Objective

Optimization problems involve either a single target quantity of interest or several (potentially conflicting) targets that need to be considered simultaneously.
BayBE uses the concept of an Objective to allow the user to control how these different types of scenarios are handled.

Note

We are actively working on adding more objective types for multiple targets.

SingleTargetObjective

The need to optimize a single Target is the most basic type of situation one can encounter in experimental design. In this scenario, the fact that only one target shall be considered in the design is communicated to BayBE by wrapping the target into a SingleTargetObjective:

from baybe.targets import NumericalTarget
from baybe.objectives import SingleTargetObjective

target = NumericalTarget(name="Yield", mode="MAX")
objective = SingleTargetObjective(target)

In fact, the role of the SingleTargetObjective is to merely signal the absence of other Targets in the optimization problem. Because this fairly trivial conversion step requires no additional user configuration, we provide a convenience constructor for it:

Convenience construction and implicit conversion

  • The conversion from a single Target to a SingleTargetObjective describes a one-to-one relationship and can be triggered directly from the corresponding target object:

    objective = target.to_objective()
    
  • Also, other class constructors that expect an Objective object (such as Campaigns) will happily accept individual Targets instead and apply the necessary conversion behind the scenes.

DesirabilityObjective

The DesirabilityObjective enables the combination of multiple targets via scalarization into a single numerical value (commonly referred to as the overall desirability), a method also utilized in classical DOE.

Mandatory target bounds

Since measurements of different targets can vary arbitrarily in scale, all targets passed to a DesirabilityObjective must be normalizable to enable meaningful combination into desirability values. This requires that all provided targets must have bounds specified (see target user guide). If provided, the necessary normalization is taken care of automatically. Otherwise, an error will be thrown.

Besides the list of targets to be scalarized, this objective type takes two additional optional parameters that let us control its behavior:

  • weights: Specifies the relative importance of the targets in the form of a sequence of positive numbers, one for each target considered.
    Note: BayBE automatically normalizes the weights, so only their relative scales matter.

  • scalarizer: Specifies the scalarization function to be used for combining the normalized target values. The choices are MEAN and GEOM_MEAN, referring to the arithmetic and geometric mean, respectively.

The definitions of the scalarizers are as follows, where \(\{t_i\}\) enumerate the normalized target measurements of single experiment and \(\{w_i\}\) are the corresponding target weights:

\[\begin{split} \text{MEAN} &= \frac{1}{\sum w_i}\sum_{i} w_i \cdot t_i \\ \text{GEOM_MEAN} &= \left( \prod_i t_i^{w_i} \right)^{1/\sum w_i} \end{split}\]

In the example below, we consider three different targets (all associated with a different goal) and give twice as much importance to the first target relative to each of the other two:

from baybe.targets import NumericalTarget
from baybe.objectives import DesirabilityObjective

target_1 = NumericalTarget(name="t_1", mode="MIN", bounds=(0, 100))
target_2 = NumericalTarget(name="t_2", mode="MIN", bounds=(0, 100))
target_3 = NumericalTarget(name="t_3", mode="MATCH", bounds=(40, 60))
objective = DesirabilityObjective(
    targets=[target_1, target_2, target_3],
    weights=[2.0, 1.0, 1.0],  # optional (by default, all weights are equal)
    scalarizer="GEOM_MEAN",  # optional
)

For a complete example demonstrating desirability mode, see here.