Wednesday, February 3, 2021

2/2/21: Daylight Saving Time and Carbon Emissions


We usually associate reduction of carbon emissions with reduced consumption, as opposed to variation in timing of consumption, but this association is both too simplistic and also erroneous. Here is why: shifting more consumption activities toward periods of the day when energy generation mix is cleaner (e.g. daylight, when solar can be contributing more to the energy mix) can, quite literally, reduce overall emissions.

Right? Yep. Here is a nice piece of evidence from a natural experiment in Turkey. "In October 2016, Turkey chose to stay on DST all year round." This shifted a lot more consumption by the public from late afternoons to early mornings. As reported in Bircan, Cagatay and Wirsching, Elisa study "Daylight Saving All Year Round? Evidence from a National Experiment" (December, 2020, EBRD Working Paper No. 251, https://ssrn.com/abstract=3751336), overall levels of consumption did not change much, but "the policy has a strong intra-day distributional effect, increasing consumption in the early morning and reducing it in the late afternoon. This change in the load shape reduced generation by dirtier fossil fuel plants and increased it by cleaner renewable sources that can more easily satisfy peak load generation. Emissions from generation decreased as a result." 

Overall, the authors "find that staying on DST during winter months may have led to a reduction in CO2 emissions of between 1,500 and 8,200 tons per day. Hence, the policy change has an unforeseen but beneficial effect of reducing greenhouse gas (GHG) emissions, as generation by “cleaner” power plants substitutes generation from “dirtier” ones to satisfy changes in intra-day demand."

Incidentally, the study does not appear to have considered the effects of solar in their study that should have increased the CO2 abatement effects. It is unclear to me as to why...

2/2/21: The Disaster of Investing via Smartphones?

Some stuff I've been reading that (sometimes) falls into current newsflow: 

Kalda, Ankit and Loos, Benjamin and Previtero, Alessandro and Hackethal, Andreas paper, titled "Smart(Phone) Investing? A within Investor-Time Analysis of New Technologies and Trading Behavior"from January 2021 (NBER Working Paper No. w28363, https://ssrn.com/abstract=3772602) :

The authors tackle an interesting issue relating to the automated and low cost investing platforms (proliferating in this age of fintech). Per authors (emphasis is mine, throughout): "Technology has dramatically changed how retail investors trade, from placing orders using direct dial-up connections in the 1980s or Internet-based trading in the 1990s to the more recent rise of robo-advisers. With few exceptions, the introduction of these new technologies is generally associated with a decline in investor portfolio efficiency." In addition, "whether good or bad for investors, it is accepted that new technologies influence investor behavior". 

In this unique study, the authors used data that comes "from two large German retail banks that have introduced trading applications for mobile devices. For over 15,000 bank clients that have used these mobile apps in the years 2010-2017, we can observe all holdings and transactions, and, more important, the specific platform used for each trade (e.g., personal computer vs. smartphone). [As the result of having such a granular data over time] we can conduct all our main tests comparing trades done by the same investor in the same month across different platforms."

The authors present four sets of results:

  1. "First, we study if the use of smartphones induces differences in the riskiness of trades. Comparing trades by the same investor in the same year-month, we find that the probability of purchasing risky assets increases in smartphone trades compared to non-smartphone ones
    • "smartphone trades involve assets with higher volatility and more positive skewness. [Thus], smartphones increase the probability of buying lottery-type stocks by 67% of the unconditional mean for smartphone users."
  2. "Second, we examine the effects of smartphones on the tendency to chase past returns. We find that smartphones increase the probability of buying assets in the top decile of the past performance distribution. Smartphones increase the probability of buying assets in the top 10 percent of past performance by 12.0 percentage points (or 70.6% of the unconditional mean)." In other words, smartphones trades involve severe and pervasive biases in investor decision making.
  3. "Third, we investigate if investors selectively use smartphone to execute their risky, lottery-type, and trend-chasing trades. In this scenario, investors could simply substitute their trades from one device to another, without any real consequences for their overall portfolio efficiency. ....We find that, following the launch of smartphone apps, investors are—if anything—more likely to purchase risky and lottery-type assets and to chase hot investments also on non-smartphone platforms. ...this evidence potentially suggests that investors are learning to become overall more biased after their initial use of smartphones to trade."
  4. "...smartphone effects are stronger during after-hours (i.e. following exchange closure). Institutional differences between trading on official exchanges and in after-hours markets do not drive this heterogeneity. Given that individuals are more likely to rely on the more intuitive system [System 1-type] later in the day (Kahneman,2011), stronger effects during after-hours are consistent with smartphones facilitating trades based more on [intuitive] system thinking."

