After the Crash: Silver Clawing Back Up After Epic Bust Last Week

A month ago (red arrow in 5-year chart below), I noticed that the price of silver was starting into a parabolic rise pattern. That is typical of speculative bubbles. Those bubbles usually end in a bust. Also, the rise in silver price seemed to be mainly driven by retail speculators, fueled by half-baked narratives rather than physical reality.

Five-year chart of silver prices $/oz, per Trading View

So I wrote a blog post here last month warning of a bubble, and sold about a quarter of my silver holdings. (I also initiated some protective options but that’s another story for another time.) I then felt pretty foolish for the next four weeks, as silver prices went up and up and up, a good 40% percent over the point I initially thought it was a bubble. Maybe I was wrong, or maybe the market can stay irrational longer than you can stay solvent, per J. M. Keynes.

When the crash finally came, it was truly epic. Below is a one-month chart of silver price. The two red lines show silver price at the close of regular trading on Thursday, January 29 (115.5 $/oz), and at the close of trading on Friday, January 30 (84.6 $/oz):

This is a drop of nearly 30% in one day, which is a mind-boggling move for a major commodity. Gold got dragged down, too:

These aren’t normal moves. Over roughly the past 25+ years (through 2025), gold’s price has changed by about 0.8% per day on average (in absolute percentage terms). Silver, being more volatile, has averaged around 1.4–1.5% per day. If you’re scoring at home, that’s about a 13 Sigma move for Gold and 22 Sigma move for Silver! You’re witnessing something that shouldn’t happen more than once in several lifetimes…statistically speaking. Yet here we are.

After the fact, a number of causes for the crash were proposed:

  • The nomination of Kevin Warsh as the next Federal Reserve Chair.  Warsh is perceived as a hawkish policymaker, leading investors to expect tighter monetary policy, higher interest rates, and a stronger U.S. dollar—all of which reduce the appeal of non-yielding assets like silver. 
  • Aggressive profit-taking after silver surged over 40% year-to-date and hit record highs near $121 per ounce. 
  • Leveraged positions in silver futures were rapidly unwound as prices broke key technical levels, triggering stop-loss orders and margin calls. 
  • CME margin hikes (up to 36% for silver futures) increased trading costs, forcing traders to cut exposure and accelerating the sell-off. 
  • Extreme speculation among Chinese investors, leading the Chinese government to clamp down on speculative trading. (And presumably Chinese solar panel manufacturers have been complaining to the government about high costs for silver components).

What happens next?

Silver kept falling to a low of 72.9 $/oz in the wee hours of February 2, a drop of 40% percent from the high of 120.8 on Jan 26. However, it looks to my amateur eyes like the silver bubble is not really tamed yet. For all the drama of a 22-sigma crash one day crash, about all that did was erase one months’ worth of speculative gains. The charts above are showing that silver is clawing its way right back up again.  It is very roughly on the trend line of the past six months, if one excludes the monster surge in the month of January.

There is a saying among commodities traders, that the cure for high prices is high prices. This means that over time, there will be adjustments that will bring down prices. In the case of silver, that will include figuring out ways to use less of it, including recycling and substitution of other metals like copper and aluminum. However, my guess is that the silver bulls feel vindicated by the price action so far, and will keep on buying at least for now.

Disclaimer: As usual, nothing here should be regarded as advice to buy or sell any security.

Unweighted Bayesians get Eaten By Wolves

A village charges a boy with watching the flock and raising the alarm if wolves show up. The boy decides to have a little fun and shout out false alarms, much to the chagrin of the villagers. Then an actual wolf shows up, the boy shouts his warning, but the villagers are proper Bayesians who, having learned from their mistakes, ignore the boy. The wolves have a field day, eating the flock, the boy, and his entire village.

I may have augmented Aesop’s classic fable with that last bit.

The boy is certainly a crushing failure at his job, but here’s the thing: the village is equally foolish, if not more so. The boy revealed his type, he’s bad at his job, but the village failed to react accordingly. They updated their beliefs but not their institutions. “We were good Bayesians” will look great on their tombstones.

They had three options.

A) Update their belief about the boy and ignore him.

This is what they did and look where that got them. Nine out of ten wolves agree that Good Bayesians are nutritious and delicious.

B) Update their beliefs about the boy, but continue to check on the flock when the boy raises the alarm.

They should have weighted their responses. Much like Pascal taking religion seriously because eternal torment was such a big punishment, you have to weight you expected probability of truth in the alarm against the scale of the downside if it is true. You can’t risk being wrong when it comes to existential threats.

