learn()
This commit is contained in:
@@ -16,6 +16,7 @@ function (kfn::kfn_1)(input::AbstractArray)
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#TODO time step forward
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if kfn.learningStage == [1]
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# reset learning params
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kfn.learningStage = [2]
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end
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d1, d2, d3 = size(input)
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@@ -271,6 +272,57 @@ function onForward(kfn_zit,
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end
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end
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# function onForward(kfn_zit,
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# zit,
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# wOut,
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# vt0,
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# vt1,
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# vth,
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# vRest,
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# zt1,
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# alpha,
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# phi,
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# epsilonRec,
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# refractoryCounter,
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# refractoryDuration,
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# gammaPd,
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# firingCounter)
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# d1, d2, d3, d4 = size(wOut)
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# zit .= reshape(kfn_zit, (d1, d2, 1, d4)) .* ones(size(wOut)...) # project zit into zit
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# for j in 1:d4, i in 1:d3 # compute along neurons axis of every batch
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# if view(refractoryCounter, :, :, i, j)[1] > 0 # neuron is inactive (in refractory period)
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# view(refractoryCounter, :, :, i, j)[1] -= 1
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# view(zt1, :, :, i, j)[1] = 0
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# view(vt1, :, :, i, j)[1] =
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# view(alpha, :, :, i, j)[1] * view(vt0, :, :, i, j)[1]
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# view(phi, :, :, i, j)[1] = 0.0
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# view(epsilonRec, :, :, i, j) .= view(alpha, :, :, i, j)[1] .*
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# view(epsilonRec, :, :, i, j)
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# else # neuron is active
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# view(vt1, :, :, i, j)[1] =
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# (view(alpha, :, :, i, j)[1] * view(vt0,:, :, i, j)[1]) +
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# sum(view(zit, :, :, i, j) .* view(wOut, :, :, i, j))
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# if view(vt1, :, :, i, j)[1] > view(vth, :, :, i, j)[1]
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# view(zt1, :, :, i, j)[1] = 1
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# view(refractoryCounter, :, :, i, j)[1] =
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# view(refractoryDuration, :, :, i, j)[1]
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# view(firingCounter, :, :, i, j)[1] += 1
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# view(vt1, :, :, i, j)[1] = view(vRest, :, :, i, j)[1]
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# else
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# view(zt1, :, :, i, j)[1] = 0
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# end
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# # there is a difference from alif formula
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# view(phi, :, :, i, j)[1] =
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# (view(gammaPd, :, :, i, j)[1] / view(vth, :, :, i, j)[1]) *
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# max(0, 1 - ((view(vt1, :, :, i, j)[1] - view(vth, :, :, i, j)[1]) /
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# view(vth, :, :, i, j)[1]))
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# view(epsilonRec, :, :, i, j) .=
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# (view(alpha, :, :, i, j)[1] .* view(epsilonRec, :, :, i, j)) +
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# view(zit, :, :, i, j)
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# end
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# end
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# end
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151
src/learn.jl
151
src/learn.jl
@@ -9,7 +9,7 @@ using ..type, ..snnUtil
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#------------------------------------------------------------------------------------------------100
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function compute_paramsChange!(kfn::kfn_1, modelError, outputError)
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#WORKING
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lifComputeParamsChange!(kfn.lif_phi,
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kfn.lif_epsilonRec,
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@@ -29,36 +29,14 @@ function compute_paramsChange!(kfn::kfn_1, modelError, outputError)
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kfn.on_wOut,
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modelError)
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onComputeParamsChange!(kfn.on_phi,
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kfn.on_epsilonRec,
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kfn.on_eta,
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kfn.on_wOutChange,
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outputError)
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error("debug end -> kfn compute_paramsChange! $(Dates.now())")
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# Threads.@threads for n in kfn.neuronsArray
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# # for n in kfn.neuronsArray
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# if typeof(n) <: computeNeuron
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# wOut = Int64[]
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# for oN in kfn.outputNeuronsArray
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# wIndex = findall(isequal.(oN.subscriptionList, n.id))
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# if length(wIndex) != 0
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# push!(wOut, wIndex[1])
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# end
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# end
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# if length(wOut) != 0
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# compute_wRecChange!(n, wOut, modelError)
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# # compute_alphaChange!(n, modelError)
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# compute_firingRateError!(n, kfn.kfnParams[:neuronFiringRateTarget],
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# kfn.kfnParams[:totalComputeNeuron])
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# end
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# end
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# end
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# for oN in kfn.outputNeuronsArray
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# compute_wRecChange!(oN, outputError[oN.id])
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# # compute_alphaChaZnge!(oN, outputError[oN.id])
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# end
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end
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function lifComputeParamsChange!( phi,
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@@ -77,15 +55,16 @@ function lifComputeParamsChange!( phi,
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# how much error of this neuron 1-spike causing each output neuron's error
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view(wRecChange, :, :, i, j) .+= (-1 * view(eta, :, :, i, j)[1]) .*
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# eRec
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( (view(phi, :, :, i, j)[1] .* view(epsilonRec, :, :, i, j)) .*
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# nError a.k.a. learning signal
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(view(modelError, :, j)[1] .*
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# RSNN neuron's total wOut weight (neuron synaptic subscription .* wOutSum)
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sum(GeneralUtils.isNotEqual.(view(wRec, :, :, i, j), 0) .*
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view(wOutSum, :, :, j))
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)
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# eRec
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(
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(view(phi, :, :, i, j)[1] .* view(epsilonRec, :, :, i, j)) .*
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# nError a.k.a. learning signal
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(
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view(modelError, :, j)[1] * # dopamine concept, this neuron receive summed error signal
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# RSNN neuron's total wOut weight (neuron synaptic subscription .* wOutSum)
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view(wOutSum, :, :, j)[i]
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)
