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Locating a Shift in the Mean of a Time Series Melvin J. Hinich Applied Research Laboratories University of Texas at Austin [email protected] www.la.utexas.edu/~hinich Localizing a Single Change in the Mean A statistical uncertainty principle for the localization of a single change in the mean of a bandlimited stationary random process GOAL The smallest mean squared error for any estimate of the time of change Discrete-Time Sampling It is common in time series analysis to begin with a discrete-time sample of the time series Apply a linear bandlimited filter to the signal Then decimate the filtered output to obtain the discrete-time sample Linear Bandlimited Filter The filter is linear and causal The filter impulse response function is h t . y t 0 h s x t s ds The filter smoothes the input since the filter removed frequency components of the input for f f o Mean Shift If the mean of the signal has an abrupt shift from to at an unknown time o The shift in the mean of the output is H t o H t o 0t h s ds o Integrated Impulse Response Cumulative Impulse Response 1 0.9 0.8 0.7 Amplitude 0.6 0.5 0.4 0.3 0.2 0.1 0 1 201 401 601 Time 801 Ideal Bandpass Filter H ( f ) 1 for f o f f o H f 0 otherwise Impulse response of the ideal filter - sinc function sin 1t t 1 2 fo Meanshift The shift in the mean of x(tn) is 1 n 1 o sin F n o v dv v We will now derive the least squares estimate of the location of the shift for x tn F n o e tn 1 Maximum Likelihood Estimate ˆ - the least squares estimate of x t1 , o , x t N x tn F n 1 o e tn e tn ˆ i.i.d. gaussian variates with variance e2 is the value that maximizes the statistic N S F n 1 x tn n 1 Least Squares Estimate The least squares estimate of o is the value that maximizes S F n 1 x tn N n 1 The standard deviation of the estimate is approximately 1 ˆ E 2 fo Asymptotic Standard Deviation E - the total energy of the white noise Area under its bandlimited white noise spectrum 1 ˆ E 2 fo Hinich Test for a Changing Slope Parameter y tn a t n b t n x t n e t n a tn a 1tn b tn b 2tn y tn a 1tn bx tn 2tn x tn e tn Regress y tn on tn , x tn , tn x tn Test the significance of ˆ1 and ˆ2