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spurious scholar

Because if p < 0.05, why not publish?

Step 1: Gather a bunch of data. There are 25,156 variables in my database. The data ranges from the mundane (air pollution in Chicago) to the weird (Hotdogs consumed by Nathan's Hot Dog Eating Competition Champion) to the super-niche (How clickbait-y Numberphile YouTube video titles are, as rated by an AI).
Step 2: Dredge that data to find random correlations between variables. "Dredging data" means taking one variable and correlating it against every other variable just to see what sticks. It's a dangerous way to go about analysis, because any sufficiently large dataset will yield strong correlations completely at random.

Fun fact: the chart used on the wikipedia page to demonstrate data dredging is also from me. I've been being naughty with data since 2014.

Step 3: Calculate the correlation coefficient, confidence interval, and p-value to see if the connection is statistically significant. "Statistically significant" is a misleading term. It sounds like it means "statistically significant" because, you know, those are the same two words. Unfortunately statistical significance is a technical term that means mumble mumble at least as extreme mumble mumble null hypothesis mumble mumble probability mumble mumble p-values.

You know what? Forget the technical definition. "Statistically significant" just means "someone did some fancy math."

I really did the fancy math below and you can check it by clicking on the "view detailed data" link under each paper. And these really do qualify as "statistically significant" in the technical sense. It's just that "statistically significant" does not mean the results are "significant."

Step 4: If it is, have a large language model draft a research paper.
Step 5: Remind everyone that these papers are AI-generated and are not real. Seriously, just pick one and read the lit review section. The silliness of the papers is an artifact of me (1) having fun and (2) acknowledging that realistic-looking AI-generated noise is a real concern for academic research (peer reviews in particular).

The papers could sound more realistic than they do, but I intentionally prompted the model to write papers that look real but sound silly.

Also: every page says "This paper is AI-generated" at the bottom and the first letters of the names of the authors always spell out C-H-A-T-G-P-T.

Step 6: ...publish:

Never Gonna Give Blue Up: The Correlation Between Massachusetts Democrat Senatorial Votes and 'Never Gonna Give You Up' Meme Popularity
The Journal of Political Meme Studies
r=0.834 · 95% conf. int. [0.069,0.981] · r2=0.695 · p < 0.05
Generated Jan 2024 · View data details

Reeling in the Votes: A Fin-tastic Look at the Relationship Between Household Spending on Fish and Seafood and Republican Presidential Votes in Idaho
Journal of Aquatic Politics
r=0.990 · 95% conf. int. [0.905,0.999] · r2=0.979 · p < 0.01
Generated Jan 2024 · View data details

Got Milk Votes? The Udderly Surprising Correlation Between Annual US Household Spending on Fresh Milk and Cream and Votes for the Democrat Presidential Candidate in Idaho
The Journal of Bovine Behavior and Political Analysis
r=0.938 · 95% conf. int. [0.532,0.993] · r2=0.881 · p < 0.01
Generated Jan 2024 · View data details

Swinging Right: A Crane-tastic Correlation Between Republican Votes for Senators in Montana and the Number of Crane Operators
The Journal of Political Ornithology
r=0.876 · 95% conf. int. [0.224,0.986] · r2=0.768 · p < 0.05
Generated Jan 2024 · View data details

Moo-litical Milk Money: The Magnificent Marriage of Milk and Democratic Votes in Nebraska
The Bovine Behavioral Journal
r=0.860 · 95% conf. int. [0.160,0.984] · r2=0.739 · p < 0.05
Generated Jan 2024 · View data details

Burning Bright: The Illuminating Relationship Between Kerosene Consumption in Tanzania and the Length of Minutephysics YouTube Videos
The Journal of Interdisciplinary Research in Quirky Connections
r=0.626 · 95% conf. int. [0.042,0.891] · r2=0.392 · p < 0.05
Generated Jan 2024 · View data details

An Unlikely Connection: Examining the Correlation between Robberies in Maryland and Comments on Extra History YouTube Videos
The Journal of Quirky Socio-Cultural Analysis
r=0.918 · 95% conf. int. [0.707,0.979] · r2=0.842 · p < 0.01
Generated Jan 2024 · View data details

