Overview

  • Using state of the art Neural Acquistion process(NAP) as a surrogate for black box functions

  • Using preference model trained on experts’ feedback to enable scoring preference of the points to query next

  • Suggesting multiple candidate points to human(expert), from which one to be selected as next point to be queried

  • A newly designed Acquistion Function combines the preference model and the NAP to suggest one candidate point

  • The other candidate points are chosen by desired well-known statistical or Monte-carlo based Acquistion functions such as EI, MES, …

  • Modular design, i.e users can utilize pre-defined modules for preference models, or build their own

  • Explainability, the framework explains each of the candidate points so that human in the loop can make better decsion for selecting the next point