economic forecasts
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2022 ◽  
Vol 14 (1) ◽  
pp. 38-59
Author(s):  
Paul Beaudry ◽  
Tim Willems

Analyzing International Monetary Fund (IMF) data, we find that overly optimistic growth expectations for a country induce economic contractions a few years later. To isolate the causal effect, we take an instrumental variable approach—exploiting randomness in the country allocation of IMF mission chiefs. We first document that IMF mission chiefs differ in their individual degrees of forecast optimism, yielding quasi-experimental variation in the degree of forecast optimism at the country level. The mechanism appears to run through excessive accumulation of debt (public and private). Our findings illustrate the potency of unjustified optimism and underline the importance of basing economic forecasts upon realistic medium-term prospects. (JEL C53, E23, E27, E32, F33, H63)


Mathematics ◽  
2021 ◽  
Vol 9 (19) ◽  
pp. 2517
Author(s):  
Bogdan Oancea ◽  
Richard Pospíšil ◽  
Marius Nicolae Jula ◽  
Cosmin-Ionuț Imbrișcă

Even though forecasting methods have advanced in the last few decades, economists still face a simple question: which prediction method gives the most accurate results? Econometric forecasting methods can deal with different types of time series and have good results, but in specific cases, they may fail to provide accurate predictions. Recently, new techniques borrowed from the soft computing area were adopted for economic forecasting. Starting from the importance of economic forecasts, we present an experimental study where we compared the accuracy of some of the most used econometric forecasting methods, namely the simple exponential smoothing, Holt and ARIMA methods, with that of two new methods based on the concept of fuzzy time series. We used a set of time series extracted from the Eurostat database and the R software for all data processing. The results of the experiments show that despite not being fully superior to the econometric techniques, the fuzzy time series forecasting methods could be considered as an alternative for specific time series.


2021 ◽  
Author(s):  
Juan José Barrios ◽  
Julia Escobar ◽  
Janelle Leslie ◽  
Lucia Martin ◽  
Werner Peña

This paper presents machine learning models fitted to nowcast or predict quarterly GDP activity in real time for Belize and El Salvador. The initiative is part of the Inter-American Development Bank's (IDB) ongoing effort to develop timely economic monitoring tools following the shock of the Covid-19 pandemic. Nowcasting techniques offer an effective tool to fill the information gap between the end of a quarter and the official publication of macroeconomic indicators that are generally lagged by 60 to 90 days, by exploiting the availability of other indicators that are published more frequently. The results show that machine learning techniques can produce accurate quarterly GDP forecasts for two structurally different economies within economic contexts marked by extreme degrees of volatility and uncertainty at both the national and international levels. Because the calibration of nowcasting exercises is a dynamic process that is refined over time, at the IDB, we trust that this document will help support the ongoing work of the governments and statistical agencies of Belize and El Salvador in securing better economic forecasts to inform agile policy decisions.


Author(s):  
Maximilian Zurek

AbstractReal estate price growth affects credit risk for several reasons: it provides input for economic forecasts as it’s closely tied to economic growth; when used as collateral by banks, rising real estate prices may decrease both expected and actual losses; and banks may become less risk averse in lending practices in the presence of rising property prices. Therefore, we analyze these effects on loan portfolios’ estimated and realized risks on a local level. Using data of 390 German savings banks, however, we find that real estate prices have little or no impact on savings banks’ credit portfolio risk or risk precautions.


2021 ◽  
Vol 32 (5) ◽  
pp. 459-466
Author(s):  
A. A. Blokhin ◽  
R. V. Gridin

2021 ◽  
Vol 13 (17) ◽  
pp. 9593
Author(s):  
Carsten Juergens ◽  
Fabian M. Meyer-Heß ◽  
Marcus Goebel ◽  
Torsten Schmidt

