Consider a p-dimensional zero mean
stationary stochastic process : \mathbf{X}(t) = {\lbrack X(1,t), X(2,t), \dots , X(p,t) \rbrack}^T Here
T denotes the matrix transposition. In
neurophysiology for example,
p refers to the total number of channels and hence \mathbf{X}(t) can represent simultaneous measurement of electrical activity of those
p channels. Let the sampling interval between observations be \Delta t, so that the
Nyquist frequency is f_N=1/(2 \Delta t). The multitaper spectral estimator utilizes several different data tapers which are orthogonal to each other. The multitaper cross-spectral estimator between channel
l and
m is the average of K direct cross-spectral estimators between the same pair of channels (
l and
m) and hence takes the form : \hat{S}^{lm} (f)= \frac{1}{K} \sum_{k=0}^{K-1} \hat{S}_k^{lm}(f). Here, \hat{S}_{k}^{lm}(f) (for 0 \leq k \leq K-1) is the
kth direct cross spectral estimator between channel
l and
m and is given by : \hat{S}_{k}^{lm}(f) = \frac{1}{N\Delta t} {\lbrack J_{k}^{l}(f) \rbrack}^{*} {\lbrack J_{k}^{m}(f) \rbrack}, where : J_k^l(f) = \sum_{t=1}^N h_{t,k}X(l,t) e^{-i 2\pi ft\Delta t}.
The Slepian sequences The sequence \lbrace h_{t,k} \rbrace is the data taper for the
kth direct cross-spectral estimator \hat{S}_k^{lm}(f) and is chosen as follows: We choose a set of
K orthogonal data tapers such that each one provides a good protection against leakage. These are given by the
Slepian functions or
discrete prolate spheroidal sequences, after
David Slepian (also known in literature as discrete prolate spheroidal sequences or DPSS for short) with parameter
W and orders
k = 0 to
K − 1. The maximum order
K is chosen to be less than the
Shannon number 2NW\Delta t. The quantity 2
W defines the resolution bandwidth for the
spectral concentration problem and W \in (0,f_{N}). When
l =
m, we get the multitaper estimator for the auto-spectrum of the
lth channel. In recent years, a dictionary based on modulated DPSS was proposed as an overcomplete alternative to DPSS. ==Applications==