This is a simply statistics.

The R is essentially the change in case numbers over time. For example if on average one person infects two other people over 10 days the number of active cases will double and the RT =2.

Presently with case numbers so low the certainty of the accuracy of the case numbers decreases. The test parameters come into play. With a test specificity of 99% if we test 18000 people we would expect 180 false positive yet we had only 140 odd positives yesterday so you can see how that induces uncertainty into the current numbers. Now we square that uncertainty by looking at two points in time so that increases the uncertainty of the current Rt.

Hope I kinda explained it well enough but I think you will get the picture. If cases go from 150 to 300 in 10 days time is that really a Rt of 2? Whereas if they go from 15000 to 30000 that is far more statistically relevant.

Yes quite correct. A good explanation. It shows how the underlying dynamics and data values will affect the calculations.

This sets up a situation that is easily exploited by those with ulterior motives. Hence why we already have at least two camps amongst our experts, one group saying that a 4th wave is unlikely and if it does occur, it is going to be insignificant.

The other camp is looking at the higher estimate and saying the 4th wave is definite and it is going to be severe enough to justify a return of lockdowns.

Now put this into the perspective of how our data is collected in SA. We have always had a problem with data collection in GP. At the other extreme, WC data collection has been excellent.

And you can see it in the data and the analyses done.