Month: November 2015

The Sad Story of the Inductivist Turkey

It’s Christmas dinner, an allegory of abundance and a stage for opulence. Your neighbor at the table, probably a fourth cousin whose name you barely remember, is starting to show signs of giving up and is desperately seeking your complicit gaze. But with feigned nonchalance and reckless boldness, you act as if you’re still hungry, even though the amount of food you’ve just consumed could satisfy the caloric needs of the entire province of Isernia. Then, as the third hour of dinner strikes, a new, succulent course is brought out: a stuffed turkey.

At that moment, in a fleeting pang of consciousness – typically left at home during such occasions (otherwise, how else could one explain such an absurd amount of food?) – you wonder about the story behind the turkey in front of you.

This turkey lived on a farm where, from day one, it was fed regularly. The turkey noticed that food was brought every day at the same time, regardless of the season, weather, or other external factors.

Over time, it began to derive a general rule based on repeated observation of reality. It began to embrace an inductivist worldview, collecting so many observations that it eventually made the following assertion:

“Every day at the same time, they will bring me food.”

Satisfied and convinced by its inductivist reasoning, the turkey continued to live this way for several months. Unfortunately for the turkey, its assertion was spectacularly disproven on Christmas Eve when its owner approached as usual, but instead of bringing food, he slaughtered it to serve at the very Christmas dinner you are attending.

The Turkey and Inductivism

This sad story is actually a famous metaphor developed by Welsh philosopher Bertrand Russell in the early 20th century. It clearly and simply refutes the idea that repeated observation of a phenomenon can lead to a general assertion with absolute certainty. The story of the inductivist turkey dates back to a time when Russell opposed the ideas of the Vienna Circle’s neopositivists, who placed unconditional trust in science—particularly inductivism—and regarded it as the only possible means of acquiring knowledge.

The turkey’s example was later adopted by Austrian philosopher Karl Popper, who used it to support his principle of falsifiability. According to this theory—one of the 20th century’s most brilliant—science progresses through deductions that are never definitive and can always be falsified, meaning disproven by reality. There is no science if the truths it produces are immutable and unfalsifiable. Without falsifiability, there can be no progress, stimulation, or debate.

What Does This Mean for the Turkey?

Returning to the turkey’s situation, does this mean it’s impossible to draw conclusions based on experience? Of course not. The study of specific cases helps us understand the general phenomenon we’re investigating and can lay the groundwork for developing general laws. However, the truth of any conclusion we reach is never guaranteed. In simpler terms, if a flock of sheep passes by and we see 100 white sheep in a row, that doesn’t mean the next one will also be white. From an even more pragmatic perspective, no number of observations can guarantee absolute conclusions about the phenomenon in question.

Implications for Statistics and Inference

Statistics, and particularly inference—a core component of statistics—derive their philosophical foundations from this concept. The purpose of inference is to draw general conclusions based on partial observations of reality, or a sample.

For example, let’s say we want to estimate the average number of guests at a Christmas dinner. How would we do that? Let’s set aside the turkey for a moment, put down our forks and knives, and imagine we have a sample of 100 Christmas dinners where we count the number of guests. Based on a fundamental theorem of statistics known as the Central Limit Theorem, we can assert that the average number of guests observed in our sample is a correct estimate of the true population mean (provided the sample is representative and unbiased, but that’s a topic for another day). Moreover, the error in this estimate decreases as the sample size increases. In other words, the more dinners we include in our sample, the more robust and accurate the estimate becomes. Logical, right?

But how certain are we that our estimate is correct? Suppose we’ve determined that the average number of guests across 100 dinners is 10. From this observation, we can also calculate an interval within which the true average is likely to fall. With a sample of 100 units, we can assert with a certain level of confidence (typically 95%) that the true average number of guests is between 7 and 13. With a sample of 200 units, our estimate becomes more precise, narrowing the interval to 8 and 12. The larger the sample, the more accurate the estimate.

Absolute Confidence? The Turkey’s Warning

These estimates are valid with a 95% confidence level. But what if we wanted 100% confidence? Would it be possible? Here’s where our inductivist turkey makes its comeback. If we wanted 100% confidence, we would fall into the same trap as the turkey—attempting to draw conclusions with absolute certainty from a series of observations. As we’ve seen, at the turkey’s expense, this is impossible. The explanation is simple: even with a large and representative sample, it’s never possible to completely eliminate the influence of chance. There’s always a small probability that we’ll encounter an observation—like a Christmas dinner with more or fewer guests than our confidence interval predicts—that contradicts our estimates.

