LeanMachineLearning exposition

Learning.evalEnv🔗

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Minimal Lean file

evalEnv🔗

DefinitionLearning.evalEnv

The evaluation environment where the feedback is given by evaluating a fixed measurable function f at the chosen action.

🔗def
Learning.evalEnv.{u_1, u_2} {𝓐 : Type u_1} {𝓨 : Type u_2} {m𝓐 : MeasurableSpace 𝓐} {m𝓨 : MeasurableSpace 𝓨} (f : 𝓐 𝓨) (hf : Measurable f) : Environment 𝓐 𝓨
Learning.evalEnv.{u_1, u_2} {𝓐 : Type u_1} {𝓨 : Type u_2} {m𝓐 : MeasurableSpace 𝓐} {m𝓨 : MeasurableSpace 𝓨} (f : 𝓐 𝓨) (hf : Measurable f) : Environment 𝓐 𝓨

Code

noncomputable def evalEnv (f : 𝓐 → 𝓨) (hf : Measurable f) := onlineEvalEnv (fun _ ↦ f) (fun _ ↦ hf)
Type uses (1)
Body uses (1)
Used by (9)

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Dependency graph

Type dependencies (1)

Environment🔗

StructureLearning.Environment

A stochastic environment.

🔗structure
Learning.Environment.{u_4, u_5} (𝓐 : Type u_4) (𝓨 : Type u_5) [MeasurableSpace 𝓐] [MeasurableSpace 𝓨] : Type (max u_4 u_5)
Learning.Environment.{u_4, u_5} (𝓐 : Type u_4) (𝓨 : Type u_5) [MeasurableSpace 𝓐] [MeasurableSpace 𝓨] : Type (max u_4 u_5)

Code

structure Environment (𝓐 𝓨 : Type*) [MeasurableSpace 𝓐] [MeasurableSpace 𝓨] where
  /-- Distribution of the next observation as function of the past history. -/
  feedback : (n : ℕ) → Kernel ((Iic n → 𝓐 × 𝓨) × 𝓐) 𝓨
  /-- The feedback kernels are Markov kernels. -/
  [h_feedback : ∀ n, IsMarkovKernel (feedback n)]
  /-- Distribution of the first observation given the first action. -/
  ν0 : Kernel 𝓐 𝓨
  /-- The initial observation kernel is a Markov kernel. -/
  [hp0 : IsMarkovKernel ν0]
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All dependencies, transitively (2)

obliviousEnv🔗

DefinitionLearning.obliviousEnv

An oblivious environment, in which the distribution of the next feedback depends only on the last action, but in a possibly time-dependent manner.

🔗def
Learning.obliviousEnv.{u_1, u_2} {𝓐 : Type u_1} {𝓨 : Type u_2} {m𝓐 : MeasurableSpace 𝓐} {m𝓨 : MeasurableSpace 𝓨} (ν : ProbabilityTheory.Kernel 𝓐 𝓨) [ (n : ), ProbabilityTheory.IsMarkovKernel (ν n)] : Environment 𝓐 𝓨
Learning.obliviousEnv.{u_1, u_2} {𝓐 : Type u_1} {𝓨 : Type u_2} {m𝓐 : MeasurableSpace 𝓐} {m𝓨 : MeasurableSpace 𝓨} (ν : ProbabilityTheory.Kernel 𝓐 𝓨) [ (n : ), ProbabilityTheory.IsMarkovKernel (ν n)] : Environment 𝓐 𝓨

Code

def obliviousEnv (ν : ℕ → Kernel 𝓐 𝓨) [∀ n, IsMarkovKernel (ν n)] : Environment 𝓐 𝓨 where
  feedback n := (ν (n + 1)).prodMkLeft _
  ν0 := ν 0
Type uses (1)
Used by (10)

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onlineEvalEnv🔗

DefinitionLearning.onlineEvalEnv

The evaluation environment where the feedback is given by evaluating a fixed measurable function f at the chosen action.

🔗def
Learning.onlineEvalEnv.{u_1, u_2} {𝓐 : Type u_1} {𝓨 : Type u_2} {m𝓐 : MeasurableSpace 𝓐} {m𝓨 : MeasurableSpace 𝓨} (g : 𝓐 𝓨) (hg : (n : ), Measurable (g n)) : Environment 𝓐 𝓨
Learning.onlineEvalEnv.{u_1, u_2} {𝓐 : Type u_1} {𝓨 : Type u_2} {m𝓐 : MeasurableSpace 𝓐} {m𝓨 : MeasurableSpace 𝓨} (g : 𝓐 𝓨) (hg : (n : ), Measurable (g n)) : Environment 𝓐 𝓨

Code

noncomputable def onlineEvalEnv (g : ℕ → 𝓐 → 𝓨) (hg : ∀ n, Measurable (g n)) :=
  obliviousEnv (fun n ↦ Kernel.deterministic (g n) (hg n))
Type uses (1)
Body uses (1)
Used by (11)

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