Discrete Fourier Transform (Discrete Fourier Transform)
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Description
In mathematics, the discrete Fourier transform (DFT) converts a finite sequence of equally-spaced samples of a function into a same-length sequence of equally-spaced samples of the discrete-time Fourier transform (DTFT), which is a complex-valued function of frequency.
Parameters
$n$: length of the input data set
Table of Algorithms
Name | Year | Time | Space | Approximation Factor | Model | Reference |
---|---|---|---|---|---|---|
Naive algorithm | 1965 | $O(n^{2})$ | $O({1})$ | Exact | Deterministic | |
Cooley–Tukey algorithm | 1965 | $O(nlogn)$ | $O(n)$? | Exact | Deterministic | Time |
Rader–Brenner algorithm | 1976 | $O(nlogn)$ | $O(n)$? | Exact | Deterministic | Time |
Bruun's FFT algorithm | 1978 | $O(nlogn)$ | $O(n)$? | Exact | Deterministic | Time |
Yavne Split Radix FFT algorithm | 1968 | $O(nlogn)$ | $O(n)$? | Exact | Deterministic | Time |
Gentleman; Morven and Gordon Sande radix-4 algorithm | 1966 | $O(nlogn)$ | $O(n)$? | Exact | Deterministic | Time |
Bergland; Glenn radix-8 algorithm | 1969 | $O(nlogn)$ | $O(n)$ | Exact | Deterministic | Time & Space |
Extended Split Radix FFT algorithm | 2001 | $O(nlogn)$ | $O(n)$? | Exact | Deterministic | Time |
Von zur Gathen-Gerhard additive FFT | 1996 | $O(n (logn)$^{2}) | $O(n)$ | Exact | Deterministic | Time & Space |
Wang-Zhu-Cantor additive FFT | 1988 | $O(n(logn)$^{1.{58}5}) | $O(n)$? | Exact | Deterministic | Time |
Gao’s additive FFT | 2010 | $O(n logn loglogn)$ | $O(n)$ | Exact | Deterministic | Time & Space |
Time Complexity Graph
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Space Complexity Graph
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Space-Time Tradeoff Improvements
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