Market Forecasts and Client Behavioral Data: Towards Finding Adequate Model Complexity

Using efficient marketing strategies for understanding and improving the relation between vendors and clients rests upon analyzing and forecasting a wealth of data which appear at different time resolutions and at levels of aggregation. More often than not, market success does not have consistent ex...

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Main Authors: Deac Dan Stelian, Schebesch Klaus Bruno
Format: Article
Language:English
Published: Vasile Goldis University Press 2018-09-01
Series:Studia Universitatis Vasile Goldis Arad, Seria Stiinte Economice
Subjects:
Online Access:https://doi.org/10.2478/sues-2018-0015
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spelling doaj-bbc80f9db96d44e5be3ca77dd1dab3212021-09-05T14:02:06ZengVasile Goldis University PressStudia Universitatis Vasile Goldis Arad, Seria Stiinte Economice1584-23392285-30652018-09-01283507510.2478/sues-2018-0015Market Forecasts and Client Behavioral Data: Towards Finding Adequate Model ComplexityDeac Dan Stelian0Schebesch Klaus Bruno1Faculty of Economics, Engineering and Informatics, “Vasile Goldiș” Western University of Arad,Arad, RomaniaFaculty of Economics, Engineering and Informatics, “Vasile Goldiș” Western University of Arad,Arad, RomaniaUsing efficient marketing strategies for understanding and improving the relation between vendors and clients rests upon analyzing and forecasting a wealth of data which appear at different time resolutions and at levels of aggregation. More often than not, market success does not have consistent explanations in terms of a few independent influence factors. Indeed, it may be difficult to explain why certain products or services tend to sell well while others do not. The rather limited success of finding general explanations from which to draw specific conclusions good enough in order to generate forecasting models results in our proposal to use data driven models with no strong prior hypothesis concerning the nature of dependencies between potentially relevant variables. If the relations between the data are not purely random, then a general or flexible enough data driven model will eventually identify them. However, this may come at a high cost concerning computational resources and with the risk of overtraining. It may also preclude any useful on-line or real time applications of such models. In order to remedy this, we propose a modeling cycle which provides information about the adequacy of a model complexity class and which also highlights some nonstandard measures of expected model performance.https://doi.org/10.2478/sues-2018-0015aggregate market reactionindividual client behaviordata modelingdeep neural networksovertraining
collection DOAJ
language English
format Article
sources DOAJ
author Deac Dan Stelian
Schebesch Klaus Bruno
spellingShingle Deac Dan Stelian
Schebesch Klaus Bruno
Market Forecasts and Client Behavioral Data: Towards Finding Adequate Model Complexity
Studia Universitatis Vasile Goldis Arad, Seria Stiinte Economice
aggregate market reaction
individual client behavior
data modeling
deep neural networks
overtraining
author_facet Deac Dan Stelian
Schebesch Klaus Bruno
author_sort Deac Dan Stelian
title Market Forecasts and Client Behavioral Data: Towards Finding Adequate Model Complexity
title_short Market Forecasts and Client Behavioral Data: Towards Finding Adequate Model Complexity
title_full Market Forecasts and Client Behavioral Data: Towards Finding Adequate Model Complexity
title_fullStr Market Forecasts and Client Behavioral Data: Towards Finding Adequate Model Complexity
title_full_unstemmed Market Forecasts and Client Behavioral Data: Towards Finding Adequate Model Complexity
title_sort market forecasts and client behavioral data: towards finding adequate model complexity
publisher Vasile Goldis University Press
series Studia Universitatis Vasile Goldis Arad, Seria Stiinte Economice
issn 1584-2339
2285-3065
publishDate 2018-09-01
description Using efficient marketing strategies for understanding and improving the relation between vendors and clients rests upon analyzing and forecasting a wealth of data which appear at different time resolutions and at levels of aggregation. More often than not, market success does not have consistent explanations in terms of a few independent influence factors. Indeed, it may be difficult to explain why certain products or services tend to sell well while others do not. The rather limited success of finding general explanations from which to draw specific conclusions good enough in order to generate forecasting models results in our proposal to use data driven models with no strong prior hypothesis concerning the nature of dependencies between potentially relevant variables. If the relations between the data are not purely random, then a general or flexible enough data driven model will eventually identify them. However, this may come at a high cost concerning computational resources and with the risk of overtraining. It may also preclude any useful on-line or real time applications of such models. In order to remedy this, we propose a modeling cycle which provides information about the adequacy of a model complexity class and which also highlights some nonstandard measures of expected model performance.
topic aggregate market reaction
individual client behavior
data modeling
deep neural networks
overtraining
url https://doi.org/10.2478/sues-2018-0015
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