That figure is average life expectancy. IE 50% of US man are expected to reach 77.
A bit of history on why 65 was originally set as the retirement age.
The first country to set retirement at 65 was the Weimar Republic in Germany (1918-1933).
The reason 65 was chosen was that at that time only 5% (1 in 20) of the German population made it to 65. Retirement and the pension was a case of “You have worked hard all you life and will die soon, this is to let your final years be a bit easy”
Over the last century, in the west at least, over average lifespan has increased markedly and the quality of life for people of advanced age has also increased.
Many government now face the issue that they cannot afford to keep paying retirement benefits for two reasons:
1: Many many more people are reaching retirement age and they are living for decades more, rather than a few years.
2: With the decline in birthrates the ratio of working people to those in retirement has changed from about 10 to 1 to about 5 to 1 and is expected to get worse in the decades to come.
This does not answer your question but gives you an idea of the issues and hard decisions soci8eties will have to face in the coming decades.
In the US, social security is a tax on poor people earning less than~$160k. That’s the bottom 90% of earners.
The top 10% of earners collect about half of the country’s personal income. Each of them does have to pay SS tax on the first $160k of earned income, but clearly there’s a huge pool of income that doesn’t pay into social security.
To that point SS is fully funded till about 2035 and then can pay out approx 75% of benefits after that. Removing that $160K cap would pretty much solve things.
In the same time frame, humanity went from 2 Billion people, to 10 billion people. 500% increase.
I don’t care what the actual math works out to. If we have become literally 2500% more productive as a species in the last 100 years, while increasing the total amount of people a whole FACTOR down from that, then we deserve the other numeral root. We have a right to have 5x more average wealth than a person 100 years ago.
And we don’t.
Infact, google tells me we stagnated since the 70’s. Literally stopped the common man becoming richer since the post-wars.
That figure is average life expectancy. IE 50% of US man are expected to reach 77.
I can’t access the full paper that this is in reference too, so I’m not sure how they calculate it… but isn’t life expectancy usually the mean age of death? I would expect the distribution to have a left skew from people who die young, which should mean that more than 50% of US men are expected to reach 77.
Take a life table, check the column that says lx, that means how many people of the model are alive with x years, normally l_0 = 10000. Then go down until you found lx = 5000 or lx = 1/2 l_0, that x is your life expectancy at birth. If you want to know the life expectancy at any age, look for the value of lx at that age, then look in how many years that value half, that’s the expectancy.
Source: I’m an actuarie and study that in college, but don’t ask me to go deeper because I don’t use that at my job.
That marks the median age of death, but I don’t think that’s the definition of life expectancy (though maybe the term is used loosely or imprecisely to mean the median age of death or the average (mean) age of death in different situations…). The definitions of life expectancy I found claim it’s the mean age of death, which would make sense because the expected value of a random variable is the arithmetic mean. That said, the median on the life tables that I have found seem to correlate much more closely to the age of 77 versus the life expectancy at birth which is much lower (78-79 for the median and 74 for the life expectancy at birth for 2020 data)… but the actual paper is behind a pay wall so I have no idea what they’re actually computing for 77 years of life expectancy… my guess is that it’s the median and not the mean, but maybe they’re considering people over a certain age or something… either way, the mean / median getting confused is an issue and I wish people were more clear about what metric is actually being communicated.
Okay, I couldn’t look at this table when I responded last night (I thought you were referring to the zip files, not the PDFs at the bottom). Got a chance to look at them on my computer today!
Would you call the point where I_x = 1/2 I_0 the life expectancy at birth? In the life tables you link to (direct link to the 2020 table) there’s an “expectation of life at age x” column which differs! My understanding is that in official metrics of “life expectancy” they usually mean the “life expectancy at birth”, which is calculated in the “expectation of life at age x” column in this data set, do actuaries use a different definition?
In this table “life expectancy at birth” is estimated at 74.2 for men in the USA in 2020. This is calculated in this table by computing T_0 / I_0, which is the arithmetic mean for the ages of death in this period. The estimate for the median age of death in this table is between the ages of 79 and 80. There’s about a 5 year difference between these two numbers, and furthermore only about 40% of the population of men has died by the ages of 74-75 in this table, which is quite different from 50% if we assume “life expectancy” is this arithmetic mean. These are pretty big differences, and I really wish people / articles would be more clear about how the number they’re quoting was actually calculated and what it means! The estimated median age of death from the point I_x = 1/2 I_0 is a useful measure too, but I have no idea what a random person or article intends when they say “life expectancy” :|. I’ve grown to deeply distrust any aggregate measure that people discuss informally or in news articles… It’s often very unclear how that number was derived, what that number actually means in a mathematical sense, and if it even means anything at all.