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)
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end
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end
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@@ -108,31 +87,101 @@ function alifComputeParamsChange!( phi,
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# how much error of this neuron 1-spike causing each output neuron's error
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view(wRecChange, :, :, i, j) .+= (-1 * view(eta, :, :, i, j)[1]) .*
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# eRec
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(
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# eRec_v
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(view(phi, :, :, i, j)[1] .* view(epsilonRec, :, :, i, j)) .+
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# eRec_a
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((view(phi, :, :, i, j)[1] * view(beta, :, :, i, j)[1]) .*
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view(epsilonRecA, :, :, i, j))
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) .*
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# nError a.k.a. learning signal
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(
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view(modelError, :, j)[1] .*
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# RSNN neuron's total wOut weight (neuron synaptic subscription .* wOutSum)
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sum(GeneralUtils.isNotEqual.(view(wRec, :, :, i, j), 0) .*
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view(wOutSum, :, :, j))
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)
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# eRec
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(
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# eRec_v
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(view(phi, :, :, i, j)[1] .* view(epsilonRec, :, :, i, j)) .+
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# eRec_a
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((view(phi, :, :, i, j)[1] * view(beta, :, :, i, j)[1]) .*
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view(epsilonRecA, :, :, i, j))
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) .*
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# nError a.k.a. learning signal
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(
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view(modelError, :, j)[1] *
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# RSNN neuron's total wOut weight (neuron synaptic subscription .* wOutSum)
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view(wOutSum, :, :, j)[i]
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# sum(GeneralUtils.isNotEqual.(view(wRec, :, :, i, j), 0) .*
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# view(wOutSum, :, :, j))
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)
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end
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end
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function onComputeParamsChange!(phi,
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epsilonRec,
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eta,
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wOutChange,
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outputError)
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d1, d2, d3, d4 = size(epsilonRec)
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for j in 1:d4, i in 1:d3 # compute along neurons axis of every batch
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# how much error of this neuron 1-spike causing each output neuron's error
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view(wOutChange, :, :, i, j) .+= (-1 * view(eta, :, :, i, j)[1]) .*
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# eRec
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(
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(view(phi, :, :, i, j)[1] .* view(epsilonRec, :, :, i, j)) .*
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# nError a.k.a. learning signal, output neuron receives error of its own answer - correct answer.
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view(outputError, :, j)[i]
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)
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end
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end
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# function onComputeParamsChange!(wOut,
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# epsilonRec,
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# eta,
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# wOutChange,
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# bChange,
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# outputError)
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# d1, d2, d3, d4 = size(epsilonRec)
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# println(">>> epsilon ", size(epsilonRec))
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# println(">>> outputError ", size(outputError))
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# # Bₖⱼ in paper, sum() to get each neuron's total wOut weight
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# for j in 1:d4, i in 1:d3 # compute along neurons axis of every batch
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# # how much error of this neuron 1-spike causing each output neuron's error
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# view(wOutChange, :, :, i, j) .+=
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# (-1 * view(eta, :, :, i, j)[1] * view(outputError, :, j)[i]) .*
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# view(epsilonRec, :, :, i, j)
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# end
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# #TODO add b
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# error(">>> DEBUG -> onComputeParamsChange!")
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# end
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function learn!(kfn::kfn_1)
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#WORKING lif learn
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lifLearn!(kfn.lif_wRec,
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kfn.lif_wRecChange)
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#TODO alif learn
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#TODO on learn
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#TODO wOut decay
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# wrap up learning session
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if kfn.learningStage == [3]
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kfn.learningStage = [0]
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end
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end
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function lifLearn!(wRec,
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wRecChange)
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# merge learning weight
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wRec .+= wRecChange
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#TODO synaptic strength
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#TODO neuroplasticity
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end
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@@ -106,7 +106,10 @@ Base.@kwdef mutable struct kfn_1 <: knowledgeFn
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on_eRec::Union{AbstractArray, Nothing} = nothing
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on_eta::Union{AbstractArray, Nothing} = nothing
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on_gammaPd::Union{AbstractArray, Nothing} = nothing
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on_wOutChange::Union{AbstractArray, Nothing} = nothing
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on_b::Union{AbstractArray, Nothing} = nothing
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on_bChange::Union{AbstractArray, Nothing} = nothing
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on_firingCounter::Union{AbstractArray, Nothing} = nothing
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end
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@@ -219,7 +222,7 @@ function kfn_1(params::Dict)
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kfn.on_zt0 = zeros(1, 1, n, batch)
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kfn.on_zt1 = zeros(1, 1, n, batch)
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kfn.on_refractoryCounter = zeros(1, 1, n, batch)
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kfn.on_refractoryDuration = ones(1, 1, n, batch) .* 1
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kfn.on_refractoryDuration = ones(1, 1, n, batch) .* 0
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kfn.on_alpha = ones(1, 1, n, batch) .* (exp(-kfn.on_delta / kfn.on_tau_m))
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kfn.on_phi = zeros(1, 1, n, batch)
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kfn.on_epsilonRec = zeros(row, col, n, batch)
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@@ -227,6 +230,8 @@ function kfn_1(params::Dict)
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kfn.on_eta = zeros(1, 1, n, batch)
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kfn.on_gammaPd = zeros(1, 1, n, batch) .* 0.3
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kfn.on_wOutChange = zeros(row, col, n, batch)
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kfn.on_b = randn(1, 1, n, batch)
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kfn.on_bChange = randn(1, 1, n, batch)
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# subscription
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w = zeros(row, col, n)
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