C) Update their beliefs about the boy and immediately replace him with someone more reliable.

It’s all fine and good to be right about the boy being a lying jerk but that doesn’t fix your problem. You need to replace him with someone who can reliably do the job.

So this is a post about fascism. Some think that fascism is already here, others dismiss this as alarmism, others splititng the difference claiming that we are in some state of semi- or quasi-fascism. Within the claims that it is all alarmism, what I hear are the echoes of villagers annoyed by 50 years of claims that conservative politics were riddled with fascism, that Republicans were fascists, that everything they didn’t like was neoliberalism, fascism, or neoliberal fascism. Get called a wolf enough times and you might stop believing that wolves even exist.

Even if I am sympathetic, that doesn’t get you off the hook. It hasn’t been fascism for 50 years will look pretty on your tombstone.

Let’s return to our options

  • A) Don’t believe the people who have been shouting about fascism for years, but take seriously new voices raising the alarm.
  • B) Find a set of people who, exogenous to current events, you would and do trust and take their warnings seriously.
  • C) Don’t believe anyone who shouts fascism, because shouting fascism is itself evidence they are non-serious people.
  • D) Start monitoring the world yourself

Both A) and B) are sensible choices! If you’ve Bayesian updated yourself into not trusting claims of fascism from wide swaths of the commentariat, political leaders, and broader public, that’s fine, but you’ve got to find someone you trust. And if that leads you to a null set, then D) you’re going to have to do it yourself. Good luck with that. It takes a lot of time, expertise, and discipline not to end up the fascism-equivalent of an anti-vaxxer who “did their own research.”

Because let me tell you, C) is the route to perdition in all things Bayesian. Once your beliefs are mired in a recursive loop of confirmation bias, it’s all downhill. Every day will be just a little dumber than the one before. And that’s the real Orwellian curse of fascism.

Update on School Valentines

I have principles. One of them is that school Valentines are indulgent and bad for the environment.

I have written Markets in Everything for school Valentine’s

And here are some quotes from Do Less for Preschool

Just fail, people. Don’t even put “crazy sock day” on your work Outlook calendar…

Oh no. If AI lifts the constraint of time, then what we are going to get is more crazy sock days. To stay ahead in the status competition, families will have to do Bluey-Crazy Sock Day every week. The ocean will become a thick soup of polyester Bluey-crazy-socks, size 3T, worn only once.

On principle, I did low-effort Valentine’s last year. I spent as little of my own time and money as I could. My kids wrote their friends’ names on the paper things.  Smugly, I imagined that I’d saved the dolphins in the tuna nets and helped some other mom feel like she was doing okay.

Who do you imagine is upset? Not the other moms. My kids. The older one especially feels in his body that failing this test in February of 2026 will result in expulsion from the tribe and death in the outer darkness beyond the reach of the campfire.

Guess what I care about more than dolphins? We will do more this year.

Preschool kids do not care and should not be asked to care. I still believe that parents and daycare directors should do less for preschool. Truly, I see no reason, at all, for a preschool dress up day or Valentine’s Day party. Can someone think of the dolphins before it’s too late and the kid grows up and starts caring about the status wars?

Drawbacks of Long Term Thinking

This post is just some thoughts about perspective. I apologize for any lack of organization.

My academic influences include North, Weingast, Coase, Hayek, the field of Public Choice, and others. I’m not an ‘adherent’ to any school of thought. Those guys just provided some insights that I find myself often using.

What lessons did they teach? Plenty. When I see the world of firms, governments, and other institutions, I maintain a sharp distinction between intention and outcome. Any given policy that’s enacted is probably not the welfare maximizing one, but rather must keep special interests relatively happy. So, the presence of special interests is a given and doesn’t get me riled up. When I see an imperfect policy outcome, I think about who had to be enticed to vote for it. We live in a world where ‘first bests’ aren’t usually on the table.

Historically, or in lower income countries, I think about violence. Their rules and laws are not operating in a vacuum of peaceful consent. There is always the threat of violence. Laws are enforced (or not) conditional on whether and what type of violence that may result. All of the ideal legislation is irrelevant if theft and fraud are the lay of the land.

I think about institutional evolution with both internal and external pressures. I’m a bit worried about the persistence of the US republic, or at least worried for its pro-growth policies. I’m not worried about China in the long run. I don’t think they have the institutions that get them to ‘high income’ status. I do think that they are a tactical concern in the short run and that the government does/will have access to great volumes of resources in the medium run. That’s a bit of a concern. But like I said, I’m not super worried in the long run.