As an interesting aside, it is worth noting that the above results have nothing to do with the demographic biases or the potential lack of trading experience by smartphone-using investors. As noted by the authors: "German investors that adopt smartphone trading are, on average, 45 years old with nine years of experience investing with the banks."

Another aside is that authors also tested if the adverse effects of smartphones-based trading can be attributed to the first / early usage of these devices. It turns out not: "The effects of smartphones are stable from the first quarter of usage up to quarter nine or afterwards. The effects on volatility and skewness of trades, and probability of purchasing past winners are also stable over time."

To conclude: "Collectively, our evidence suggests that investors make more intuitive (system 1-type) decisions while using smartphones. This tendency leads to increased risk-taking, gambling-like activity, and more trend chasing. Previous studies have linked these trading behaviors to lower portfolio efficiency and performance. Therefore, the convenience of smartphone trading might come at a cost for many retail investors."

Ouch! Then again, this is fitting well with what we are observing happening in the markets these days: amplified herding, trend chasing, lottery-like speculative swings in investment capital flows, recency effects of overbidding for previously outperforming stocks and so on. 


Monday, February 1, 2021

1/2/21: The Unbearable Lightness of Winning?

My recent article for The Currency on some tight corners to be navigated by the Biden-Harris Administration as the Democrats grapple with controlling the two branches of the State: https://thecurrency.news/articles/33887/biden-harris-and-the-unbearable-lightness-of-winning/ 



Wednesday, January 6, 2021

6/1/21: BRIC: Composite Economic Indicators: 4Q 2020

Now, Composite PMIs:
  • Brazil Composite PMI rose from 51.6 in 3Q 2020 to 54.4 in 4Q 2020, marking second consecutive quarter of > 50.0 readings. Average 4 quarters PMI stands at 46.2, suggesting that Brazil's economy has not, yet, recovered fully from the Covid19 pandemic impact. Nonetheless, statistically, both 3Q and 4Q readings are signaling economic expansion and 4Q growth in Brazil's economy appears to be faster-paced than global (global composite PMI was at 53.3 in 4Q 2020).
  • Russia Composite PMI is in a contraction territory, with 4Q 2020 reading of 47.7, down from 55.9 in 3Q 2020. Over the course of 2020, Russia Composite PMI averaged 46.0, the second weakest in the BRICs group. At 47.7, 4Q 2020 PMI is exactly in line with 1Q 2020 PMI.
  • India Composite PMI rose from 45.9 in 3Q 2020 to 56.4 in 4Q 2020, signaling rapid bounce back in the economy, that, nonetheless continues to suffer from the pandemic-induced economic crisis. Full year 2020, Composite PMI average is at 44.3, by a distance, the lowest in the BRICs group. 
  • China Composite PMI rose from 54.7 in 3Q 2020 to 56.3 in 4Q 2020, marking third consecutive quarter of economic growth, with full year PMI averaging 51.4, suggesting that the Chinese economy has now recovered fully from the Covid19 pandemic impact. 

Overall, three out of four BRIC economies posted 4Q 2020 Composite PMI above Global Composite PMI: Brazil, India and China, with Russia being the only BRIC economy posting both sub-Global and sub-50 Composite PMI reading at the end of 2020. Only one BRIC economy has, so far, signaled full recovery from the Covid19 crisis shock: China, with all other BRICs still recovering from the pandemic.

Given that both BRIC Manufacturing Sector Activity Index (54.9 in 4Q 2020) and BRIC Services Sector Activity Index (54.8 in 4Q 2020) are above Global Manufacturing (53.5) and Services (52.3) PMIs, BRIC economies as a group have supported global economic growth to the upside in 4Q 2020. In contrast, BRIC Manufacturing Activity Index outperformed Global Manufacturing PMI in 3Q 2020 (53.0 to 51.6), while BRIC Services Activity Index (51.0) underperformed Global Services PMI (51.4). 

