Earth Economics (Coursera)

Earth Economics (Coursera)

After this course you will be an Earth Economist that can provide evidence-based advise on the best global policy. As an Earth Economist you will better understand the behavior and advice of economists, have become a better economist yourself and know where to find Earth's data and how to analyze these world observations. Our planet is too important: we need you to get engaged!

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Earth Economics offers a completely new angle to policy analysis by its focus on the truly global level and its empirical orientation on very recent data. Sustainability (environmental and related to the UN's SDGs), equality and heterodox (that is: non mainstream) views on the economy are important for an Earth Economist. Taking stock of emerging planet data and analyzing policies during and following the Global Crisis, Earth Economics provides both a topical introduction into basic economic tools and concepts as well as insights in highly relevant problems and recent developments in planet production, growth and governance. An important issue is the provision of global public goods. Earth Economics highlights the importance of the United Nations, International Monetary Fund, the World Health Organization and the World Trade Organization.

What You Will Learn

  • Become a good economist that understands under which conditions an economic theory applies and can be used to inform evidence-based policy making

Syllabus

WEEK 1
Earth economics: a new and necessary approach
Earth Economics offers a completely new angle to policy analyses by its focus on the truly global level and its empirical orientation on very recent data. Each week offers "Reflections on the economic impact of the Corona virus" (COVID-19) allowing you to apply what you have learned. But we have to look beyond the pandamic. Sustainability (environmental and related to the UN's SDGs), equality and hetrodox (non mainstream) views on the economy are important for an Earth Economist. Taking stock of emerging planet data and analyzing policies during and following the Global Crisis, Earth economics provides both a topical introduction into basic macroeconomic tools and concepts and insights in highly relevant problems and recent developments in planet production, growth and governance. You will also better understand the behavior and advice of economists, become a better economist and know where to find Earth's data and how to analyse these world observations. Our planet is too important: we need you to get engaged!

WEEK 2
Accounting for fluctuations in the Earth economy
This set of three lectures provides you with a good introduction to the most often used data sources for the Earth Economy and their strengths and weaknesses. We study which activities generate value added and discuss both the merits and the drawbacks of the concept of Gross Planet Product (GPP). We will get a good idea about changes in the economic condition of our planet, both from business cycles and from changes in the world's unemployment rate. You will discover that economists are too optimistic about the reliability of their data but also that economist in the past have been too pessimistic about the development of the world economy.

WEEK 3
Investment and Saving
We start with a discussion of the equilibrium concept and relate (in)stability to policy relevant questions such as (over)population, global warming and hyperinflation. We encounter comparative statics and scenario analysis. We discuss investment, saving and consumption and relate these concepts to the development of the Earth economy. At the end of these three lectures you will be able to build a model of the Earth economy and use that model to analyze the Great Recession of 2008/0. That is pretty cool.

WEEK 4
Government and the Earth Economy
In this Module we take a closer look at government. We study government spending and taxation and will discover any instances where government expenditures and receipts move in the same direction. An important issue is the development of public debt that has reached unprecedented levels for our planet. Finally we study money and its functions in the Earth Economy.

WEEK 5
Money and Earth Economic Equilibrium
In this module we look at the money market and the role and impact of monetary policy. We start with the liquidity trap where interest rates are so low that monetary policy becomes impotent. Next we relate the money market and the product market in the so-called ISLM model. We use this model to shed light on economic debates about the role of government.

WEEK 6
Long Run Challenges
Earth Economics is especially relevant when we take a look at the long run because it enables us to analyse sustainability of economic processes and to understand how productivity is key for economic development. We will discover why Earth Economics is important for monitoring and understanding Sustainable Development Goals from a truly global perspective

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