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The Wealth Ladder

The Wealth Ladder is a 2025 personal finance book from data blogger Nick Maggiulli. The core idea is good: that the best financial strategies will be different based on your current wealth level. Maggiulli divides people into 6 net worth levels based on orders of magnitude, from less than $10K to over $100M. The middle of the book has separate chapters with advice for people in each level, so a book that is already a fairly quick and easy read as a whole could be even quicker if you skipped the chapters about levels other than your own.

The beginning of the book tries to develop some simple rules phrased in a way that they can apply across every level, because they are based on a percentage of your net worth. I like the idea but don’t think it really worked. His “1% Rule” says you should only accept an opportunity to earn money if it will increase your net worth by at least 1%. But in practice, whether an earning opportunity is worth your time depends less on how many absolute dollars in generates as a % of your net worth, and more on how many $ per hour it generates. The “0.01% Rule” (don’t worry about spending money on anything that costs less than 0.01% of your net worth) is better. But whether it is a good rule for you will depend on your age and income.

In short, while tailoring his advice in 6 different ways for the 6 wealth levels of his ladder is an improvement on one-size-fits all personal finance books, even this much tailoring isn’t enough. Having a $1 million net worth is normal for a household in their 60s but would be exceptional for one in their 20’s; and vice-versa for a household with under $10k net worth. Chapter 10 explains the data on this well, but it kind of undermines the ideas of the previous chapters. Households with the same net worth should be making very different decisions in their 20s vs 60s.

The strongest part of the book is the use of data from the Survey of Consumer Finances and the Panel Study of Income Dynamics to show how people differ by wealth level and how people move from one level to another. For instance, he shows that the poor have most of their wealth in cash and vehicles; the middle class in homes; the wealthy in retirement accounts and stocks; the very rich in private businesses. Americans tend to climb the wealth ladder slowly but steadily; over 10 years they are twice as likely to move up the ladder as to move down; over 20 years, 3 times as likely. The median person who made it to one of the top 3 rings (i.e. the median millionaire) is in their 60s.

If you get ahold of a copy of the book it’s definitely worthwhile to flip through all the tables and figures, but I won’t be adding to to my short list of the best personal finance books. The core metaphor of the ladder carriers the implicit assumption that everyone should be trying to get to the top of the ladder. But if someone is satisfied with less than $10 million, why should they take on lots of time and effort and risk to start a business for a small chance to go over $100 million?

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The US Homicide Rate in 2025 May Have Been the Lowest Ever

The following chart merges two data sources to create a long-run series on homicides in the US. Based on early estimates for 2025 from Jeff Asher, the homicide rate may be as low as 4.3 murders per 100,000 population. That would be the lowest since at least 1900, and possibly the lowest US homicide rate ever since the best evidence suggests it was even higher pre-1900. The current record low was 4.4 murders per 100,000, which the US saw in 1955, 1957, and 2014.

Economic Impacts of Weather Apps Exaggerating Storm Dangers

Snowmageddon!! Over 20 inches of snow!!! That is what we in the mid-Atlantic should expect on Sat-Sun Jan 24-25 according to most weather apps, as of 9-10 days ahead of time.  Of course, that kept us all busy checking those apps for the next week. As of Wednesday, I was still seeing numbers in the high teens in most cases, using Washington, D.C. as a representative location. But my Brave browser AI search proved its intelligence on Wednesday by telling me, with a big yellow triangle warning sign:

 Note: Apps and social media often display extreme snow totals (e.g., 23 inches) that are not yet supported by consensus models. Experts recommend preparing for 6–12 inches as a realistic baseline, with the potential for more.

“Huh,” thought I. Well, duh, the more scared they make us, the more eyeballs they get and the more ad revenue they generate. Follow the money…

Unfortunately, I did not log exactly who said what when last week. My recollection is that weather.com was still predicting high teens snowfall as of Thursday, and the Apple weather app was still saying that as of Friday. The final total for D.C. was about 7.5 inches for winter storm Fern. In fairness, some very nearby areas got 9-10 inches, and it ended up being dense sleet rather than light fluffy snow. But there was still a pretty big mismatch.

Among the best forecasters I found was AccuWeather. They showed a short table of probabilities that centered on (as I recall) 6-10”, with some chances for higher and for lower, that let you decide whether to prepare for a low probability/high impact scenario. It seems that the Apple weather app is notoriously bad: instead of integrating several different forecast models like some other apps (and like your local talking head meteorologist), it apparently just spits out the results of one model:

The core issue is that many weather apps, including Apple Weather, display raw data from individual forecast models without the context and analysis that professional meteorologists provide. While meteorologists at the National Weather Service balance multiple computer models, dozens of simulations and their own expertise to create forecasts, apps often pull from a single source and deliver it directly to users.