I think im going crazy because I was sure that the ex was the easily calculated as I told before, but I just checked a couple of different mortality tables and the math doesn’t check out. I have no worked with life tables since college, but I’m going to ask my boss, that used to work with life insurance, about it tomorrow and follow up with his answer.
I just talked to my boss and he didn’t knew where the fuck I learned that because it had no sense. Maybe I saw some wicked up life tables where for some reason it worked like that. The formula is sum(i=x,w) l_i /l_x, that means (l_x + l_x+1 + … + l_w) / l_x, where w is the maximum life of the table.
To me mean = average, so the two statements are the same.
Are you talking about median age of death?
When child mortality was very high (pre- 20 century) that was definitely the case. I am not so sure that it is now. I feel that average life expectancy will be a lot closer to 50% survival rate (median age of death) than it was in the past.
To me mean = average, so the two statements are the same.
Are you talking about median age of death?
The median is the midpoint of a sample, not the mean. So, the median point represents the age where 50% of people will live to, the mean does not represent that (it’s often relatively close to the median assuming the data doesn’t have too much skew, but it can be way off).
When child mortality was very high (pre- 20 century) that was definitely the case. I am not so sure that it is now. I feel that average life expectancy will be a lot closer to 50% survival rate (median age of death) than it was in the past.
There are still plenty of people who die young, even though child mortality is less of a factor in wealthy countries right now. Plenty of people die in car accidents at a relatively young age, for instance. I’m sure the median and mean aren’t like 10 years off of each other, but I wouldn’t be surprised if they’re 3 or even 5 years off.
Well, the definition of the mean and median of a sample doesn’t depend on the particular data set, and there’s plenty of non-age related causes of death in the world which would logically skew the distribution to the left! You can look at actuarial tables to see this in action:
Male life expectancy at birth in this table is 74.12, but you’ll notice that you don’t get to 50% of the population dying until somewhere between the ages of 78 and 79.
This website has a pretty good chart showing the skew for a 2019 dataset:
That figure is average life expectancy. IE 50% of US man are expected to reach 77.
A bit of history on why 65 was originally set as the retirement age.
The first country to set retirement at 65 was the Weimar Republic in Germany (1918-1933).
The reason 65 was chosen was that at that time only 5% (1 in 20) of the German population made it to 65. Retirement and the pension was a case of “You have worked hard all you life and will die soon, this is to let your final years be a bit easy”
Over the last century, in the west at least, over average lifespan has increased markedly and the quality of life for people of advanced age has also increased.
Many government now face the issue that they cannot afford to keep paying retirement benefits for two reasons:
1: Many many more people are reaching retirement age and they are living for decades more, rather than a few years.
2: With the decline in birthrates the ratio of working people to those in retirement has changed from about 10 to 1 to about 5 to 1 and is expected to get worse in the decades to come.
This does not answer your question but gives you an idea of the issues and hard decisions soci8eties will have to face in the coming decades.
deleted by creator
In the US, social security is a tax on poor people earning less than~$160k. That’s the bottom 90% of earners.
The top 10% of earners collect about half of the country’s personal income. Each of them does have to pay SS tax on the first $160k of earned income, but clearly there’s a huge pool of income that doesn’t pay into social security.
To that point SS is fully funded till about 2035 and then can pay out approx 75% of benefits after that. Removing that $160K cap would pretty much solve things.
But the rich don’t want to pay poor people’s retirement, that’s for the poor people to handle
If you ask my layman’s opinion, I would say absolutely. But it’s only because of one number: The entire world’s GDP, adjusted to inflation.
https://ourworldindata.org/grapher/world-gdp-over-the-last-two-millennia?time=1870..latest
In the same time frame, humanity went from 2 Billion people, to 10 billion people. 500% increase.
I don’t care what the actual math works out to. If we have become literally 2500% more productive as a species in the last 100 years, while increasing the total amount of people a whole FACTOR down from that, then we deserve the other numeral root. We have a right to have 5x more average wealth than a person 100 years ago.
And we don’t.
Infact, google tells me we stagnated since the 70’s. Literally stopped the common man becoming richer since the post-wars.
Where did 4 of those 5 go?
Kill them. Cook them. Eat them.
I can’t access the full paper that this is in reference too, so I’m not sure how they calculate it… but isn’t life expectancy usually the mean age of death? I would expect the distribution to have a left skew from people who die young, which should mean that more than 50% of US men are expected to reach 77.
