Sign in

Learning Decisions Offline from Censored Observations with ε-insensitive Operational Costs

By Minxia Chen and others
Many important managerial decisions are made based on censored observations. Making decisions without adequately handling the censoring leads to inferior outcomes. We investigate the data-driven decision-making problem with an offline dataset containing the feature data and the censored historical data of the variable of interest without the censoring indicators. Without... Show more
August 14, 2024
=
0
Loading PDF…
Loading full text...
Similar articles
Loading recommendations...
=
0
x1
Learning Decisions Offline from Censored Observations with ε-insensitive Operational Costs
Click on play to start listening