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Which countries work the hardest?

Last week over dinner with friends, a debate arose as to whether Australians worked harder than Americans or not. The case for the affirmative argued that many Australians were very successful overseas and indeed Australians working abroad were highly sought after by employers. The case for the negative drew on experiences working with large US firms which exhibited far more aggressive, high-pressure work-practices than Australian firms.

Since we had more wine than data, the argument did not last very long and we instead moved on to the question of whether China now more closely resembles a fascist regime than a communist one (this debate was quickly mired in definitional issues and became rather animated). Reflecting later on the first discussion, I decided to dig up some data on hours worked and attempt to determine a winner for the debate. According to the OECD, Australia and the United States drew very close in 1979 when workers in both countries put in an average of 35 hours per week. But apart from that, over the last forty years US workers have fairly consistently worked an average of 1 to 1.5 hours more each week than Australian workers.

Australia/US Hours Worked

Total Hours Worked per head of Workforce (1950-2008)

And what of the rest of the world? Among the countries covered in the 2008 OECD data, Korea* was by far the most industrious country. Employed Koreans laboured an average of 44.5 hours each week. From there, hours worked fell quickly to Greece on 40.8 hours and then down to the Czech Republic on 38.3 hours. Australia and the United States are in a tightly packed group, ranging from Iceland in seventh place overall on 34.8 hours per week down to Australia in 16th place on 33.1 hours per week. The United States is towards the top of this group, working an average of 34.5 hours and sitting in ninth place overall. The Hanseatic League is not what it once was as Germany, Norway and the Netherlands are clustered at the bottom of the league table, all putting in around 27 hours of work each week.

Hours Worked 2008 National Ranking of Hours Worked in 2008*

One shortcoming of these figures is that they do not give an indication of the total effort contributed to each country. This is because the averages are calculated per head of the workforce and ignores children, the unemployed, the sick and the retired. It is conceivable that in countries with fewer workers, those workers may have to work harder to support everyone else. Indeed, recalibrating the numbers based on total hours worked per head of the total population does change the rankings somewhat. Korea still puts in a good showing, but surrenders first place to Luxembourg. Australia climbs a few places to 11th place and in the process pulls one place ahead of the United States, reflecting in part the higher unemployment rate in the United States. Coming in last place is France, which puts in an average of only 13.5 hours of labour per capita.

Hours by Workforce and PopulationTwo Measures of Hours Worked in 2008*

But is this data enough to resolve the debate? Unfortunately not. There are too many things that this kind of broad data does not capture. For instance, underemployment is a significant concern in many countries, including Australia and the United States. If there are many people not working as many hours as they would like to, actual hours worked may not be a good indication of the relative industriousness of different countries. Segmentation is another problem. Before our dinner-table debate moved on to China, speculation arose about possible differences in work patterns in US firms based in large cities on the East and West coasts compared to workplaces around the rest of the country. Again, aggregate statistics cannot capture any such differences.

So next time this particular group of friends meets, I will have some data to bring to the table, but not enough to carry the argument.

* Only 2007 data is available for Korea. All other data is for 2008.

The Kindle in Australia

Kindle-smallEarlier this week, Amazon began shipping the international version of the “Kindle” electronic book reader for US$279. The first generation of the Kindle was released almost two years ago in the US, so it has been a long time coming. But, with the announcement this week of the competing Barnes & Noble “Nook“, it looks as though the era of the e-book reader is well and truly upon us.

The Kindle has a monochrome “electronic paper” screen rather than the pervasive LCD screens found on laptops, iPhones and BlackBerries. Also known as e-paper or e-ink, the electronic paper screen comes a lot closer to replicating the appearance of traditional printed paper. There is no back-light and in fact displaying a page draws no power, it is only changing the display that will draw on the battery. As a result, the battery life of electronic paper devices is much longer than other devices. Amazon claims that, with the wireless connection turned off, you can read on the Kindle for up to two weeks before draining the battery. This also means that the Kindle can display an image on the screen when it is powered off, which is somewhat disconcerting at first. Although the contrast is not quite as high as print (the background is not quite white and the text is a little grey), reading on the Kindle is very comfortable. Better still, the quality does not degrade in strong sunlight as is often the case for LCD screens (although they are getting better all the time). So reading the Kindle outside is just as easy as it is in bed (although you will still need a bedside light).

