Detaljer för kursplan för kurs FMS020F giltig från och med VT 2016 Utskriftsvänlig visning Kurskod:FMS020F Gäller från och med:Vårterminen 2016 Kursplanen är fastställd Allmänt Undervisningsspråk:Engelska Ges:Vid tillräcklig efterfrågan Intresseanmälan:Anmäl intresse via e-post Kurshemsida:http://www.maths.lu.se/index.php?id=110381 Syfte The main aim lies in enhancing the scope of statistical problems that the doctoral student will be able to solve. The aim is also that the doctoral student shall gain proficiency with modern statistical methods for inference in partially observed stochastic processes. Partially observed processes encompass a broad class of statistical models with applications in, e.g. finance, environment, and biology. The last purpose of the course is to give the doctoral student knowledge and tools for both parameter inference in partially observed stochastic processes, and reconstruction of the unobserved parts of the process. Computational difficulties of the methods and possible solutions will be presented, allowing the students to apply the methods in their own research. Innehåll Inference and data imputation for diffusions and other continuos-time stochastic processes; iterated filtering; particle marginal methods for parameter inference; approximate Bayesian computation (ABC); inference for Gaussian Markov random fields. Kunskap och förståelse För godkänd kurs skall doktoranden Be able to describe the principles and methods for conducting inference for partially observed stochastic processes, with focus on continuous time or space domains. Be able to describe and highlight potential computational difficulties in inference. Be able to identify suitable inferential strategies depending on the given problem formulation and application area. Färdighet och förmåga För godkänd kurs skall doktoranden Be able to select and use a suitable inference strategy for the model and data at hand. Be able to implement software code for one or more inferential methods. Compare and discuss results. Be able to use the developed model for prediction. Present the analysis and conclusions of the analysis in a written report. Värderingsförmåga och förhållningssätt För godkänd kurs skall doktoranden Be able to describe differences between outcomes resulting from the use of exact and approximate inference strategies. Be able to reflect on the considered inference methods and their strengths and limitations for different applications. Undervisningsformer Föreläsningar övningar Projekt Examinationsformer Skriftlig rapport Inlämningsuppgifter Kommentarer:To pass the course students must present the home assignments and an approved written project report. Betygsskala:Underkänd, godkänd Förkunskapskrav Basics of inference for stochastic processes, Bayesian methods and Monte Carlo methods (e.g. Markov Chain Monte Carlo, Metropolis-Hastings method). For example having taken the courses Time series analysis (FMS051/MASM17) and Monte Carlo and Empirical Methods for Stochastic Inference (FMS091/MASM11). Förutsatta förkunskaper Urvalskriterier Litteratur Litteratur: Kommentarer:The literature will consist of relevant key publications chosen by the lecturer(s). Övrig information Kurskod Kurskod:FMS020F Administrativ information Datum för fastställande: -12-21 Beslutad av:FN1/AndersGustafsson Alla publicerade kurstillfällen för kursplanen Inga matchande kurstillfällen hittades. 0 kurstillfällen. Utskriftsvänlig visning