“Everything that catches attention is mostly nonsense,” said Eric Fisher, chief meteorologist for WBZ-TV in Boston. He points to the viral snowfall maps that spread on social media, noting that extreme forecasts generate the most attention even when they may not be the most accurate.

Anyway, I tried to poke around and find out in dollar terms how much it benefits the weather apps to exaggerate storm dangers. I was unsuccessful there, but by playing with query wording, I was able to coax out of ChatGPT some numbers on how much these exaggerations may cost the rest of us. (A more qualitative search noted, among other things, that the “crying wolf” cost of people becoming jaded to alarmist forecasts may lead them to discount genuine warnings; and I will add it is inconvenient to find the stores out of things because of panic buying).

Everything below the line of asterisks is just a straight dump from the AI, since I could not readily improve on its presentation:

****************************************************************

The economic impact of weather apps exaggerating storm dangers isn’t easy to quantify precisely because most formal studies focus on weather warnings overall (from official sources like the National Weather Service), not specifically on private weather apps exaggerating risk. However, economics research on false alarms, over-warning, and exaggerated alerts offers concrete dollar figures that we can use to approximate the kinds of costs involved. Below are the key economic impacts with as many dollar figures as available:


💸 1. Opportunity Costs of False or Overbroad Storm Warnings

Time cost of false warnings:

  • Traditional county-wide tornado warnings (over-broad alerts) have historically forced many people to shelter unnecessarily, resulting in ≈234 million person-hours per year spent under warnings (1996–2004) — valued at roughly $2.7 billion annually in lost time/productivity in the U.S. alone.
  • Improved storm-based warnings that reduce false warning area could save up to $750 million–$1.9 billion/year in avoided lost time.

This demonstrates that exaggerated alerts — such as those sometimes amplified or presented without clear context by weather apps — can force unnecessary economic shutdowns of work and business activity.


🏙️ 2. Evacuation and Preparedness Costs from False Alarms

Evacuation costs:

  • A NOAA analysis estimates that evacuation costs for hurricanes, when done broadly for storm-warnings, can reach about $1.4 billion annually in the U.S., with roughly $1 billion being unnecessary cost due to false alarms (people evacuating where no damaging winds ultimately occur).

Evacuations are one of the most expensive forms of response — from lost wages to lodging and fuel costs — and exaggerated risk messaging can trigger them prematurely or more frequently.


🏭 3. Business Productivity Losses from False Alerts

Example from private sector:

  • A building management firm reported that by reducing false storm alerts (better targeted data rather than broad app warnings), it saved ~$10 million in lost production time in one year alone.

This is a real dollar example showing how over-warning impacts businesses directly when they preemptively shut down operations.


💼 4. Broader Firm-Level Economic Avoidance

Cost avoidance from better warning info:

  • A study of nearly 500 firms found that switching from deterministic (binary “storm/no storm”) warnings to probabilistic information could produce $2.3 billion to $7.6 billion per year in avoided costs for businesses, thanks to better decision-making.

While this doesn’t measure exaggeration specifically, it underscores the economic penalty of imprecise or alarmist warnings, which many weather apps unintentionally echo.


📉 5. Insurance & Property Impacts

Although not directly about exaggerated warnings, inaccurate perceptions of storm danger influence behavior and pricing:

  • Insurance premiums rising: In storm-prone states (e.g., Florida), homeowners’ premiums have risen by ~57% or more because of risk perceptions and loss patterns tied to severe weather.
  • Losses from storms: Billion-dollar disasters are common; for example, Hurricane Milton in 2024 had estimated total costs of $21–$85 billion (depending on source).

While not directly caused by exaggeration, inflated perceptions of danger (from apps or media) can affect insurance markets and property values, contributing indirectly to economic impacts.


📈 6. Net Benefits vs. Exaggeration

It’s important to balance:

  • Early warnings overall clearly save money and lives. Improved forecasts and early alert systems have been estimated to avoid $300 million to $2 billion per year in asset losses and provide up to $32 billion/year in broader economic benefits (through optimized activities and prep).

This highlights that the problem isn’t warnings per se, but inaccurate or exaggerated warnings that cause over-response.

What is the price of obvious lying?

