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Soumya Sen, De Liu, and Alok Gupta

The field of analytics is typically built on four pillars: Descriptive Analytics, Predictive Analytics, Causal Analytics, and Prescriptive Analytics. Descriptive analytics (e.g., visualization, BI) deal with the exploration of data for patterns, predictive analytics (e.g., data mining, time-series forecasting) identifies what can happen next, causal modeling establishes causation, and prescriptive analytics help with formulating decisions. This specialization focuses on the Prescriptive Analytics (the final pillar). This specialization will review basic predictive modeling techniques that can be used to estimate values of relevant parameters, and then use optimization and simulation techniques to formulate decisions based on these parameter values and situational constraints. The specialization will teach how to model and solve decision-making problems using predictive models, linear optimization, and simulation methods.

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What's inside

Four courses

Introduction to Predictive Modeling

(0 hours)
Introduction to Predictive Modeling is the first course in the University of Minnesota’s Analytics for Decision Making specialization. This course will introduce you to the concepts, processes, and applications of predictive modeling, with a focus on linear regression and time series forecasting models and their practical use in Microsoft Excel.

Optimization for Decision Making

(0 hours)
In this data-driven world, companies need to know the "best" course of action. Optimization is the most important method in the prescriptive analytics toolbox. This course introduces students to the basic principles of linear optimization for decision-making.

Advanced Models for Decision Making

(0 hours)
Business analysts need to be able to prescribe optimal solutions to problems. This course is designed to connect data and models to real-world decision-making scenarios in various industries, such as finance, supply chain, and human resource management.

Simulation Models for Decision Making

(0 hours)
This course introduces simulation techniques for solving business problems. It covers uncertainties using probability and stepwise thinking, and advanced Excel techniques for modeling and executing simulation models. Students will learn to develop advanced simulation models to explore business environments and outcomes.

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