What determines the precision of uncertainties?

In summary, the conversation discusses two examples of measuring uncertainty and how they differ in terms of epistemological and ontological uncertainties. The first example involves measuring the length of a pencil with a ruler that is graduated in units of cm, while the second example involves measuring the lengths of a set of nearly identical pencils. The uncertainty in the first example is limited by the precision of the ruler, while the uncertainty in the second example is affected by both the precision of the measuring device and the inherent uncertainties in quantum physics. The conversation also considers different scenarios and their implications for reporting uncertainty, such as rounding to the nearest mm or reporting an uncertainty with more than one significant figure.
  • #1
SamBam77
27
0
What limits the precision with which you can describe the uncertainty of a measurement?

I will describe two examples that feel qualitatively different, but I am not sure if they are quantitatively different in how you would deal with the uncertainty.

1) Measuring the length of a pencil with a ruler that is graduated in units of cm.
With such a measurement device you can accurately determine the length of the pencil down to the whole cm, and then you can estimate one additional decimal place further (mm). For example, one might determine that the pencil is 7.3 cm long. The uncertainty of the measurement lies with in tenths place value of the measurement. One estimate on the uncertainty might be 5 mm, since this is essentially the largest reasonable error one could make without causing the value to 'bleed over' into another cm unit. So one report the pencil's length as: 7.3 ± 0.5 cm. Here, only one measurement is being preformed on a single object. The uncertainty reported is the uncertainty in the last decimal place, and as such only has a single significant figure. It would not be reasonable to report values such as: 7.30 ± 0.5 cm or 7.3 ± 0.50 cm since these imply more precision than is possible to measure with this device.
Incidentally, in this example, what other ways might there by to estimate the uncertainty in the measurement besides that 'reasonable overestimate' of 5 mm that I described? Also, how does the uncertainty in the accurate of the ruler come into play? In my example, I assumed that the ruler, essentially, gave us our definition of what a cm is, but in actuality the graduation markings on the ruler could be drawn with some error (albeit a small one).

2) Measuring the lengths of a set of nearly identical pencils.
Through repeated measurements of these objects (one measurement per pencils, repeated for many pencil) one can collect a set of measurements for the length of this type of pencil. From this, one can determine the average length of this type of pencil (L). An estimate of the uncertainty in the length of this type of pencil is could be found as the standard deviation of the measured values (σ). At this point, one can report the pencils's length as: L ± σ. We will say that these measurements were preformed with the same ruler as in part 1, namely one graduated in units of cm, with individual measurements recorded with estimates down to mm precision. As such, L should have mm precision, at most (let's say 7.3 cm again). What about σ?
Three possible scenarios:
A) The distribution of measurements is extremely tight, for example σ = 0.0000034873 cm (intentionally displaying something that mimics a calculator output). Here, the first significant digit of the uncertainty is for a value far smaller than the minimum precision of the measuring device. Would one report an uncertainty of 0 mm, or 3E-6 cm? Neither of these feel right. How does the uncertainty from (1) come into play?
B) The distribution of measurements is extremely broad, for example σ = 4.3289483 cm (obviously these are hardly nearly identical pencils anymore as was previously assumed). Now the most significant digit in the uncertainty is the same order of magnitude as the average. So one would then neglect the mm precision of the measurement and report the length to be 7 ± 4 cm? Here I round the average value to the same most significant decimal (whole cm, in this case).
C) The distribution is in between the two extreme cases mentioned above, for example σ = 0.295401 cm. Now it seems reasonable to simple round everything to the nearest mm and report the length as 7.3 ± 0.3 cm.​
Would there ever be a reason where one is justified in reporting an uncertainty with more than one significant figure? For example, 7.3 ± 1.3 cm?
 
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  • #2
You have several questions here; I will deal with a few of them. First, the two types of uncertainty are different, in the sense that the first one deals only with epistemological uncertainty -- that is, based on your measuring device which in theory could be better -- and the second is applicable both to epistemological and ontological uncertainties: the latter's most famous example being the uncertainties in quantum physics, such as Heisenberg's Uncertainty Principle.
In the first example, as you imply, there are two uncertainties: the imprecision in the marking on your ruler, as well as the inability of your ruler, even if correctly marked, to "decide" more precisely than the markings give. So now we are up to three types of uncertainty.
For 2A, you say that reporting an uncertainty of 3E-6 cm doesn't "feel right". Nonetheless, that is indeed one way of talking about uncertainty. You just have to know which measure of uncertainty you are using in order for the error measurement to make sense. The 3E-6 cm error is then implicitly in reference to a given set of measuring tools. Therefore, according to the precision of your measuring tools, the 3E-6 cm error may be considered insignificant (or, to put it another way, equivalent to a 0 mm error).
Whether you would use more than one significant digit in centimeters, assuming that your ruler measures no more precisely millimeters? Only for the sake of indicating that your standard deviation was very small, but for practical purposes, IMHO, you would want a combination of the different kinds of uncertainty to arrive at a total uncertainty, and since 0.3 > 3E-6, it would end up as 0.3.
Hopefully this answer may now be improved upon by other contributors.
 

Related to What determines the precision of uncertainties?

1. What is the definition of uncertainty?

Uncertainty refers to the lack of complete knowledge or predictability in a situation or measurement. In science, it is often used to describe the imprecision in a measurement or the limits of our knowledge about a particular phenomenon.

2. How is uncertainty different from error?

Uncertainty and error are often used interchangeably, but they have distinct meanings. Error refers to the difference between the measured value and the true value, while uncertainty refers to the range of possible values that the true value could fall within.

3. What factors contribute to the precision of uncertainties?

The precision of uncertainties is influenced by several factors, including the quality of the measurement equipment, the skill of the person making the measurement, and the inherent variability of the phenomenon being measured. Additionally, the number of data points and the level of detail in the measurement can also affect the precision of uncertainties.

4. How can we reduce uncertainty in measurements?

There are several ways to reduce uncertainty in measurements, including using more precise and accurate equipment, increasing the number of data points, and improving the measurement techniques. Additionally, conducting multiple trials and taking the average can also help to reduce uncertainty.

5. What are some common sources of uncertainty in scientific measurements?

Some common sources of uncertainty in scientific measurements include human error, equipment limitations, natural variability in the phenomenon being measured, and limitations in the measurement techniques. Environmental factors such as temperature and humidity can also contribute to uncertainty in some cases.

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