Author:
Bossi Francesco,Di Gruttola Francesco,Mastrogiorgio Antonio,D'Arcangelo Sonia,Lattanzi Nicola,Malizia Andrea P.,Ricciardi Emiliano
Abstract
Internal mobility often depends on predicting future job satisfaction, for such employees subject to internal mobility programs. In this study, we compared the predictive power of different classes of models, i.e., (i) traditional Structural Equation Modeling (SEM), with two families of Machine Learning algorithms: (ii) regressors, specifically least absolute shrinkage and selection operator (Lasso) for feature selection and (iii) classifiers, specifically Bagging meta-model with thek-nearest neighbors algorithm (k-NN) as a base estimator. Our aim is to investigate which method better predicts job satisfaction for 348 employees (with operational duties) and 35 supervisors in the training set, and 79 employees in the test set, all subject to internal mobility programs in a large Italian banking group. Results showed average predictive power for SEM and Baggingk-NN (accuracy between 61 and 66%; F1 scores between 0.51 and 0.73). Both SEM and Lasso algorithms highlighted the predictive power of resistance to change and orientation to relation in all models, together with other personality and motivation variables in different models. Theoretical implications are discussed for using these variables in predicting successful job relocation in internal mobility programs. Moreover, these results showed how crucial it is to compare methods coming from different research traditions in predictive Human Resources analytics.
Funder
Intesa Sanpaolo Innovation Center
Reference85 articles.
1. A new look at the statistical model identification;Akaike;IEEE Trans. Automat. Contr.,1974
2. Concurrent and predictive validity of the Motivational Orientation Test General Version (TOM-VG);Alessandri;Giornale Italiano di Psicologia,2011
3. International relocation mobility readiness and its antecedents;Andresen,2015
4. Job satisfaction: a literature review;Aziri;Manag. Res. Pract.,2011
Cited by
5 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献