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Petrol Price Update

Another five months on since my last petrol price update and oil prices have continued to rise, but so has the value of the Australian dollar. So while crude oil prices in US dollars are up around 75% since their lows in February, they are only up 29% in Australian dollar terms.

WTI Prices - USD and AUDWest Texas Intermediate Oil Prices

The Australian dollar has been rising steadily for the last six months, pushed along by the Reserve Bank of Australia which has started raising their target cash rate. Higher interest rates in Australia make it more attractive for offshore investors to buy Australian securities and they have to buy Australian dollars to do so. Australian investors holding foreign assets may do the same.

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Is Australia taking its fair share of asylum-seekers?

In Crikey this week, Bernard Keane made the point that Australia accepts a disproportionately small number of asylum-seekers given our population size. So, where exactly do we rank in the world in terms of generosity towards displaced persons? The United Nations Refugee Agency provides a wide range of statistics about refugees and asylum-seekers. The latest monthly data gives the number of asylum-seeker applications by country for 2009 up to and including August. The chart below shows a ranking of the 44 countries who reported accepting asylum-seekers over this period. Australia finds itself well down the list in 20th place. Mind you, the United States ranks a few spots behind us and, despite having a better reputation when it comes to taking refugees, New Zealand is even further behind. Malta is by far the most welcoming country for refugees.

Asylum-seekers per capita

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Does Switzerland have the world’s best universities?

Today @jgzebra drew my attention to the Times Higher Education league table of the top 200 univerities in the world. A quick glance at the list shows two US universities in the top three and six in the top 10. And indeed the United States dominates the results, claiming 54 spots out of the 200. The United Kingdom comes in next, taking 29 spots.

University Count (Mac)

Country Count in Top 200 Universities List

Of course, this tally does not take into account the differing sizes of each country: with a population of over 300 million people, you would expect a good showing from the United States. So the obvious question is, what would the national ranking look like if population were taken into account? Rather than doing this based on the number of appearances each country makes in the list, I aggregated the overall “score” awarded to each univerity (which combines scores based on surveys of peers, employers, staff and students, citations and international staff and students) and then ranked each country by aggregate score per million population*.

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Curb Bonuses: They Don’t Work Anyway

As the G20 starts to get serious about curbing executive bonuses, we can expect banking lobbyists to get more strident in their attempts to resist these incursions into their cosy remuneration practices. This has, in fact, already begun. In a recent example, Deutsche Bank Chief Executive Josef Ackermann was resorting to cliché, claiming that “the war for talent is in full swing” (we can blame McKinsey & Co for unleashing these weasel words on an unsuspecting world). Expect to hear more.

Whether it is bankers defending bonuses or politicians frowning that bonuses contributed to excess risk-taking, what rarely seems to be questioned is whether or not bonuses actually work. That is, used as an incentive for employees, do they actually result in better performance. In most discussions, it is taken for granted that they do work, but that unwelcome side-effects can also emerge, in the form of excessive risk-taking.

However, writer Dan Pink recently challenged this basic assumption in a TED talk in August this year. He pointed to years of experimental research which suggest that while financial incentives may be very good in maximising productivity for simple tasks, they can actually result in worse performance for more complex tasks that require problem-solving or creativity. Rather than “extrinsic” motivators like financial rewards, Pink and others argue that “intrinsic” motivators like autonomy (being in control of what you do in your work environment), mastery (being good at what you do and wanting to get better) and purpose (feeling that what you are doing is worthwhile) are far better motivators.

The talk itself is under 20 minutes long and is well worth a watch (as are so many of the TED talks).

Of course, some may argue that the simplified environment of the social science laboratory does not translate to the complexities of the real business world. However, this research shows that the implicit assumption that bonuses are required in banking and finance to deliver better outcomes should not be quietly accepted. And, if the G20 are successful in initiating a change to the practices in the financial sector, it may not actually hinder staff performance. In fact, it might even help.

Fertility Declines Don’t Reverse with Development

In this follow-up guest post on The Stubborn Mule, Mark Lauer takes a closer look at the relationship between national development and fertility rates.

