In this course, our primary aim is to delve deep into advanced data analysis methods, enabling you to handle vast and unstructured datasets with confidence and expertise.
Throughout this journey, you will gain a comprehensive understanding of cutting-edge techniques that extend beyond basic predictions. We emphasize obtaining statistically valid inferences on parameters, hypotheses, probabilistic forecasts, and measures of uncertainty, with Bayesian methodology serving as a central framework for probabilistic machine learning. The course strikes a balance between theory and practical applications, ensuring you not only know how to apply these methods but also understand the fundamental principles behind them.
Our course modules will guide you through foundational concepts in Bayesian statistics and computational methods, high-dimensional statistics, probabilistic machine learning, causal inference, and the analysis of unstructured data. You will also become proficient in modern computational tools and software, allowing you to effectively deploy these methods in real-world scenarios. While we place a strong emphasis on applications in Economics and the Social Sciences, the knowledge you gain here has broad relevance, and we will showcase examples from various fields and disciplines such as Biomedicine.
By the end of this course, you will have a deep understanding of statistical machine-learning methods and their applications. You will be well-equipped to tackle complex data analysis tasks and make informed decisions in various fields.
ONLINE | |
Regular Fee | 1300 € |
Reduced Fee | 775 € |
10% early-bird discount applies to payments made on or before February 13, 2024 at 23:59 (CET)
ONLINE | |
Regular Fee | 1300 € |
Reduced Fee | 775 € |
10% early-bird discount applies to payments made on or before February 13, 2024 at 23:59 (CET)
ONLINE | |
Regular Fee | 1300 € |
Reduced Fee | 775 € |
10% early-bird discount applies to payments made on or before February 13, 2024 at 23:59 (CET)
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