6/1/21: BRIC: Services PMIs: 4Q 2020

 

BRIC's manufacturing PMIs for 4Q 2020 were covered here: https://trueeconomics.blogspot.com/2021/01/4121-bric-manufacturing-pmis-4q-2020.html. Now, to Services PMIs:

  • Brazil Services PMI rose from 47.5 in 3Q 2020 to 51.4 in 4Q 2020, with aggregate 2020 levels of activity still significantly below 2019 levels. At 51.4, the index is barely statistically above 50.0 (95% confidence bound is 51.3). However, the latest quarterly reading is the first nominally above 50.0 after three consecutive quarters of sub-50 readings. 
  • Russia Services PMI crashed in 4Q 2020 from 56.8 in 3Q to 47.7. Statistically, Russian services sector is contracting and it is contracting rapidly. In the entire 2020, there were three quarters of deeply sub-50 readings against one quarter of above 50.0 expansion. Services sector reading is basically identical to 47.6 recorded in Manufacturing sector, which means that in 4Q 2020 there was no 'comfort zone' in the Russian economy in terms of growth.
  • India Services PMI rose significantly in 4Q 2020 compared to 3Q 2020, from 41.9 to 53.4.  However, this growth is unlikely to bring India's services activity anywhere near pre-Covid19 levels. 
  • China Services PMI rose for the third consecutive quarter in 4Q 2020. In 2Q 2020, China's Services PMI was at 52.6, which increased to 54.3 in 3Q 2020 and to 57.0 in 4Q 2020. Nonetheless, it is still doubtful that Chinese services activities have fully recovered from the pandemic as of the end of 2020.
  • Overall, BRIC Services Activity Index based on PMIs and respective GDP shares in the global economy rose for the second quarter in a row from 51.0 in 3Q 2020 to 54.8 in 4Q 2020. This marks some recovery from the Covid19 pandemic impact, although this recovery remains incomplete. BRICs have - as a group - outperformed Global Services PMI which rose from 51.4 in 3Q 2020 to 52.3 in 4Q 2020.

5/1/21: Ireland PMIs: 4Q 2020

Ireland's economic activity improved significantly in December, and the improvements were marked across all three sectors:

  • Ireland's Manufacturing PMI rose 52.2 in November to 57.2 in December, marking the third consecutive month of > 50 readings, the second consecutive month of indicator being statistically above 50.0 line. The last three months average (53.23) is on 2Q 2020 average (53.30) and this is pretty encouraging, given the weakness in the indicator over 1H 2020. 
  • Ireland's Services PMI also rose in December, reaching 50.1 from recessionary 45.4 in November. 4Q average is still weak at 47.9 (contractionary) after being effectively stagnant at 50.03 over 3Q 2020. Monthly increase in December, however, is a brighter spot.
  • Ireland's Construction sector PMI (data through mid-December) is at 53.5, which is strong compared to month prior (48.6) and the first time the index is above 50 line since July 2020. 
  • Official Composite PMI that accounts only for two sectors of activity (Manufacturing and Services) is now at 53.4, having broken above the 50.0 line for the first time since August 2020.

As you know,  I calculate my own index of economic activity based on all three sectors PMIs and using relative weights of each sector in Irish Gross Value Added, based on the latest National Accounts data. This is plotted against Markit's Composite PMI in the following chart:

Just as Composite PMI, my index of economic activity also rose in December (to 52.9) from 48.2 in November. This marks the first month of above-50 readings after 3 consecutive months of contraction. Nonetheless, 4Q 2020 index is at 50.03 - signaling zero growth q/q and this stands contrasted to 3Q 2020 reading of 51.2 (statistically zero growth, nominally, weak positive growth).

5/1/21: U.S. Labor Markets Update: America's Scariest Charts

Continued unemployment claims (based on seasonally-adjusted data) are continuing to decline, as the latest data through mid-December 2020 shows, yet, even with these news, the latest data print puts continued claims for unemployment at the levels comparable with late 2009. 

So here is the chart showing overall levels of continued unemployment claims in the U.S.:


And here is one of my "Scariest Charts", showing index of continued unemployment claims across all modern recessions:


Given current rates of continued unemployment claims declines, 
  • Over the last 4 weeks, average weekly decrease in continued unemployment claims stood at 77,000
  • Current levels are 3,570,000 higher than pre-Covid low.
  • Which means that it would take roughly 46 weeks at the current 4-weeks average rate of decrease to eliminate surplus unemployment generated by the Covid19 pandemic. Which is pretty much the same distance to point of regaining pre-Covid19 levels of unemployment claims as well.
Meanwhile, some bad news from the most recent data on new unemployment claims:


In December 2020, new unemployment claims rose, not fallen, on 4 months cumulative basis due to a large increase in non-seasonally adjusted new claims in the first week of the month. How bad are things? Most recent data point ranks 33rd highest new unemployment claims weekly count in the entire history of the series (since July 1967). However, excluding other weeks of Covid19 pandemic, or, put differently, contextualizing current levels to pre-Covid19 history, the latest levels of new unemployment claims would have ranked as 5th highest in history.