Clearing the Air: Unveiling the Nerdy Intelligence Behind YouTube Video Titles in Napa, California
The Journal of Digital Linguistics and Pop Culture Studies
r=0.952 · 95% conf. int. [0.754,0.992] · r2=0.907 · p < 0.01
Generated Jan 2024 · View data details

A Tatum for Republican Success: An Analysis of the Connection Between Name Popularity and Political Leanings in Minnesota
Journal of Political Nomenclature and Ideological Trends
r=0.915 · 95% conf. int. [0.717,0.976] · r2=0.837 · p < 0.01
Generated Jan 2024 · View data details

The Blue State and the Burning Question: A Statistical Analysis of the Connection between Votes for the Democrat Presidential Candidate in Rhode Island and Kerosene Consumption in Ethiopia
The Journal of Global Interconnectedness and Unlikely Correlations
r=0.870 · 95% conf. int. [0.488,0.972] · r2=0.757 · p < 0.01
Generated Jan 2024 · View data details

The Game of Probation: A Game Theorists Approach to Assessing the Influence of Trendy YouTube Video Titles on Probation Officer Numbers in Nevada
The Journal of Quantitative YouTube Studies
r=0.936 · 95% conf. int. [0.794,0.981] · r2=0.875 · p < 0.01
Generated Jan 2024 · View data details

Associates Degrees in Business Administration: A Clickbait-y Correlation with AsapSCIENCE YouTube Video Titles
The Journal of Applied Clickbait Studies
r=0.937 · 95% conf. int. [0.750,0.985] · r2=0.878 · p < 0.01
Generated Jan 2024 · View data details

The 'Harambe' Effect: An Unbearable Tale of Memes and Mail
The Journal of Internet Culture and Communication
r=0.996 · 95% conf. int. [0.975,0.999] · r2=0.993 · p < 0.01
Generated Jan 2024 · View data details

The Smoggy Stork: A Triple Dose of Air Pollution on Triplet Birth Rates in Boston
The Journal of Environmental Epidemiology and Ecotoxicology
r=0.882 · 95% conf. int. [0.721,0.953] · r2=0.778 · p < 0.01
Generated Jan 2024 · View data details

The Bazinga Craze: A Glance at Vihart's YouTube Comment Hype
Journal of Internet Culture and Phenomena
r=0.855 · 95% conf. int. [0.611,0.951] · r2=0.732 · p < 0.01
Generated Jan 2024 · View data details

The Fuel of Friends: Exploring the Relationship Between Trendy Technology Connections YouTube Video Titles and Petroleum Consumption in Bermuda
The Journal of Quirky Ecological Economics
r=0.971 · 95% conf. int. [0.812,0.996] · r2=0.943 · p < 0.01
Generated Jan 2024 · View data details

Blowin' in the Wind: A Wind Power Analysis of Mark Rober's YouTube Videos
The Journal of Sustainable Energy and Popular Culture
r=0.988 · 95% conf. int. [0.952,0.997] · r2=0.976 · p < 0.01
Generated Jan 2024 · View data details

Libertarian Leanings and Lively Lignocellulosic Linkages: Exploring the Correlation Between Libertarian Presidential Votes in Arizona and Biomass Power Generation in Uganda
The Journal of Bizarre Biopolitics
r=0.969 · 95% conf. int. [0.737,0.997] · r2=0.939 · p < 0.01
Generated Jan 2024 · View data details

Red State, Green Stocks: An Examination of the Relationship between Republican Votes for Senators in Georgia and Prologis' Stock Price (PLD)
The Journal of Political Economy and Financial Markets
r=0.969 · 95% conf. int. [0.831,0.994] · r2=0.938 · p < 0.01
Generated Jan 2024 · View data details

Rounding the Bases: The Libertarian Leverage on the Texas Rangers' Divisional Destiny
The Journal of Sports Economics and Policy
r=0.849 · 95% conf. int. [0.508,0.960] · r2=0.721 · p < 0.01
Generated Jan 2024 · View data details

