Chapter Given N forecasting models, what to do?

This work evaluates the forecasting performances of different models using data on Italian unemployment and employment rates over the years 2004-2022 at the monthly frequency. The logic of this work is inspired by the series of M-Competitions, i.e. the tradition of competitions organized to test the...

Description complète

Enregistré dans:
Détails bibliographiques
Auteur principal: Culotta, Fabrizio (auth)
Format: Électronique Chapitre de livre
Langue:anglais
Publié: Florence Firenze University Press, Genova University Press 2023
Collection:Proceedings e report 134
Sujets:
Accès en ligne:OAPEN Library: download the publication
OAPEN Library: description of the publication
Tags: Ajouter un tag
Pas de tags, Soyez le premier à ajouter un tag!

MARC

LEADER 00000naaaa2200000uu 4500
001 oapen_2024_20_500_12657_74927
005 20230803
003 oapen
006 m o d
007 cr|mn|---annan
008 20230803s2023 xx |||||o ||| 0|eng d
020 |a 979-12-215-0106-3.55 
020 |a 9791221501063 
040 |a oapen  |c oapen 
024 7 |a 10.36253/979-12-215-0106-3.55  |c doi 
041 0 |a eng 
042 |a dc 
072 7 |a J  |2 bicssc 
100 1 |a Culotta, Fabrizio  |4 auth 
245 1 0 |a Chapter Given N forecasting models, what to do? 
260 |a Florence  |b Firenze University Press, Genova University Press  |c 2023 
300 |a 1 electronic resource (6 p.) 
336 |a text  |b txt  |2 rdacontent 
337 |a computer  |b c  |2 rdamedia 
338 |a online resource  |b cr  |2 rdacarrier 
490 1 |a Proceedings e report  |v 134 
506 0 |a Open Access  |2 star  |f Unrestricted online access 
520 |a This work evaluates the forecasting performances of different models using data on Italian unemployment and employment rates over the years 2004-2022 at the monthly frequency. The logic of this work is inspired by the series of M-Competitions, i.e. the tradition of competitions organized to test the forecasting performances of classical and innovative models. Given N competing models, only one winner is selected. The types of forecasting models range from the Exponential Smoothing family to ARIMA-like models, to their hybridization, to machine learning and neural network engines. Model combinations through various ensemble techniques are also considered. Once the observational period is split between the training and test set, the estimated forecasting models are ranked in terms of fitting on the training set and in terms of their forecast accuracy on the test set. Results confirm that it does not exist yet a single superior universal model. On the contrary, the ranking of different forecasting models is specific to the adopted training set. Secondly, results confirm that performances of machine learning and neural network models offer satisfactory alternatives and complementarities to the traditional models like ARIMA and Exponential Smoothing. Finally, the results stress the importance of model ensemble techniques as a solution to model uncertainty as well as a tool to improve forecast accuracy. The flexibility provided by a rich set of different forecasting models, and the possibility of combining them, together represent an advantage for decision-makers often constrained to adopt solely pure, not-combined, forecasting models. Overall, this work can represent a first step toward the construction of a semi-automatic forecasting algorithm, which has become an essential tool for both trained and untrained eyes in an era of data-driven decision-making. 
540 |a Creative Commons  |f https://creativecommons.org/licenses/by/4.0/  |2 cc  |4 https://creativecommons.org/licenses/by/4.0/ 
546 |a English 
650 7 |a Society & social sciences  |2 bicssc 
653 |a Forecasting performances 
653 |a M-Competitions 
653 |a Model types 
653 |a Model ensemble techniques 
653 |a Decision-making and forecast accuracy 
773 1 0 |t ASA 2022 Data-Driven Decision Making  |7 nnaa  |o OAPEN Library UUID: 863aa499-dbee-4191-9a14-3b5d5ef9e635 
856 4 0 |a www.oapen.org  |u https://library.oapen.org/bitstream/id/5f9db7db-91f0-493d-bf7c-910b119e2bbe/9791221501063-55.pdf  |7 0  |z OAPEN Library: download the publication 
856 4 0 |a www.oapen.org  |u https://library.oapen.org/handle/20.500.12657/74927  |7 0  |z OAPEN Library: description of the publication