Time Series and Stochastic Processes ada 20 21 — различия между версиями
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This course is conducted at Data Science and Business Analytics program and is provided to 3rd-year undergraduates who have studied a course covering basic probability and statistical inference. A half of this course introduces concepts of Markov chains, random walks, martingales as well as of to the time series. The course requires basic knowledge in probability theory and linear algebra. It introduces students to the modeling, quantification and analysis of uncertainty. The main objective of this course is to develop the skills needed to do empirical research in fields operating with time series data sets. The course aims to provide students with techniques and receipts for estimation and assessment of quality of economic models with time series data. The course will also emphasize recent developments in Time Series Analysis and will present some open questions and areas of ongoing research. | This course is conducted at Data Science and Business Analytics program and is provided to 3rd-year undergraduates who have studied a course covering basic probability and statistical inference. A half of this course introduces concepts of Markov chains, random walks, martingales as well as of to the time series. The course requires basic knowledge in probability theory and linear algebra. It introduces students to the modeling, quantification and analysis of uncertainty. The main objective of this course is to develop the skills needed to do empirical research in fields operating with time series data sets. The course aims to provide students with techniques and receipts for estimation and assessment of quality of economic models with time series data. The course will also emphasize recent developments in Time Series Analysis and will present some open questions and areas of ongoing research. | ||
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+ | ! Group!! БПАД191 !! БПАД192 !! БПАД193 | ||
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+ | || Lecturer ||colspan="3"| [https://www.hse.ru/org/persons/14276760 Peter Lukianchenko] | ||
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+ | || Teacher ||colspan="3"| [https://www.hse.ru/staff/bbd Boris Demeshev] | ||
== Week progress == | == Week progress == |
Версия 12:56, 9 апреля 2021
Содержание
[убрать]General course info
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This course is conducted at Data Science and Business Analytics program and is provided to 3rd-year undergraduates who have studied a course covering basic probability and statistical inference. A half of this course introduces concepts of Markov chains, random walks, martingales as well as of to the time series. The course requires basic knowledge in probability theory and linear algebra. It introduces students to the modeling, quantification and analysis of uncertainty. The main objective of this course is to develop the skills needed to do empirical research in fields operating with time series data sets. The course aims to provide students with techniques and receipts for estimation and assessment of quality of economic models with time series data. The course will also emphasize recent developments in Time Series Analysis and will present some open questions and areas of ongoing research.
Teachers and assistants
Group | БПАД191 | БПАД192 | БПАД193 |
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Lecturer | Peter Lukianchenko | ||
Teacher | Boris Demeshev
Week progressWeek 01
Week 02
Week 03
Week 04Week 05
Week 06
Week 07Ito integral WtdWt, Ito's lemma SourcesStochastic Calculus
Time SeriesUCMMC + MCMC
Grading SystemInterim assessment (2 module): Interim assessment (4 module): |