Monday, January 4, 2021

4/1/21: BRIC: Manufacturing PMIs 4Q 2020

Latest data for BRIC Manufacturing PMIs indicates three countries outperforming global rate of recovery in manufacturing sector, against one country (Russia) remaining in contraction territory and well below global growth mark.


On a quarterly basis,

  • Brazil's Manufacturing PMI stood at 64.1 in 4Q 2020, up on 62.6 in 3Q 2020, marking the second highest and the highest reading on record. The contraction in 2Q 2020 (with PMI at 42.0) was sharp, but not as sharp as in 1Q 2009. By these comparatives, GFC-related contraction of 2008-2009 resulted in 4 quarters average reading of 45.1 and saw three consecutive sub-50 readings. The Covid-19 related contraction was stretched only across one quarter, with 4 quarters average of 54.8 in 2020. It is, genuinely, hard to reconcile these numbers with reality of the Covid-19 crisis.
  • Russia Manufacturing PMI slipped to 47.6 in 4Q 2020 from 49.5 in 3Q 2020, marking sixth consecutive quarter of sub-50 readings. Statistically, Russian Manufacturing posted no growth (> 50 readings) in seven consecutive quarters. Over 2020 as a whole, Russian PMIs averaged abysmal 46.0, compared to the GFC and the Great Recession average of 2008-2009 of 44.7.
  • India Manufacturing PMI was at 57.2 in 4Q 2020, up on 51.6 in 3Q 2020, and averaging 49.5 for the year as a whole. During the GFC and the Great Recession period, India's PMI averaged at 51.1. Unlike Brazil, India is yet to recover to pre-Covid-19 levels of activity.
  • China Manufacturing PMI finished 2020 with a reading of 53.9, averaging 51.1 over 2020 as a whole, with overall PMIs performance suggesting that Chinese industrial producers have recovered from the Covid-19 pandemic by the end of 2020. China's Covid-19 experience has been more benign than the country contraction during the GFC and the Great Recession (46.9 average).
Global Manufacturing PMI stood at 53.5 in 4Q 2020 and an average of 49.3 over 2020 as a whole, against BRIC's Manufacturing Index (weighted by relative global GDP shares of the four economies) at 54.9 in 4Q 2020 and 50.5 for 2020 as a whole. In other words, BRICs have supported global growth to the upside during the Covid-19 pandemic. 

Sunday, January 3, 2021

3/1/21: Covid19 update: Sweden vs Nordics

 

As before, let's conclude the latest update of the Covid19 trends data with analysis covering comparatives between Sweden and other Nordics. 

Sweden is commonly used as a shining example of 'saving the economy' by not 'panicking' into severe mobility restrictions. This argument is commonly used by the folks who tend to believe in sinister Big State conspiracies around other countries' responses to the pandemic.

Sweden started the pandemic by openly pursuing the strategy targeting 'herd immunity'. In this, the country approach to the pandemic containment was similar to that of the Netherlands. However, unlike Sweden, the Netherlands quickly reversed this approach and switched to the more common policy response of imposing severe mobility restrictions.

When it comes to the Nordic countries, there has been both some significant heterogeneity in Covid19 policies responses and some shared experiences. To reflect some of these, I look at three Nordics groupings to compare these with Sweden:

  • Nordic 1 group comprising Sweden's immediate neighbors of Norway and Finland. This is the 'closest' group to Sweden as the three countries share relatively open borders and, in normal times, have no mobility restrictions between them. All three countries are physically remote from the rest of Europe, with far less mobility across borders to third countries than, say, Belgium or the Netherlands.
  • Nordic 2 group adds Iceland and Estonia to the first group. Iceland is, obviously, an island nation that is also relatively well isolated in physical terms, making its border controls more effective. Estonia is a country that is not physically isolated, but shares less physical land-based borders with the rest of the EU (ex-Finland). Both, N1 and N2 groups are, therefore, characterized as those countries which can impose more effective control of their borders for the purpose of isolating during the pandemic.
  • Nordic 3 group adds two key countries that have much less capacity to isolate from the Continental EU states: Denmark and the Netherlands. 
So, here are the updated charts, in which I adjust all three groups to normalize cases and deaths numbers to Sweden's population scale:


