Large-sample confidence intervals of information-theoretic measures in linguistics
Ryan Ka Yau Lai, Youngah Do
2020Journal of Research Design and Statistics in Linguistics and Communication Science14 citationsDOI
Abstract
This article explores a method of creating confidence bounds for information-theoretic measures in linguistics, such as entropy, Kullback-Leibler Divergence (KLD), and mutual information. We show that a useful measure of uncertainty can be derived from simple statistical principles, namely the asymptotic distribution of the maximum likelihood estimator (MLE) and the delta method. Three case studies from phonology and corpus linguistics are used to demonstrate how to apply it and examine its robustness against common violations of its assumptions in linguistics, such as insufficient sample size and non-independence of data points.
Topics & Concepts
Information theoryKullback–Leibler divergenceMutual informationPrinciple of maximum entropyDivergence (linguistics)MathematicsLinguisticsTheoretical linguisticsEntropy (arrow of time)EstimatorStatisticsComputer scienceEconometricsPhilosophyPhysicsQuantum mechanicsBayesian Methods and Mixture ModelsStatistical Mechanics and EntropyNeural Networks and Applications