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Notations and Preliminaries

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Statistical Signal Processing

Abstract

This chapter provides a quick review of different concepts and results which have been used quite extensively throughout this monograph. Most of the results have been provided without proof, but references have been provided for interested readers. We have provided a brief review of (i) matrix theory, (ii) regression analysis, (iii) numerical algorithms, (iv) basic probability results, (v) Prony’s method and (vi) linear prediction.

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Correspondence to Swagata Nandi .

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Nandi, S., Kundu, D. (2020). Notations and Preliminaries. In: Statistical Signal Processing. Springer, Singapore. https://doi.org/10.1007/978-981-15-6280-8_2

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