Integration of Judgmental and Statistical Approaches to Forecasting

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When it comes to forecasting, it's important to know how good your forecasting is and if there are ways to improve it. This work focuses on finding reliable and informative indicators of forecasting performance and on how to improve forecasts with the use of judgment. Chapter 2 explores limitations of various error measures and introduces a new class of metrics (AvgRel-metrics) for measuring forecasting performance using the following rules: i) relative indicators are averaged across series using the weighted geometric mean, ii) an indicator used to evaluate forecasts must correspond to the loss function used to optimize forecasts. The AvgRelMSE and AvgRelMAE metrics are proposed to measure accuracy under quadratic and linear loss, respectively, and the AvgRelAME to measure bias. Boxplots of logs of relative indicators are used to visualize distributions. Chapters 3 and 4 look at models for handling unaided judgment & judgmental adjustments. In particular, this work introduces advanced models based on using panel data and Bayesian analysis. Chapter 5 proposes a novel approach allowing to incorporate judgment into a joint model and update forecasts as new data becomes available.

Autorentext

Andrey has a rich experience of working as a data scientist/researcher on various projects, including credit scoring and the development of commercial software for business forecasting. He's a Microsoft Certified Solution Developer, has CSc. and Ph.D. degrees. His interests involve dataviz tools, error metrics, combining judgment and stat. methods.


Klappentext

When it comes to forecasting, it's important to know how good your forecasting is and if there are ways to improve it. This work focuses on finding reliable and informative indicators of forecasting performance and on how to improve forecasts with the use of judgment. Chapter 2 explores limitations of various error measures and introduces a new class of metrics (AvgRel-metrics) for measuring forecasting performance using the following rules: i) relative indicators are averaged across series using the weighted geometric mean, ii) an indicator used to evaluate forecasts must correspond to the loss function used to optimize forecasts. The AvgRelMSE and AvgRelMAE metrics are proposed to measure accuracy under quadratic and linear loss, respectively, and the AvgRelAME to measure bias. Boxplots of logs of relative indicators are used to visualize distributions. Chapters 3 and 4 look at models for handling unaided judgment & judgmental adjustments. In particular, this work introduces advanced models based on using panel data and Bayesian analysis. Chapter 5 proposes a novel approach allowing to incorporate judgment into a joint model and update forecasts as new data becomes available.

Weitere Informationen

  • Allgemeine Informationen
    • GTIN 09786203471229
    • Genre Maths
    • Anzahl Seiten 308
    • Herausgeber LAP LAMBERT Academic Publishing
    • Größe H220mm x B150mm x T19mm
    • Jahr 2021
    • EAN 9786203471229
    • Format Kartonierter Einband
    • ISBN 6203471224
    • Veröffentlichung 22.03.2021
    • Titel Integration of Judgmental and Statistical Approaches to Forecasting
    • Autor Andrey Davydenko
    • Untertitel Error metrics, visual tools, handling unaided judgment, analysis of judgmental adjustments, joint Bayesian modelling
    • Gewicht 477g
    • Sprache Englisch

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