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MITx: Learning Time Series with Interventions

An in-depth introduction to time series analysis, from learning structured models to predictions and reinforcement learning, with hands-on projects - Part of the MITx MicroMasters program in Statistics and Data Science.

Learning Time Series with Interventions
14 semanas
10–14 horas por semana
Al ritmo del instructor
Con un cronograma específico
Gratis
Verificación opcional disponible

Hay una sesión disponible:

Una vez finalizada la sesión del curso, será archivadoAbre en una pestaña nueva.
Comenzó el 17 sept
Termina el 30 dic

Sobre este curso

Omitir Sobre este curso

If you have specific questions about this course, please contact us atsds-mm@mit.edu.

A time series is a time-stamped set of noisy observations from an underlying process that evolves over time. These observations are dependent on each other in a particular, unknown, fashion. Examples of such series include stock values, value of a currency with respect to the dollar, mean housing prices, the number of Covid-19 infections, or the pitch angle of an airplane during flights. Modeling such processes for the purpose of prediction or intervention is a fundamental problem in statistical learning.

This graduate-level course that will address three lines of development:

Learning Structured Models: In this module, we focus on learning the underlying stochastic dynamic model that generates the data. We discuss how algorithms depend on the underlying class of models adopted for this learning. We address the accuracy and reliability of our learned models.

Prediction: In this module, we make no assumptions on how the data is generated and focus on predicting the next outcome of the process based on past observations. In this context, we analyze Matrix and Tensor Completion Methods in providing such predictions and we analyze the accuracy of these prediction in the presence of noise, missing data.

Optimal Intervention and Reinforcement Learning (RL): A key ingredient of RL is a simulator that can estimate the value of a reward for a given intervention. In this module course, we build on techniques from RL as well as the first two parts to show how new intervention/control can be derived with better outcomes.

This course will consist of three hands-on projects, in which learners will apply knowledge gained in lectures, build models and implement algorithms to solve problems posed on real time series data sets.

This course is part of theMITx MicroMasters Program in Statistics and Data Science. Master the skills needed to be an informed and effective practitioner of data science. You will complete this course and three others from MITx, at a similar pace and level of rigor as an on-campus course at MIT, and then take a virtually-proctored exam to earn your MicroMasters, an academic credential that will demonstrate your proficiency in data science or accelerate your path towards an MIT PhD or a Master's at other universities. To learn more about this program, please visithttps://micromasters.mit.edu/ds/.

De un vistazo

  • Institution MITx
  • Subject Análisis de datos
  • Level Intermediate
  • Prerequisites
    • Undergraduate Python programming
    • Undergraduate multi-variable calculus, and linear algebra,.
    • Undergraduate probability theory and statistics
    • basic knowledge of complex numbers

Lo que aprenderás

Omitir Lo que aprenderás
  • Analyze time series through the perspective of Linear Time-invariant (LTI) systems and use methods and tools such as spectral analysis.
  • Model time series using autoregressive moving average (ARMA) and integrated processes.
  • Perform prediction, imputation on general time series data using matrix completion methods.
  • Use various dynamical programming and reinforcement learning algorithms to optimize control and interventions for time series.

¿Quién puede hacer este curso?

Lamentablemente, las personas residentes en uno o más de los siguientes países o regiones no podrán registrarse para este curso: Irán, Cuba y la región de Crimea en Ucrania. Si bien edX consiguió licencias de la Oficina de Control de Activos Extranjeros de los EE. UU. (U.S. Office of Foreign Assets Control, OFAC) para ofrecer nuestros cursos a personas en estos países y regiones, las licencias que hemos recibido no son lo suficientemente amplias como para permitirnos dictar este curso en todas las ubicaciones. edX lamenta profundamente que las sanciones estadounidenses impidan que ofrezcamos todos nuestros cursos a cualquier persona, sin importar dónde viva.

Este curso es parte del programa Statistics and Data Science (Time Series and Social Sciences Track) MicroMasters

Más información 
Instrucción por expertos
5 cursos de nivel universitario
Dictado por instructores
Las tareas y los exámenes tienen fechas de entrega específicas
1 año 1 mes
10 - 14 horas semanales

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