I am currently facing a statistical challenge while comparing the average weights of two populations of larvae, and I need help figuring out how to perform the analysis correctly given the constraints of my data collection.
Scenario:
- I have two large populations of larvae, each with unknown standard deviations.
- I need to sample both populations and determine if the difference in the average weights between the two populations is statistically significant.
- In a normal scenario, I would take two samples, calculate their means, and perform a t-test with unpooled variance (Welch's t-test) as per the Central Limit Theorem (CLT).
However, I cannot measure individual larval weights because the scale I’m using has a sensitivity of 100 micrograms, and the larvae themselves weigh much less than that. Therefore, I don’t have individual weights, and I cannot calculate the unpooled variance in a traditional manner.
What I Can Do: Instead of individual larval weights, I can take multiple large samples from both populations and record:
- The total weight of each sample.
- The size of each sample.
- The average weight per sample (calculated by dividing the total weight by the number of larvae).
The Problem: I’m looking for a method to compare the two populations using the limited data I have (total sample weights and average weights for varying sample sizes). There are a few complications:
1) Inference from observed Sampling Distribution:
Instead of estimating the variance of the sampling distribution through the individual observations within a single sample, I must estimate it using the variance of the observed sample means of multiple samples. There are multiple parameters to consider here - like the number of samples taken, as well as the individual sample sizes. How do I factor these into the calculation for the test?
2) Different Sample Sizes:
Each sample has a different size because the larvae are arbitrarily selected and weighed in the laboratory. The number of larvae is counted afterward using an ML computer vision model, which introduces variability in sample sizes. How should I handle these different sample sizes in the comparison?
3) Scale Sensitivity:
The scale rounds the total weights due to its sensitivity (100 micrograms). For example, if the total weight is recorded as 500 micrograms, the actual weight could range between 450 and 550 micrograms. We can assume that for a measured total weight X, the actual weight is uniformly distributed between 𝑋−50 and X+50. How do I account for this rounding error in the statistical test?
Note: Non-parametric tests are not an option here. I need to be able to detect effect sizes on a continuous scale, with a set confidence level and statistical power.
Given these challenges, how can I rigorously compare the two populations to determine whether the difference in average larval weights is statistically significant?
I appreciate any guidance on the appropriate statistical methods or adjustments I should make!
Thank you.