Performance Bounds for Parameter Estimation under Misspecified Models: Fundamental findings and applications
S. Fortunati, F. Gini, M. S. Greco, C. D. Richmond

TL;DR
This paper reviews fundamental theoretical bounds on parameter estimation performance when models are misspecified, highlighting their importance across various scientific fields and discussing practical applications.
Contribution
It synthesizes fifty years of theoretical results on performance bounds under model misspecification and illustrates their relevance through diverse applications.
Findings
Performance bounds under misspecification are crucial for understanding estimator limitations.
Theoretical results from statistical and econometric literature provide insights into estimation performance.
Applications span wireless communications, radar, biomedicine, and more.
Abstract
Inferring information from a set of acquired data is the main objective of any signal processing (SP) method. In particular, the common problem of estimating the value of a vector of parameters from a set of noisy measurements is at the core of a plethora of scientific and technological advances in the last decades; for example, wireless communications, radar and sonar, biomedicine, image processing, and seismology, just to name a few. Developing an estimation algorithm often begins by assuming a statistical model for the measured data, i.e. a probability density function (pdf) which if correct, fully characterizes the behaviour of the collected data/measurements. Experience with real data, however, often exposes the limitations of any assumed data model since modelling errors at some level are always present. Consequently, the true data model and the model assumed to derive the…
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