Economic forecasts are an important instrument to judge the nation-wide economic situation. Such forecasts are mainly based on data from statistical offices. However, there is a time lag between the end of the reporting period and the release of the statistical data that arises for instance from the time needed to collect and process the data. To improve the forecasts by reducing the delay, it is of interest to find alternative data sources that provide information on economic activity without significant delays. Among others, satellite images are thought to assist here. This paper addresses the potential of earth observation imagery for short-term economic forecasts. The study is focused on the estimation of investments in the construction sector based on high resolution (HR) (10–20 m) and very high resolution (VHR) (0.3–0.5 m) images as well as on the estimation of investments in agricultural machinery based on orthophotos (0.1 m) simulating VHR satellite imagery. By applying machine learning it is possible to extract the objects of interest to a certain extent. For the detection of construction areas, VHR satellite images are much better suited than HR satellite images. VHR satellite images with a ground resolution of 30–50 cm are able to identify agricultural machinery. These results are promising and provide new and unconventional input for economic forecasting models.


2021 ◽  
Vol 27 (7) ◽  
pp. 1559-1580
Author(s):  
Aleksandr I. KARPUKHIN

Subject. This article provides a mathematical formulation of a slice-based forecast technique allowing a comprehensive assessment of future changes in the dynamics and structure of economic systems. The technique is based on an analysis and integration of a set of time series of heterogeneous indicators combined in a system logical algorithm of information synthesis called a slice. A slice forecast accuracy criterion is proposed as well. Objectives. Slice forecasts are designed to improve the quality and efficiency of economic forecasts. Methods. The slice forecast technique is based on a slice technology as a set of methods to collect, process, analyze, and synthesize information and knowledge. Results. The article presents a calculation based on eight series of macroeconomic indicators that characterize the development of the economy of the Russian Federation for the period from 2000 to 2021. It shows new possibilities of analysis and description of economic systems, cycles and crisis phenomena. Conclusions. The results obtained show that the slice technique helps solve a number of urgent problems to improve the quality of foreseeing future changes.


2021 ◽  
Vol 13 (13) ◽  
pp. 2618
Author(s):  
Carsten Juergens ◽  
M. Fabian Meyer-Heß

This contribution focuses on the utilization of very-high-resolution (VHR) images to identify construction areas and their temporal changes aiming to estimate the investment in construction as a basis for economic forecasts. Triggered by the need to improve macroeconomic forecasts and reduce their time intervals, the idea arose to use frequently available information derived from satellite imagery. For the improvement of macroeconomic forecasts, the period to detect changes between two points in time needs to be rather short because early identification of such investments is beneficial. Therefore, in this study, it is of interest to identify and quantify new construction areas, which will turn into build-up areas later. A multiresolution segmentation followed by a kNN classification is applied to WorldView images from an area around the southern part of Berlin, Germany. Specific material compositions of construction areas result in typical classification patterns different from other land cover classes. A GIS-based analysis follows to extract specific temporal “patterns of life” in construction areas. With the early identification of such patterns of life, it is possible to predict construction areas that will turn into real estate later. This information serves as an input for macroeconomic forecasts to support quicker forecasts in future.


2021 ◽  
Vol 4 ◽  
Author(s):  
Jan-Alexander Posth ◽  
Piotr Kotlarz ◽  
Branka Hadji Misheva ◽  
Joerg Osterrieder ◽  
Peter Schwendner

The central research question to answer in this study is whether the AI methodology of Self-Play can be applied to financial markets. In typical use-cases of Self-Play, two AI agents play against each other in a particular game, e.g., chess or Go. By repeatedly playing the game, they learn its rules as well as possible winning strategies. When considering financial markets, however, we usually have one player—the trader—that does not face one individual adversary but competes against a vast universe of other market participants. Furthermore, the optimal behaviour in financial markets is not described via a winning strategy, but via the objective of maximising profits while managing risks appropriately. Lastly, data issues cause additional challenges, since, in finance, they are quite often incomplete, noisy and difficult to obtain. We will show that academic research using Self-Play has mostly not focused on finance, and if it has, it was usually restricted to stock markets, not considering the large FX, commodities and bond markets. Despite those challenges, we see enormous potential of applying self-play concepts and algorithms to financial markets and economic forecasts.


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