Thus, what statistics can offer in such cases is a very robust estimate of the parameter we’re studying (instead of the number of dinner guests, think about something more critical, like the average income of a population, the efficacy of a drug, or election polls). However, it can never provide absolute certainty about a phenomenon. This is because the world we live in is not deterministic but is partly governed by chance. In this sense, statistics is a science that demonstrates the “non-absoluteness” of other sciences, which is perhaps why it is often feared or disliked.

After all, statistics reached its peak development in the 20th century, the century of relativism—think of Einstein’s theory of relativity, Heisenberg’s uncertainty principle, or Popper’s criterion of falsifiability.

Now, it’s time to eat the turkey before it gets cold!

A statistical approach to terrorism

Datastory.it is also about current events, and following the attacks in Paris, we want to share our opinion on the matter.

The series of attacks that struck the French capital on November 13, 2015, seems to have shaken public opinion and mobilized European governments. In newspapers, parliaments, and international forums, the primary focus is how to ensure safety and prevent the horrific events in Paris from happening again. Many hypotheses are being considered: stricter border controls, revising the Schengen Agreement, increased surveillance in high-risk areas, and the installation of cameras in major cities.

Additionally, there are discussions about allocating more personnel and resources to security (the press mentions €400 million in Belgium, €120 million in Italy). And then there are the bombings in Iraq and Syria, with the United States, Russia, and France taking the lead. Some estimates suggest the U.S. spends $10 million daily on these operations, while Russia spends about a third of that amount.

The caliphate in Iraq and Syria is undoubtedly a threat to the Western world. More broadly, in recent years, Islamist terrorism has caused deaths and suffering even in Europe.

From the Madrid bombings on March 11, 2004, to the Paris attacks on November 13, 2015, 411 people have died in seven Islamist terrorist attacks. The number rises to 488 if we include the July 22, 2011, attack in Norway by Breivik (which had an anti-Islamic motivation).

But how much does it cost us to protect ourselves from terrorist attacks? How far are we willing to go to prevent more lives from being lost to fanatics killing in the name of their religion?

And in a world where resources are limited, what are we willing to give up to increase our security?

Let’s reflect on these questions using some concrete examples. In Italy alone, around 1,000 people die each year in workplace accidents (source: Osservatorio sui morti del lavoro), 3,385 people in road accidents (2013, source: ISTAT), 12,004 women from breast cancer (2012, source: ISTAT), and an astonishing 83,000 deaths are attributable to smoking!

How many lives could be saved if the significant resources budgeted for defense against terrorist attacks were instead used for anti-smoking campaigns? If millions were invested in securing the road network and law enforcement increased traffic and alcohol checks? How many of the 12,000 women who die each year from breast cancer could be saved if we doubled free mammograms?

It’s difficult to answer these questions (though we will delve deeper into this topic), but let’s make a few assumptions. Let’s take the €120 million the government has declared it will allocate to protect us from terrorist attacks following the Paris events. We could decide to allocate them in three different ways, as outlined in the table below:

InvestmentImpact (Assumption)
Informational campaign on the dangers of smoking in all schools and free copies of the book “The Easy Way to Stop Smoking” for all smokers who request it1% reduction in smoking-related deaths: 830 lives saved per year
Doubling free mammograms (every year instead of every two years)10% reduction in breast cancer deaths annually: 1,200 lives saved per year
Installing speed enforcement systems on all highways and tripling alcohol-related checks5% reduction in road deaths: 170 lives saved per year

How should we decide how to allocate the €120 million? Is it wise to invest it in counterterrorism (which has caused 488 deaths across Europe in the past 15 years) rather than in breast cancer prevention, which could save 1,200 women per year in Italy alone?

It’s legitimate to think that the Paris attacks did not just cause 136 deaths but also created a sense of insecurity. But how do we determine the value of a life lost to terrorism compared to one lost in a road accident?

How can we allocate our €120 million wisely, rather than being emotionally swayed by recent events?

What do you think? Share your thoughts in the comments!

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“…few people will appreciate the music if I just show them the notes. Most of us need to listen to the music to understand how beautiful it is. But often that’s how we present statistics; we just show the notes, we don’t play the music.”
—Hans Rosling

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