STOP PRESS: Switzerland’s population would be decimated in just two generations if it weren’t for advances in their development.

At least, that’s what the modelling in a recent Nature paper projects.  The paper, widely reported in The New York Times, The Washington Post and The Economist, amongst others, was the subject of my recent Stubborn Mule guest post.  In that post, I shared an animated chart and some statistical arguments that cast doubt on the paper’s conclusion.  In this post, I’ll take a firmer stance: the conclusion is plain wrong.  But to understand why, we’ll have to delve a little deeper into their model.  Still, I’ll try to keep things as non-technical as possible.

First, let’s recap the evidence presented in the paper.  It comprised three parts: a snapshot chart (republished in most of the reportage), a trajectory chart, and the results of an econometric model.  As argued in my earlier post, the snapshot is misleading for several reasons, not least the distorted scales.  And the trajectory chart suffers from a serious statistical bias, also explained in my earlier post.  I’ll reproduce here my chart showing the same information without the bias.

FertilityNullTrajectories

That leaves the econometric model.  From reading the paper, where details of the model are sketchy, I had wrongly inferred that the model suffered the same statistical bias as the trajectory chart.  I have since looked at the supplementary information for the paper, and at the SAS code used to run the model.  From these, it is clear that a fixed HDI threshold of 0.86 is used to define when a country’s fertility should begin to increase.  So there’s no statistical bias.  However, I discovered far more serious problems.

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Reduce, Re-use, Recycle

This post represents something of a milestone for the Stubborn Mule. A few months ago I passed the one year anniversary of the Mule (the first post was published on 18 May 2008). Now I have reached the 100th post. To celebrate, and in recognition of the fact that older blog posts tend to disappear under the pile of newer ones, I will take this opportunity to revisit some of these older posts.

Drivers of Australian Inflation

Back when the global financial crisis was little more than a sparkle in a sub-prime lender’s eye, outside the bond markets anyway, we were still worried about inflation. In Australia, the rate of inflation for the 12 months to March 2008  hit 4.3%, which was outside the Reserve Bank’s target range of 2-3%. Setting a pattern that was to continue, I attempted to illustrate the drivers of inflation graphically. In this case, I produced a “heatmap” (a form of “treemap”) showing the sub-categories of the Australian Consumer Price Index.

Australia and the Global Financial Crisis

A lot of the posts on the Stubborn Mule have touched on aspects of the global financial crisis, including Moody’s Colossal Bug, How Big Are Australian Banks?, AIG and DZ Bank: Dumb and Dumber and Shoots Are Greener in Australia?. But the single most popular post on the blog is Australia and the Global Financial Crisis. Written back in October 2008, not long after the collapse of Lehman Brothers, this piece aimed to explain what caused the financial crisis and why, even then, Australia seemed to be faring better than much of the rest of the world. Over the coming years there will doubtless be many millions of words written about the causes of the crisis, but in the meantime, on most days, this post still gets more hits than any other on the blog.

Olympic Medals per Capita

Another popular post, this was actually a follow up to another post which looked at the Beijing 2008 medal tally on a per capita basis and by the size of each country’s economy. The Olympics were still underway and I decided to improve the first post by having the ranking charts update live as medals were awarded. I did this with the help of the data sharing site Swivel: I wrote a little script to regularly poll the official Olympics site for medal awards, post the results to Swivel and Swivel would then update the charts embedded in the blog. A little later, I did the same thing for the Paralympics.

Sydney Petrol Prices

Back in the middle of 2008, with petrol prices soaring, there were many complaints that petrol retailers were gouging motorists with their petrol pricing. In this environment, which led to the misguided and short-lived “FuelWatch” scheme, I decided to test the relationship between crude oil prices and prices at the petrol pump. Needless to say, there was a very close relationship between the two. As oil prices fell, the sting went out of this issue, but for old time’s sake, here is an updated version of chart showing the results of my simple regression model.