From Liberté to Libertarians: Connecting California Senatorial Elections to Kerosene Consumption in French Polynesia
The Journal of Transdisciplinary Ethnographic Studies
r=0.963 · 95% conf. int. [0.764,0.995] · r2=0.928 · p < 0.01
Generated Jan 2024 · View data details

The Walter Effect: Analyzing the Impact of Walter on YouTube Comment Counts
The Journal of Media Influences and Online Behavior
r=0.845 · 95% conf. int. [0.346,0.971] · r2=0.714 · p < 0.01
Generated Jan 2024 · View data details

Mastering the Public Eye: Analyzing the Link Between Public Administration Master's Degrees and YouTube Likes on SmarterEveryDay
The Journal of Public Administration and Digital Engagement
r=0.974 · 95% conf. int. [0.889,0.994] · r2=0.948 · p < 0.01
Generated Jan 2024 · View data details

Air-ing Out Political Preferences: The Influence of Air Quality on Republican Votes in Alabama
Journal of Environmental Politics and Policy
r=0.976 · 95% conf. int. [0.842,0.997] · r2=0.953 · p < 0.01
Generated Jan 2024 · View data details

Chillin' with the Penguins: The Antarctic Connection between Republican Votes for Senators in Pennsylvania and Google Searches
The Journal of Polar Politics and Information Inquiry
r=0.871 · 95% conf. int. [0.202,0.986] · r2=0.758 · p < 0.05
Generated Jan 2024 · View data details


Currently viewing 25 of 4,731 spurious research papers

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Why this works

  1. Data dredging: I have 25,156 variables in my database. I compare all these variables against each other to find ones that randomly match up. That's 632,824,336 correlation calculations! This is called “data dredging.” Fun fact: the chart used on the wikipedia page to demonstrate data dredging is also from me. I've been being naughty with data since 2014.
    Instead of starting with a hypothesis and testing it, I isntead tossed a bunch of data in a blender to see what correlations would shake out. It’s a dangerous way to go about analysis, because any sufficiently large dataset will yield strong correlations completely at random.
  2. Lack of causal connection: There is probably no direct connection between these variables, despite what the AI says above. Because these pages are automatically generated, it's possible that the two variables you are viewing are in fact causually related. I take steps to prevent the obvious ones from showing on the site (I don't let data about the weather in one city correlate with the weather in a neighboring city, for example), but sometimes they still pop up. If they are related, cool! You found a loophole.
    This is exacerbated by the fact that I used "Years" as the base variable. Lots of things happen in a year that are not related to each other! Most studies would use something like "one person" in stead of "one year" to be the "thing" studied.
  3. Observations not independent: For many variables, sequential years are not independent of each other. You will often see trend-lines form. If a population of people is continuously doing something every day, there is no reason to think they would suddenly change how they are doing that thing on January 1. A naive p-value calculation does not take this into account. You will calculate a lower chance of "randomly" achieving the result than represents reality.

    To be more specific: p-value tests are probability values, where you are calculating the probability of achieving a result at least as extreme as you found completely by chance. When calculating a p-value, you need to assert how many "degrees of freedom" your variable has. I count each year (minus one) as a "degree of freedom," but this is misleading for continuous variables.

    This kind of thing can creep up on you pretty easily when using p-values, which is why it's best to take it as "one of many" inputs that help you assess the results of your analysis.
  4. Outliers: Some datasets here have outliers which drag up the correlation. In concept, "outlier" just means "way different than the rest of your dataset." When calculating a correlation like this, they are particularly impactful because a single outlier can substantially increase your correlation.

    Because this page is automatically generated, I don't know whether any of the charts displayed on it have outliers. I'm just a footnote. ¯\_(ツ)_/¯
    I intentionally mishandeled outliers, which makes the correlation look extra strong.



Spurious Scholar was launched January 27, 2024. If you have feedback on it, I'd love to hear from you! Shoot me a note: feedback@tylervigen.com.


Project by Tyler Vigen
emailme@tylervigen.com · about · subscribe


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