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Abstract
Dynamic factor models are widely utilized for short-term forecasting due to their robust predictive capabilities. However, significant challenges arise in parameter identification and estimation, particularly when dealing with serially dependent inputs and a large number of states (K). This thesis addresses these challenges by proposing a solution for the identification and computational problems in dynamic factor models when K is large.