\section{Contribution} \label{sec:lmdk-contrib} In this chapter, we formally define a novel privacy notion that we call \emph{{\thething} privacy}. We apply this privacy notion to time series consisting of \emph{{\thethings}} and regular events, and we design and implement three {\thething} privacy mechanisms. We further study {\thething} privacy under temporal correlation that is inherent in time series publishing. Finally, we evaluate {\thething} privacy with real and synthetic data sets, in settings with or without temporal correlation, showcasing the validity of our model.