Robust inference for the Cluster Weighted Model requires the specification of a few hyper-parameters. Their role is crucial for increasing the quality of the estimators, while arbitrary decisions about their value could severely hamper inferential results. To guide the user in the delicate choice of such parameters, a monitoring approach has been introduced in the recent literature, yielding an adaptive method. The approach is here exemplified, via the analysis of a dataset on the effect of punishment regimes on crime rates.
Cappozzo, A., Garcia-Escudero, L., Greselin, F., Mayo-Iscar, A., Monitoring Tools in Robust CWM for the Analysis of Crime Data, Building Bridges between Soft and Statistical Methodologies for Data Science, Springer, Cham 2023 1433: 65-72. 10.1007/978-3-031-15509-3_9 [https://hdl.handle.net/10807/309187]
Monitoring Tools in Robust CWM for the Analysis of Crime Data
Cappozzo, Andrea;
2023
Abstract
Robust inference for the Cluster Weighted Model requires the specification of a few hyper-parameters. Their role is crucial for increasing the quality of the estimators, while arbitrary decisions about their value could severely hamper inferential results. To guide the user in the delicate choice of such parameters, a monitoring approach has been introduced in the recent literature, yielding an adaptive method. The approach is here exemplified, via the analysis of a dataset on the effect of punishment regimes on crime rates.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.