As of the end of 2020, cumulative excess deaths in Sweden compared to other Nordics, adjusting for differences in population sizes are:

  • 7,545 more deaths in Sweden than in Nordics 1 group of Finland and Norway;
  • 7,359 more deaths in Sweden than in Nordics 2 group of Finland, Norway, Estonia and Iceland; and
  • 3,808 more deaths in Sweden than in Nordics 3 group of Finland, Norway, Estonia, Iceland, Denmark and the Netherlands.
Put differently, between 3,800 and 7,545 more deaths took place in Sweden than in its relatively comparable European neighbors, primarily because Swedish Government prioritized economic well-being over public health.

Saturday, January 2, 2021

2/1/21: Covid19 update: U.S. vs EU27

In previous posts, I covered Covid-19 updates for the last week of 2020 for:
In this post, let's take a look at the latest data for the U.S. compared to the EU27.



Weekly counts of new cases and deaths, illustrated above, suggest that:
  • Since the start of the pandemic, the U.S. has experienced three waves, against the EU27's two of the pandemic. The EU27's 2nd wave appears to have crested in week 45, while the U.S.' current wave continued to rise through week 51 of 2020. Week 52 data is hard to interpret, as it represents poorer quality of data due to the holidays season.
  • Over the last 8 weeks, US new cases exceeded those in the EU27 by 337,233.
  • The EU27's 2nd wave appears to have crested in week 48 in terms of deaths, while the U.S.' current wave continued to rise through week 51. Once again, we should ignore, for now, week 52 data.
  • Over the last 8 weeks, US new deaths continued to run below those in the EU27. On population-adjusted basis, US deaths cumulated over the last 8 weeks are 33,622 lower than those in the EU27. Over the entire pandemic period, US deaths currently exceed those in the EU27 by 69,416 on population-adjusted basis.
The last point is worth considering more closely:




  • Since the start of Wave 2 in the EU27 (Wave 3 in the U.S.), EU27 deaths per capita have been converging with those in the U.S.
  • At the start of the EU27 Wave 2, U.S. excess total deaths per capita exceeded those in the EU27 by 87%. Latest excess is 26% and it was 28% in week 51.
  • Adjusting for differences in population, U.S. excess deaths relative to the EU27 fell from the Wave 1 maximum of 103,038 to 69,389 today. 
  • Adjusting for differences in population, U.S. excess deaths relative to Europe fell from the Wave 1 maximum of 122,441 to 117,690 today. 
  • Adjusting for age differences and population size differences, the U.S. pandemic is associated with 135,343 excess deaths compared to the EU27.

Despite the big negatives, mortality rates have declined for the later waves of the pandemic in both the EU27 and the U.S.:


Note: the above chart is not adjusted for demographics differences between the U.S. and the EU27, which means that part of the amelioration in mortality rates in the U.S. relative to the EU27 is down to these differences.

Lastly, rates of change in cases and deaths, both, suggest that the pandemic Wave 2 (in the EU27) and wave 3 (in the U.S.) are still at risk of re-accelerating as new data arrives and as we intergate more accurate figures for Week 52 of 2020:



Finally, a summary table for comparatives:


The table above clearly shows the reality of the pandemic impact differences between the EU27 and the U.S. to-date. Through week 52 of 2020, the U.S. performance is consistently worse than that of the EU27 in all metrics, but one: mortality rate per 1,000 positive cases. This only difference is most likely accounted for by the factor exogenous to the pandemic policy responses in the two countries, being down primarily to younger demographics of the U.S. population.

2/1/21: Covid19 update: BRIICS

 In previous posts, I covered Covid-19 updates for the last week of 2020 for:

Cumulative data for BRIICS (Brazil, Russia, India, Indonesia, China and South Africa) shows continued steady expansion of the pandemic in total cases and deaths:


  • Currently, BRIICS account for 28.2% of all cases of Covid-19 in the world, and 25.3% of all deaths. This compares to these countries accounting for 45.3% of the world population.
  • The pandemic has been relatively benign for this group of countries. If BRIICS were ranked as a stand-alone country within the group of 40 countries with more than 250,000 cases, BRIICS would have ranked 38th worst in terms of cases per 1 million of population, 37th worst in terms of deaths per capita, and 28th in terms of deaths per case. 
  • BRIICS data, however is highly heterogeneous by country: 
    • Brazil ranks 11th worst-hit country in the world in terms of infections rate, death rate per capita and mortality rate; 
    • Russia ranks 28th;
    • India ranks 38th;
    • Indonesia 31st;
    • China is unranked (officially, the country has fever than 250,000 cases, although overall robustness of the Chinese data is highly questionable); and
    • South Africa ranks 22nd worst.
  • No BRIICS country enters the league of 22 countries most-impacted by the pandemic (defined as countries with infection rate of 4% of population and higher).

