You need to be careful, as there will be a loss of precision. The sin function is periodic, but 4^1000 is a big number. So effectively, we subtract off a multiple of 2*pi to move the argument into the interval [0,2*pi).
4^1000 is roughly 1e600, a really big number. So I'll do my computations using my high precision floating point tool in MATLAB. (In fact, one of my explicit goals when I wrote HPF was to be able to compute a number like sin(1e400). Even if you are doing something for the fun of it, doing it right still makes sense.) In this case, since I know that the power we are interested in is roughly 1e600, then I'll do my computations in more than 600 digits of precision, expecting that I'll lose 600 digits by the subtractive cancellation. This is a massive subtractive cancellation issue. Think about it. That modulus operation is effectively a difference between two numbers that will be identical for the first 600 digits or so!
X = hpf(4,1000);
What is the nearest multiple of 2*pi that does not exceed this number? We can get that by a simple operation.
twopi = 2*hpf('pi',1000);
As you can see, the first 600 digits were the same. Now, when we subtract the two numbers,
X^1000 - twopi*floor(X^1000/twopi)
This is why I referred to it as a massive subtractive cancellation issue. The two numbers were identical for many digits. Even carrying 1000 digits of accuracy, we lost many digits. When you subtract the two numbers, even though we are carrying a result with 1000 digits, only the highest order 400 digits are now meaningful.
HPF is able to compute the trig function of course. But as we showed above, we should only trust roughly the first 400 digits of the result. (On some problems, the local shape of the sin function might cause us to lose more digits than that.)
So am I right, and we cannot trust all of these digits? I'll do the same computation, once in 1000 digits of precision, then a second time in 2000 digits. Compute the absolute difference, then take the log10. The 2000 digit result will be our reference as essentially exact compared to the 1000 digit result.
double(log10(abs(sin(hpf(4,[1000 0])^1000) - sin(hpf(4,[2000 0])^1000))))
Ah. So of those 1000 digits of precision we started out with, we lost 602 digits. The last 602 digits in the result are non-zero, but still complete garbage. This was as I expected. Just because your computer reports high precision, you need to know when not to trust it.
Can we do the computation without recourse to a high precision tool? Be careful. For example, suppose we use a powermod type of computation? Thus, compute the desired power, while taking the modulus at every step. Thus, done in double precision:
X = 1;
for i = 1:1000
X = mod(X*4,2*pi);
Ah, but remember that the true answer was -0.19033458127208318385994396068455455709388...
So there is essentially nothing of significance remaining. We have lost all our information in that computation. As I said, it is important to be careful.
What happened was after each step in that loop, we incurred a tiny loss in the modulus computation. But then we multiplied the answer by 4, which caused the error to grow by a factor of 4, and then another factor of 4, etc. And of course, after each step, the result loses a tiny bit at the end of the number. The final result was complete crapola.
Lets look at the operation for a smaller power, just to convince ourselves what happened. Here for example, try the 20th power. Using double precision,
Now, use a loop in a powermod computation, taking the mod after every step. Essentially, this discards multiples of 2*pi after each step.
X = 1;
for i = 1:20
X = mod(X*4,2*pi);
But is that the correct value? Again, I'll use hpf to compute the correct value, showing the first 20 digits of that number. (Since I've done the computation in 50 total digits, I'll absolutely trust the first 20 of them.)
In fact, while the results in double precision agree to the last digit shown, those double results were both actually wrong past the 5th significant digit. As it turns out, we STILL need to carry more than 600 digits of precision for this loop to produce a result of any significance.
Finally, to fully kill this dead horse, we might ask if a better powermod computation can be done. That is, we know that 1000 can be decomposed into a binary form (use dec2bin) as:
512 + 256 + 128 + 64 + 32 + 8
Can we use a repeated squaring scheme to expand that large power with fewer multiplications, and so cause less accumulated error? Essentially, we might try to compute
4^1000 = 4^8 * 4^32 * 4^64 * 4^128 * 4^256 * 4^512
However, do this by repeatedly squaring 4, then taking the mod after each operation. This fails however, since the modulo operation will only remove integer multiples of 2*pi. After all, mod really is designed to work on integers. So look at what happens. We can express 4^2 as:
4^2 = 16 = 3.43362938564083 + 2*(2*pi)
Can we just square the remainder however, then taking the mod again? NO!
We can understand what happened when we expand this form:
4^4 = (4^2)^2 = (3.43362938564083 + 2*(2*pi))^2
What will you get when you remove INTEGER multiples of 2*pi? You need to understand why the direct loop allowed me to remove integer multiples of 2*pi, but the above squaring operation does not. Of course, the direct loop failed too because of numerical issues.