsenic, snake venom, hurricanes)
- Many synthetic things are beneficial (antibiotics, vaccines)
- "Natural" is often poorly defined
17. Moralistic Fallacy
Description: Assuming what ought to be true is true.
Examples:
- "There shouldn't be sex differences in ability, so they don't exist."
- "People should be rational, so they are."
Why fallacious: Desires about reality don't change reality.
Fallacies of Structure
18. False Dichotomy (False Dilemma)
Description: Presenting only two options when more exist.
Examples:
- "Either you're with us or against us."
- "It's either genetic or environmental." (Usually both)
- "Either the treatment works or it doesn't." (Ignores partial effects)
Reality: Most issues have multiple options and shades of gray.
19. Begging the Question (Circular Reasoning)
Description: Assuming what you're trying to prove.
Examples:
- "This medicine works because it has healing properties." (What are healing properties? That it works!)
- "God exists because the Bible says so, and the Bible is true because it's God's word."
Detection: Check if the conclusion is hidden in the premises.
20. Moving the Goalposts
Description: Changing standards of evidence after initial standards are met.
Example:
- Skeptic: "Show me one study."
- [Shows study]
- Skeptic: "That's just one study; show me a meta-analysis."
- [Shows meta-analysis]
- Skeptic: "But meta-analyses have limitations..."
Why problematic: No amount of evidence will ever be sufficient.
21. Slippery Slope
Description: Arguing that one step will inevitably lead to extreme outcomes without justification.
Example:
- "If we allow gene editing for disease, we'll end up with designer babies and eugenics."
When valid: If intermediate steps are actually likely.
When fallacious: If chain of events is speculative without evidence.
22. Straw Man
Description: Misrepresenting an argument to make it easier to attack.
Example:
- Position: "We should teach evolution in schools."
- Straw man: "So you think we should tell kids they're just monkeys?"
Detection: Ask: Is this really what they're claiming?
Fallacies of Statistical and Scientific Reasoning
23. Texas Sharpshooter Fallacy
Description: Cherry-picking data clusters to fit a pattern, like shooting arrows then drawing targets around them.
Examples:
- Finding cancer clusters and claiming environmental causes (without accounting for random clustering)
- Data mining until finding significant correlations
Why fallacious: Patterns in random data are inevitable; finding them doesn't prove causation.
24. Base Rate Fallacy
Description: Ignoring prior probability when evaluating evidence.
Example:
- Disease affects 0.1% of population; test is 99% accurate
- Positive test ≠ 99% probability of disease
- Actually ~9% probability (due to false positives exceeding true positives)
Solution: Use Bayesian reasoning; consider base rates.
25. Prosecutor's Fallacy
Description: Confusing P(Evidence|Innocent) with P(Innocent|Evidence).
Example:
- "The probability of this DNA match occurring by chance is 1 in 1 million, so there's only a 1 in 1 million chance the defendant is innocent."
Why fallacious: Ignores base rates and prior probability.
26. McNamara Fallacy (Quantitative Fallacy)
Description: Focusing only on what can be easily measured while ignoring important unmeasured factors.
Example:
- Judging school quality only by test scores (ignoring creativity, social skills, ethics)
- Measuring healthcare only by quantifiable outcomes (ignoring quality of life)
Quote: "Not everything that counts can be counted, and not everything that can be counted counts."
27. Multiple Comparisons Fallacy
Description: Not accounting for increased false positive rate when testing many hypotheses.
Example:
- Testing 20 hypotheses at p < .05 gives ~65% chance of at least one false positive
- Claiming jellybean color X causes acne after testing 20 colors
Solution: Correct for multiple comparisons (Bonferroni, FDR).
28. Reification (Hypostatization)
Description: Treating abstract concepts as if they were concrete things.
Examples:
- "Evolution wants organisms to survive." (Evolution doesn't "want")
- "The gene for intelligence" (Intelligence isn't one gene)
- "Nature selects..." (Nature doesn't consciously select)
Why problematic: Can lead to confused thinking about mechanisms.
Fallacies of Scope and Definition
29. No True Scotsman
Description: Retroactively excluding counterexamples by redefining criteria.
Example:
- "No natural remedy has side effects."
- "But poison ivy is natural and causes reactions."
- "Well, no true natural remedy has side effects."
Why fallacious: Moves goalposts to protect claim from falsification.
30. Equivocation
Description: Using a word with multiple meanings inconsistently.
Example:
- "Evolution is just a theory. Theories are guesses. So evolution is just a guess."
- (Conflates colloquial "theory" with scientific "theory")
Detection: Check if key terms are used consistently.
31. Ambiguity
Description: Using vague language that can be interpreted multiple ways.
Example:
- "Quantum healing" (What does "quantum" mean here?)
- "Natural" (Animals? Not synthetic? Organic? Common?)
Why problematic: Claims become unfalsifiable when terms are undefined.
32. Mind Projection Fallacy
Description: Projecting mental constructs onto reality.
Example:
- Assuming categories that exist in language exist in nature
- "Which chromosome is the gene for X on?" when X is polygenic and partially environmental
Better: Recognize human categories may not carve nature at the joints.
Fallacies Specific to Science
33. Galileo Gambit
Description: "They laughed at Galileo, and he was right, so if they're laughing at me, I must be right too."
Why fallacious:
- They laughed at Galileo, and he was right
- They also laughed at countless crackpots who were wrong
- Being an outsider doesn't make you right
Reality: Revolutionary ideas are usually well-supported by evidence.
34. Argument from Ignorance (Ad Ignorantiam)
Description: Assuming something is true because it hasn't been proven false (or vice versa).
Examples:
- "No one has proven homeopathy doesn't work, so it works."
- "We haven't found evidence of harm, so it must be safe."
Why fallacious: Absence of evidence ≠ evidence of absence (though it can be, depending on how hard we've looked).
Burden of proof: Falls on the claimant, not the skeptic.
35. God of the Gaps
Description: Explaining gaps in knowledge by invoking supernatural or unfalsifiable causes.
Examples:
- "We don't fully understand consciousness, so it must be spiritual."
- "This complexity couldn't arise naturally, so it must be designed."
Why problematic:
- Fills gaps with non-explanations
- Discourages genuine investigation
- History shows gaps get filled by natural explanations
36. Nirvana Fallacy (Perfect Solution Fallacy)
Description: Rejecting solutions because they're imperfect.
Examples:
- "Vaccines aren't 100% effective, so they're worthless."
- "This diet doesn't work for everyone, so it doesn't work."
Reality: Most interventions are partial; perfection is rare.
Better: Compare to alternatives, not to perfection.
37. Special Pleading
Description: Applying standards to others but not to oneself.
Examples:
- "My anecdotes count as evidence, but yours don't."
- "Mainstream medicine needs RCTs, but my alternative doesn't."
- "Correlation doesn't imply causation—except when it supports my view."
Why fallacious: Evidence standards should apply consistently.
38. Unfalsifiability
Description: Formulating claims in ways that cannot be tested or disproven.
Examples:
- "This energy can't be detected by any instrument."
- "It works, but only if you truly believe."
- "Failures prove the conspiracy is even deeper."