What is the Proportion of Weeks with High or Low Deaths in the 1980s?

In summary: Assuming independence, the variance of the number of deaths in a given week (X_n) is: Var(X_n) = ? = ∑(X_n-x_i)^2/n. In summary, the Poisson distribution can be used to model the number of deaths in a week, but it is not an accurate model for the data because the assumption of independence is not true.
  • #1
knowLittle
312
3
In the 1980s, an average of 121.95 workers died on the job each week. Give estimates of the following quantities:
a.) the proportion of weeks having 130 deaths or more;
b.) the proportion of weeks having 100 deaths or less.
Explain your reasoning.

Procedure
I'm not sure, how to start. This might not be a Poisson or Binomial R.V.

Could someone help?
 
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  • #2
Ideally you need to know more about the distribution of the number of deaths each week.
 
  • #3
What you could do is write down the formula for a Confidence Interval with the upper interval 130 and lower 100, with mean 121.95 and work out the "percentage value". Divided by 2 that would give you what you need.(I think)

Now you would need to know the distribution to do this, So if you think it may be the Poisson or Binomial try it, but intuitively I don't see how those distributions would fit this type of data.

I would try the Normal Distribution
 
  • #4
knowLittle said:
In the 1980s, an average of 121.95 workers died on the job each week. Give estimates of the following quantities:
a.) the proportion of weeks having 130 deaths or more;
b.) the proportion of weeks having 100 deaths or less.
Explain your reasoning.

Procedure
I'm not sure, how to start. This might not be a Poisson or Binomial R.V.

Could someone help?

Hey knowLittle.

The first thing you need to ask for this rate process is if every death realized is independent of every other death realized for this rate process for the entire period of all data collected.

In practice you can't really use this assumption because in a case like this, instances of deaths will for example change or introduce legislation to make work-places safer and things like this.

Because of this modelling deaths in workplace accidents is not an independent process reflecting a true Poisson process, but something different.

In terms of what a Poisson distribution is, it's just a limiting case of the binomial distribution where an interval shrinks to zero as the result of a limit.

If you want to use a Poisson distribution (and I think your question is implying this) then estimate the parameters (i.e. the value of λ) and use the CDF of the distribution to obtain an answer.

But again for practicality, I stress that you need to understand what independence means and when it is a safe assumption to use and when it is not a safe assumption to use because in a case like this, if you modeled death rate processes using an independent assumption, especially over a long time period that had many amendments and introduction of legislation and safety laws, then you're analysis will be useless and your recommendations will be useless.
 
  • #5
I think we can apply the Central Limit Theorem here (correct me if I'm wrong). The number of observations should be large enough to use the CLT -- the death rate was measured weekly for several years. Then by the CLT the distribution of weekly death rates should converge to the normal distribution. Note, that we need to assume that each death occurs independently. This will not be strictly true, but the assumption is not very strong.

To be more precise, the CLT says that: given a sequence of random variables [itex]X_n[/itex] (in our case each [itex]X_n[/itex] is the number of deaths in week [itex]n[/itex]), as [itex]n→∞[/itex] [itex](\sum X_n)/n[/itex] converges to the normal distribution with mean 121.95 and ? variance. Is there any information on variance?
 

1. How is the estimate for deaths per week calculated?

The estimate for deaths per week is calculated by taking the total number of deaths reported for a specific time period (usually a week) and dividing it by the total population during that time period. This gives us an estimate of the number of deaths per week per 100,000 people.

2. Why is it important to estimate deaths per week?

Estimating deaths per week can help us track and monitor the mortality rate in a certain population. This information can be used to identify potential health issues and trends, as well as evaluate the effectiveness of public health interventions.

3. How accurate are these estimates?

The accuracy of these estimates depends on the data used and the method of calculation. Generally, the larger the sample size and the more reliable the data source, the more accurate the estimate will be.

4. Can estimate deaths per week be used to predict future mortality rates?

While estimate deaths per week can give us an idea of current mortality rates, it should not be used as a predictor for future rates. Many factors can influence mortality rates and these estimates may not account for all of them.

5. Are there any limitations to estimating deaths per week?

Yes, there are some limitations to estimating deaths per week. These estimates can be affected by incomplete or inaccurate data, as well as changes in population, healthcare access, and other factors. It is important to interpret these estimates carefully and consider other factors before drawing conclusions.

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