Petrol Model (Sep 2009)

Regression Model of Sydney Petrol Prices (unleaded)*

I Hate Personality Tests

Written after attending a training course at work, this post was a bit of a rant about HBDI and other similar personality tests such as Myers-Briggs, which I consider to be simplistic tools designed primarily to generate revenue for the companies that produce the tests and are closer to astrology than science. I can feel my blood pressure rising again now…

The Future of Microblogging

I was something of an early adopter of the internet phenomenon that is Twitter. When I wrote this post, I had been using Twitter for a little over a year and the total number of twitter users had just passed 2 million and looked like it might be levelling out. Now Ashton Kutcher alone has more than 3.6 million followers and overall Twitter has more than 5 million users. Although many people have become more familiar with Twitter, this post still draws in readers looking to find out more about microblogging. In the post I also look at the open microblogging platform Laconica and at identi.ca, the original example of a microblog built on Laconica. While I do still use my identi.ca account, it’s hard to escape the lure of Twitter.

Why I Always Buy the Same Sandwich

Another early post, this was inspired by my reading of Dan Ariely’s excellent book “Predictably Irrational”, which is all about the fascinating field of behavioural economics. One of the subjects Ariely discusses is the phenomenon of  “self-herding”, which basically means people tend to get stuck in a rut doing the same things over and over again. In my case, I used this concept to explain why I kept buying the same sandwich. More than a year later, I still buy the same sandwich. I still plan to revisit the subject of behavioural economics at some point in the future.

So, having recycled all those electrons, I am off to start planning the next 100 posts.

* Data Sources: Sydney Petrol Prices from the Australian Automobile Association, Brent crude oil prices and A$/US$ exchange rates from Bloomberg.


Posterous: the next big thing?

A few months ago, a new site arrived on the increasingly crowded web 2.0 scene. Posterous offers a medium that fits somewhere between a blog and a microblog (the canonical example of the microblog being, of course, the juggernaut that is Twitter). Maybe it should be called a “miniblog”.

Posterous is not the only site to target the miniblog niche. Tumblr has been been around for a few years and has been reasonably successful in building a base of users who like the ability it provides to easily share photos, links and assorted random scribblings. As an obsessive early-adopter of most things web 2.0, I have a tumblr account (the “Raw Prawn” identity pre-dates the “Stubborn Mule”), but  I have not been very active there of late.

Although Posterous launched only about six months ago, it has already seen healthy growth in traffic since then and has already reached the traffic rank that tumblr had six months ago.

Posterous

Posterous.com Traffic Rank (September 2009)

Part of the reason for its success is that it is extraordinarily easy to use. There is no need to sign up or create an account, as you would on twitter, tumblr or any other web 2.0 site. Instead, simply send an email to post@posterous.com. Give it a try! Send a snippet of text or, better still, a photo, music file or a link to a youtube video and Posterous will work its magic to send back to you a link to a web page with your content that you can easily share with anyone and everyone. Here is one I prepared earlier. If you live in the US, you can also send posts via SMS from your phone.

Posterous has a raft of other features that put it on a level above tumblr. For a start, it tracks the number of times that a post has been viewed (the power user can even track traffic using Google Analytics). Also, like any good web 2.0 application, it supports tags which can easily be added, edited or deleted after creating your post. There is also an iPhone application that allows you to take a photo and immediately send it to Posterous (to be fair, tumblr has an iPhone application too).

To take full advantage of Posterous, you should “claim” your email address (ok, so at this point you are effectively signing up for the service, but you don’t have to take this step). One of the features this will allow you to access is the ability to “auto-post” to an increasing range of other sites, including Twitter, Identica, Facebook, Flickr and Delicious. Turning on these services is straightforward once you have claimed your address signed up.

What exactly auto-posting does varies with each service. In the case of Twitter, Posterous will send the title of each post with a shortened link to the post. If you auto-post to Flickr, any photos you sent to Posterous will be added to your Flickr account. If you have a blog, the chances are you can repost the entire content of your Posterous post.

Posterous also shares with tumblr and any good web 2.0 a social networking feature that allows you to subscribe to other people’s Posterous accounts. You can see posts you have subscribed to through the “My Subscriptions” link on Posterous as well as receiving regular email updates. Posterous also allows the creation of multiple miniblogs (up to three) within the one account.

Unlike Twitter, Posterous even has a business model in mind, with plans to offer premium services for a fee at some point in the future. This “freemium” service approach has already been adopted by the likes of Flickr, Dropbox and a number of other web 2.0 services. Even for users who never take up these premium services, any means of revenue generation should help the site to stick around for longer than some of the more fleeting web 2.0 sites.

