The objective of time series analysis is to analyze and model patterns, trends, and relationships within time-dependent data to make accurate predictions, forecasts, and insights for decision-making.
Students will be able to:
Course |
Learning outcomes (at course level |
Learning and teaching strategies |
Assessment Strategies |
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Paper Code |
Paper Title |
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DSTT 801(C) |
Time Series Analysis |
CO 120: Define time series components and their uses
CO 121: Predict the time series data using different stationary time series data.
CO 122: Construct stationary time series models, nonlinear stochastic models and their applications
CO 123: Demonstrate their ability to apply statistics in other fields at an appropriate level
CO 124: Demonstrate their ability to apply knowledge acquired from their major to real world models. |
Approach in teaching:
Interactive Lectures, Group Discussion, Classroom Assignment Problem Solving Sessions
Learning activities for the students:
Assignments Seminar Presentation Subject based Activities |
Classroom Quiz Assignments Class Test Individual Presentation
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Introduction to times series data, application of time series from various fields, Components of a times series, Decomposition of time series. Trend: Estimation of trend by free hand curve method, method of semi averages, fitting a various mathematical curve, and growth curves.
Trend Cont.: Method of moving averages. Detrending. Effect of elimination of trend on other components of the time series. Seasonal Component: Estimation of seasonal component by Method of simple averages, Ratio to Trend.
Seasonal Component cont: Ratio to Moving Averages and Link Relative method, Deseasonalization. Cyclic Component: Harmonic Analysis. Stationary Time series: Weak stationarity, autocorrelation function and the correlogram.
Some Special Processes: Moving-average (MA) process and Autoregressive (AR) processes. Estimation of the parameters of AR (1) and AR (2). Autocorrelation functions of AR(1) and AR(2) processes. Introduction to ARMA and ARIMA models. Box-Jenkins method.
Random Component: Variate component method. Forecasting: Exponential smoothing methods, Short term forecasting methods: Brown’s discounted regression. Introduction to ARCH and GARCH models.
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