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Hierarchical knowledge gradient for sequential sampling
Martijn R.K. Mes
, Warren Buckler Powell
, Peter I. Frazier
Operations Research & Financial Engineering
High Meadows Environmental Institute
Research output
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Contribution to journal
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Article
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peer-review
24
Scopus citations
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Keyphrases
Knowledge Gradient
100%
Sequential Sampling
100%
Hierarchical Knowledge
100%
Sampling Policy
66%
Finite Sets
33%
Computational Issues
33%
Aggregation Behavior
33%
Globally Optimal
33%
Number of Alternatives
33%
Single Measurement
33%
Knowledge Gradient Policy
33%
Hierarchical Aggregation
33%
Discrete Global Optimization
33%
Global Rankings
33%
Aggregation Function
33%
Categorical Attributes
33%
Multidimensional Vector
33%
Optimal Alternative
33%
Numerical Attributes
33%
Bayesian Probability Model
33%
Mathematics
Finite Set
100%
Bayesian Probability
100%
Probability Model
100%
Aggregation Function
100%
Engineering
Single Measurement
100%
Finite Set
100%
Computer Science
Global Optimization
100%
Aggregation Function
100%
Economics, Econometrics and Finance
Bayesian
100%