I have only been experimenting with Posterous for the last couple of weeks, but with the combination of extreme ease of use, smooth handling of multiple media types and the auto-posting feature I expect that it has a bright future ahead. In the meantime, keep an eye on the Mule’s Posterous account for posts that do not quite warrant appearing here on the blog.

Posterous Tips

  • Add tags to your posts using this short-hand in your email  subject line: ((tag: food, photos)) – of course, you don’t have to use “food” or “photos”.
  • Email to twitter@posterous.com if you only want to auto-post to Twitter. Similar email addresses work for other services.
  • Email to posterous@posterous.com if you do not want to auto-post anywhere.
  • Email to private@posterous.com if you want to create a private post.
  • Type #end in the email and no subsequent text (signatures, etc) will be included in the post.
  • If you use gmail, you can use gmail’s hyperlink creator to create links in your post (you will need to be using “Rich Formatting”).

Is There a Baby Bounce?

In this first ever guest post on The Stubborn Mule, Mark Lauer takes a careful look at the relationship between national development and fertility rates.

Recently The Economist and the Washington Post reported a research paper in Nature on the relationship between development and fertility across a large number of countries.  The main conclusion of the paper is that, once countries get beyond a certain level of development, their fertility rates cease to fall and begin to rise again dramatically.  In this post I’ll show an animated view of the data that casts serious doubt on this conclusion, and explain where I believe the researchers went wrong.

But first, let’s review the data.  The World Bank publishes the World Development Indicators Online, which includes time series by country of the Total Fertility Rate (TFR).  This statistic is an estimate of the number of children each woman would be expected to have if she bore them according to current national age-specific fertility rates throughout her lifetime.  In 2005, Australia’s TFR was 1.77, while Niger’s was 7.67 and the Ukraine’s only 1.2.

The Human Development Index (HDI) is defined by the UN as a measure of development, and combines life expectancy, literacy, school enrolments and GDP.  Using these statistics, again from the World Bank database, the paper’s authors construct annual time series of HDI by country from 1975 until 2005.  For example, in 2005, Australia’s HDI was 0.966, the highest amongst all 143 countries in the data set.  Ukraine’s HDI was 0.786, while poor old Niger’s was just 0.3.

A figure from the paper was reproduced by The Economist; it shows two snapshots of the relationship between HDI and TFR, one from 1975 and one from 2005.  Both show the well-known fact that as development increases, fertility generally falls.  However, the 2005 picture appears to show that countries with an HDI above a certain threshold become more fertile again as they develop further.  A fitted curve on the chart suggests that TFR rises from 1.5 to 2.0 as HDI goes from 0.92 to 0.98.

Of course, this is only a snapshot.  If there really is a consistent positive influence of advanced development on fertility, then we ought to see it in the trajectories through time for individual countries. So to explore this, I’ve used a Mathematica notebook to generate an animated bubble chart.  The full source code is on GitHub, including a PDF version for anyone without Mathematica but still curious.  After downloading the data directly from Nature’s website, the program plots one bubble per country, with area proportional to the country’s current population.

Unlike with the figure in The Economist, here it is difficult to see any turn upwards in fertility rates at high development levels.  In fact, the entire shape of the figure looks different.  This is because the figure in The Economist uses axes that over-emphasise changes in the lower right corner.  It uses a logarithmic scale for TFR and a reflected logarithmic scale for HDI (actually the negative of the logarithm of 1.0 minus the HDI).  These rather strange choices aren’t mentioned in the paper, so you’ll have to look closely at their tick labels to notice this.

To help focus on the critical region, I’ve also zoomed in on the bottom right hand corner in the following version of the bubble chart.

One interesting feature of these charts is that one large Asian country, namely Russia, and a collection of smaller European countries, dart leftwards during the period 1989 to 1997.  The smaller countries are all eastern European ones, like Romania, Bulgaria and the Ukraine (within Mathematica you can hover over the bubbles to find this out, and even pause, forward or rewind the animation).  In the former Soviet Union and its satellites, the transition from communism to capitalism brought a crushing combination of higher mortality and lower fertility.  In Russia, this continues today.  One side effect of this is to create a cluster of low fertility countries near the threshold HDI of 0.86 in the 2005 snapshot.  This enhances the impression in the snapshot that fertility switches direction beyond this development level.