Take a life table, check the column that says lx, that means how many people of the model are alive with x years, normally l_0 = 10000. Then go down until you found lx = 5000 or lx = 1/2 l_0, that x is your life expectancy at birth. If you want to know the life expectancy at any age, look for the value of lx at that age, then look in how many years that value half, that’s the expectancy. Source: I’m an actuarie and study that in college, but don’t ask me to go deeper because I don’t use that at my job.I was wrong.
That marks the median age of death, but I don’t think that’s the definition of life expectancy (though maybe the term is used loosely or imprecisely to mean the median age of death or the average (mean) age of death in different situations…). The definitions of life expectancy I found claim it’s the mean age of death, which would make sense because the expected value of a random variable is the arithmetic mean. That said, the median on the life tables that I have found seem to correlate much more closely to the age of 77 versus the life expectancy at birth which is much lower (78-79 for the median and 74 for the life expectancy at birth for 2020 data)… but the actual paper is behind a pay wall so I have no idea what they’re actually computing for 77 years of life expectancy… my guess is that it’s the median and not the mean, but maybe they’re considering people over a certain age or something… either way, the mean / median getting confused is an issue and I wish people were more clear about what metric is actually being communicated.
Okay, I couldn’t look at this table when I responded last night (I thought you were referring to the zip files, not the PDFs at the bottom). Got a chance to look at them on my computer today!
Would you call the point where I_x = 1/2 I_0 the life expectancy at birth? In the life tables you link to (direct link to the 2020 table) there’s an “expectation of life at age x” column which differs! My understanding is that in official metrics of “life expectancy” they usually mean the “life expectancy at birth”, which is calculated in the “expectation of life at age x” column in this data set, do actuaries use a different definition?
In this table “life expectancy at birth” is estimated at 74.2 for men in the USA in 2020. This is calculated in this table by computing T_0 / I_0, which is the arithmetic mean for the ages of death in this period. The estimate for the median age of death in this table is between the ages of 79 and 80. There’s about a 5 year difference between these two numbers, and furthermore only about 40% of the population of men has died by the ages of 74-75 in this table, which is quite different from 50% if we assume “life expectancy” is this arithmetic mean. These are pretty big differences, and I really wish people / articles would be more clear about how the number they’re quoting was actually calculated and what it means! The estimated median age of death from the point I_x = 1/2 I_0 is a useful measure too, but I have no idea what a random person or article intends when they say “life expectancy” :|. I’ve grown to deeply distrust any aggregate measure that people discuss informally or in news articles… It’s often very unclear how that number was derived, what that number actually means in a mathematical sense, and if it even means anything at all.
I think im going crazy because I was sure that the ex was the easily calculated as I told before, but I just checked a couple of different mortality tables and the math doesn’t check out. I have no worked with life tables since college, but I’m going to ask my boss, that used to work with life insurance, about it tomorrow and follow up with his answer.
I just talked to my boss and he didn’t knew where the fuck I learned that because it had no sense. Maybe I saw some wicked up life tables where for some reason it worked like that. The formula is sum(i=x,w) l_i /l_x, that means (l_x + l_x+1 + … + l_w) / l_x, where w is the maximum life of the table.
To me mean = average, so the two statements are the same.
Are you talking about median age of death?
When child mortality was very high (pre- 20 century) that was definitely the case. I am not so sure that it is now. I feel that average life expectancy will be a lot closer to 50% survival rate (median age of death) than it was in the past.
The median is the midpoint of a sample, not the mean. So, the median point represents the age where 50% of people will live to, the mean does not represent that (it’s often relatively close to the median assuming the data doesn’t have too much skew, but it can be way off).
There are still plenty of people who die young, even though child mortality is less of a factor in wealthy countries right now. Plenty of people die in car accidents at a relatively young age, for instance. I’m sure the median and mean aren’t like 10 years off of each other, but I wouldn’t be surprised if they’re 3 or even 5 years off.
Well, both of us are making assumptions without doing the research.
So. I respect your opinion but neither of us knows that we are actually correct.
Well, the definition of the mean and median of a sample doesn’t depend on the particular data set, and there’s plenty of non-age related causes of death in the world which would logically skew the distribution to the left! You can look at actuarial tables to see this in action:
https://www.ssa.gov/oact/STATS/table4c6.html
Male life expectancy at birth in this table is 74.12, but you’ll notice that you don’t get to 50% of the population dying until somewhere between the ages of 78 and 79.
This website has a pretty good chart showing the skew for a 2019 dataset: