Estimating psychological networks for the measurement of organizational climate
This groundbreaking project aims to introduce how the psychological networks technique can be applied to the investigation of organizational climate through the mutual interactions among its dimensions. A dataset comprised of 1,053,322 workers from 160 companies is being used for this study. Even though the research on organizational psychology typically makes use of nonexperimental designs, psychological networks may suggest potential causal structures in a pathway. For example, workers might not rely on the organisational leadership, which in turn will impinge on the team morale and consequently increase turnover intentions. This causal structure indicates that we would be able to predict turnover intentions by knowing the attitudes towards the leadership that could lead a worker to leave his or her organization. Nonetheless, we can also predict turnover intentions from team morale, making the knowledge on the attitudes towards leadership no longer necessary for the prediction of turnover intentions.
Should I stay or should I go? Predicting intentions to leave the organisation using machine learning algorithms
This study, in partnership with the University of Cambridge, aims to develop a machine learning based application to calculate the risk of leaving an organisation taking into account the interactions among different factors, such as personality traits, decision-making style, financial situation, health status, cognitive processes, among others. Data was collected online via Twitter and Multidimensional Item Response Theory will be combined with a machine learning algorithm (XGBoost algorithm) to predict the intentions to leave the organisation. This study can help companies to work beyond their turnover rates, mainly on the analyses of their talented employees with a stronger intention to leave the organization, and then create new measures aimed at worker retention. Moreover, it may provide insights into the field of organizational behaviour and further contribute to the development of this topic and its measurement.