Most current summary of key stats is below:


Now, to dynamics and trends.


BRIICS weekly case numbers are on the sustained rise, once again, since the trough achieved in week 45 which marked the end of the Wave 1 and the start of Wave 2 of the pandemic:


India and Brazil are showing robust and weakly-robust declines in weekly cases, while Russia and South Africa are showing robust increases. Other BRIICS are on a weak upward trend. Put frankly, my expectation is for a rise in India cases in weeks ahead as the new wave of the pandemic starts to take hold. Brazil being in a summer season is likely to have a longer lead time into the new wave.

Rather similar dynamics are taking place in deaths counts:



One key feature of the data is, of course, the clearly unreliable data from China that skews overall picture for the BRIICS group as a whole. If China's data was running at 0.75-0.9 of the average BRIICS rates, the country would have reported over 9.26 million cases (as opposed to the officially-reported 96,292 cases) and 183,400 deaths (compared to the officially-reported 4,771 deaths). It is worth noting here that these estimates reflect BRIICS rates that include official China statistics (downward bias to the estimates). What is quite amazing is not the actual numbers themselves, but the nearly total silence on the state of the Chinese statistics in much of the Western media, despite the order of differences between China and other BRIICS. Take a look at the comparative table here:


Russian stats: scrutinized left, right and center on every op-ed and news page of all major media outlets in the West are pretty much bank-on as expected: worse than average in infection rates, worse than average in deaths per capita, roughly (statistically) below average in terms of mortality rate. Similar for India. China's data is a complete and total outlier, and yet not a peep from the mainstream news. 

2/1/21: Covid19 update: Countries with > 250K cases

 

In previous posts, I covered worldwide trends for Covid19 pandemic evolution (https://trueeconomics.blogspot.com/2021/01/2121-covid19-update-worldwide-numbers.html) and pandemic developments in Europe and the EU27 (https://trueeconomics.blogspot.com/2021/01/2121-covid19-update-europe.html). Here, let's take a look at the set of countries with more than 250,000 confirmed cases.

As of week 52 of 2020, there were 40 countries in this group, accounting for 90 percent of the world total number of cases, 92 percent of the global deaths and 64 percent of the world's population. 


Tables below provide summary statistics for these countries:


You can click on the charts to magnify them.

The same data reported by regions and continents:

And a table of summary statistics:


Some noteworthy observations from the above:

  • The U.S. is the worst performing major advanced economy when it comes to the pandemic trends: it ranks 2nd worst in the world in terms of its numbers of Covid19 cases per 1 million of population, 7th worst in the world in terms of its death rate per capita, but a reasonably-benign 25th in the world in mortality rate (deaths per positive test case). Using the three metrics mentioned, the U.S. ranks 6th worst performing country in the league of all countries with > 250,000 cases.
  • The UK ranks even worse than the U.S. The country ranks 15th worst in the world in the rate of infections (Covid19 positive tests per capita), and 5th worst in deaths per capita and deaths per positive case. Across all three metrics, the UK ranks third worst in the world.
  • Belgium ranks the worst major country in overall pandemic impact terms (cases per capita, deaths per capita and deaths per case), followed by Italy in the second place. The UK, as mentioned above ranks the third, Spain forth, Peru fifth, the US and Argentina tied in the sixth place, Hungary comes in 8th, Czechia 9th and France 10th. Thus, six out of the 10 worst hit countries in the world are EU27 members.
  • In mortality terms (deaths per 1,000 cases), Mexico is the worst-performing country with 88.42 deaths per 1,000 positive cases; followed by Iran (45.56), Peru (37.19), Italy (35.12) and the UK (30.52). Overall, only 6 countries have mortality rates > 30 per 1,000 positive tests.
  • There were 7 countries with more than 1,000 deaths per 1 million of population, and only 4 countries with infection rate of > 50,000 cases per 1 million of population.
Another summary table, showing relative contributions of each country to global cases and deaths, as well as their relative shares of total global population:


The above highlights once again the severity of the pandemic in the U.S., the UK and the EU27.