But the paper’s conclusion isn’t just based on these snapshots.  The authors fit a sophisticated econometric model to the time series of all 37 countries that reached an HDI of 0.85, a model that is even supposed to account for time fixed-effects (changes in TFR due only to the passage of time).  They find that the threshold at which fertility reverses is 0.86, and that beyond this

an HDI increase of 0.05 results in an increase of the TFR by 0.204.

This means that countries which develop from an HDI of 0.92 to 0.98 should see an increase in TFR of about 0.25.  This is only about half as steep as the curve in their snapshot figure, but is still a significant rate of increase.

However, even this rate is rather surprising.  Amongst all 37 countries, only two exhibit such a steep rise in fertility relative to development between the year they first reach an HDI of 0.86 and 2005, and one of these only barely.  The latter country is the United States, which manages to raise TFR by 0.211 per 0.05 increase in HDI.  The other is the Czech Republic, which only reaches an HDI of 0.86 in 2001, and so only covers four years.  Here is a plot of the trajectories of all countries that reached an HDI of 0.86, beginning in the first year they did this.  Most of them actually show decreases in TFR.

FertilityTrajectories

So how do the authors of the paper manage a statistically significant result (at the 0.1% level) that is so widely different from the data?  The answer could well lie in their choice of the reference year, the year in which they consider each country to have passed the threshold.  Rather than using a fixed threshold as I’ve done above, they express TFR

relative to the lowest TFR that was observed while a country’s HDI was within the window of 0.85–0.9.  The reference year is the first year in which this lowest TFR is observed.

In other words, their definition of when a country reaches the threshold depends on its path of TFR values.  In particular, they choose the year when TFR is at its lowest.

Does this choice statistically bias the subsequent trajectories of TFR upwards?  I leave this question as a simple statistical exercise for the reader, but I will mention that the window of 0.85–0.9 is wider than it looks.  Amongst countries that reached an HDI of 0.9, the average time taken to pass through that window is almost 15 years, while the entire data set only covers 30 years.

Finally I’d like to thank Sean for offering this space for my meandering thoughts.  I hope you enjoy the charts.  And remember, don’t believe everything you see in The Economist.

UPDATE:

To show that the statistical bias identified above is substantial, I’ve programmed a quick simulation to measure it.  The simulation makes some assumptions about distributions, and estimates parameters from the original data.  As such it gives only a rough indication of the size of the bias – there are many alternative possibilities, which would lead to larger or smaller biases, especially within a more complex econometric estimation.

In the simulation, each of the advanced countries begins exactly where it was in the year that it first reached an HDI of 0.85.  Thereafter, a trajectory is randomly generated for each country, with zero mean for changes in fertility.  That is, in the simulation, fertility does not increase on average at all¹.  As in the paper, a threshold is found for each country based on the year with lowest TFR within the HDI window.  All shifts in TFR thereafter are used to measure the impact of HDI on TFR (which is actually non-existent).

Here is a sample of the trajectories so generated, along with the fitted response from the paper.

FertilitySimulationExample

The resulting simulations find, on average, that a 0.06 increase in HDI leads to an increase of about 0.075 in TFR, despite that fact that there is no connection whatsoever.  The range of results is quite broad, with an increase of 0.12 in TFR also being a likely outcome.  This is half of the value found in the paper; in other words, simulations of a simplified case where HDI does not influence TFR at all, can easily generate half of the paper’s result.

Of course, if the result is not due to statistical bias, then the authors can easily prove this.  They need only rerun their analysis using a fixed HDI threshold, rather than one that depends on the path of TFR.  Until they do, their conclusion will remain dubious.

¹ For the technically minded, the HDI follows a random walk with drift and volatility matching those of advanced countries, and the TFR follows an uncorrelated random walk with volatility matching the advanced countries, but with zero drift.  The full source code and results have been uploaded to the Github repository.

FURTHER UPDATE:

More details can be found in the follow-up post to this one, Fertility Declines Don’t Reverse with Development.