Pushing beyond the despair and doomerism of “Nothing matters”, the question has never been is there a price for lying in politics, but rather what is the price of lying in politics. Note that “in politics” is doing a lot of heavy lifting here. In day to day life, the price of lying is the threat to your reputation. A reputaton for being untrustworthy is always very costly in the long run. But politics, however, has different layers across which the price of lying is heterogeneous. And yes, there are contexts where that price can go negative.

Put simply, what is the cost here? Is Greg Bovino, head of US Border Patrol, worried about his reputation? Is he worried about future personal legal liability? Is he worried about maintaining cooperative alignment across the administration and within the ranks of the Border Patrol and ICE? There’s a saying in politics – the worst thing you can do is tell the truth at the wrong time. But that’s more relevant to “lying by omission”, about simply abstaining from speaking on a subject so that you are not forced to choose between lying and paying a high political cost. This is different. I’m picking on this one person in the administration because Alex Pretti was summarily executed in the street in cold blood by a thicket of federal agents for the apparent crime of being in attendance and trying to help a woman while she was being pepper sprayed, but it is the subsequent lying that I am concerned with here. It follows a pattern that continues to darkly fascinate me.

Q: "Was Alex Pretti armed when he was shot?"Bovino: "The investigation is going to uncover all those facts…I wasn't there wrestling that assaultive subject that was assaulting Border Patrol agents."

The Bulwark (@thebulwark.com) 2026-01-25T19:35:37.806Z

Bovino: "When you choose to use your five-year-old child as a shield to evade law enforcement, that is a choice that someone makes…"

The Bulwark (@thebulwark.com) 2026-01-25T19:21:48.924Z

Bovino shamelessly lies: "This looks like a situation where an individual wanted to do maximum damage and massacre law enforcement"

Aaron Rupar (@atrupar.com) 2026-01-24T19:14:18.742Z

Rather than simply “say nothing”, this administration has committed to the broad tactic of stating things that are factually, obviously untrue. That, more important, it is highly likely they know are untrue. That’s not something we’ve seen a lot of before. Politicians were known for being “slick” and “slippery”. For bending the truth, torturing the facts, or managing to fill entire press conferences without saying or committing to anything of substance. This administration, as I’ve said before, is different.

I see two likely explanations:

  1. The price of lying is zero because no one believes anything anymore. The truth is subjective and siloed.
  2. The price of lying is negative because constant and consistent commitment to the party can only be demonstrated by bearing the personal cost of telling obvious lies. In doing so you maintain the group, save yourself from being purged, and everyone in the group lives to fight another day. The net of which is a negative price for lying.

So what is it? Are we through the lol-nothing-matters looking glass, or are we witnessing an administration circle the wagons and solidify their committment to one another by blatantly lying on national television? I’m (perhaps obviously) of the belief that everything matters, that lying does have a cost, but the need for unity is so strong within this administration and it is, in fact, the lying that is holding it together. Until, of course, it doesn’t. Remember the most important lesson of The Folk Theorem – you can sustain cooperation in the Prisoner’s Dilemma, but only until you learn when the game is going to end. Then all bets are off.

Casual Sourdough Baking

I have sourdough starter in my fridge and have tried making two rounds of bread. I write this as a civilian, for others who will never elevate baking above a hobby.

I will begin with a picture of my first bread:

That’s not very fluffy but not terrible. It was real bread to go with butter or soup. My neighbor’s starter was in great condition when she gave it to me, and I followed the standard recipe. I use 80% bread flour and 20% whole wheat flour to make it healthier.

Below I will speculate on whether sourdough projects are a good use of time or not. Call it home economics.

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Which Economies Grow with Shrinking Populations?

If you didn’t know, China has had negative population growth for the past 4 years. Japan has had negative population growth for the past 15 years. The public and economists both have some decent intuition that a falling population makes falling total output more likely. Economists, however, maintain that income per capita is not so certain to fall. After all, both the numerator and denominator of GDP per capita can fall such that the net effect on the entire ratio is a wash or even increase. In fact, aggregate real output can still continue to grow *if* labor productivity rises faster than the rate of employment decline.

But this is a big if. After all, some of the thrust of endogenous growth theory emphasizes that population growth corresponds to more human brains, which results in more innovation when those brains engage with economic problems. Therefore, in the long run, smaller populations innovate more slowly than larger populations. Furthermore, given that information can cross borders relatively easily no one on the globe is insulated from the effects of lower global population. Because information crosses borders relatively well, the brains-to-riches model doesn’t tell us who will innovate more or experience greater productivity growth.

What follows is not the only answer. There are certainly multiple. For example, recent Nobel Prize winner Joel Mokyr says that both basic science *and* knowledge about applications must grow together. That’s not the route that I’ll elaborate.

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