本文整理汇总了Python中pybrain.utilities.fListToString函数的典型用法代码示例。如果您正苦于以下问题:Python fListToString函数的具体用法?Python fListToString怎么用?Python fListToString使用的例子?那么恭喜您, 这里精选的函数代码示例或许可以为您提供帮助。
在下文中一共展示了fListToString函数的14个代码示例,这些例子默认根据受欢迎程度排序。您可以为喜欢或者感觉有用的代码点赞,您的评价将有助于我们的系统推荐出更棒的Python代码示例。
示例1: trainUntilConvergence
def trainUntilConvergence(self, dataset=None, maxEpochs=None, verbose=None,
continueEpochs=10, validationProportion=0.25):
"""Train the module on the dataset until it converges.
Return the module with the parameters that gave the minimal validation
error.
If no dataset is given, the dataset passed during Trainer
initialization is used. validationProportion is the ratio of the dataset
that is used for the validation dataset.
If maxEpochs is given, at most that many epochs
are trained. Each time validation error hits a minimum, try for
continueEpochs epochs to find a better one."""
epochs = 0
if dataset == None:
dataset = self.ds
if verbose == None:
verbose = self.verbose
# Split the dataset randomly: validationProportion of the samples for
# validation.
trainingData, validationData = (
dataset.splitWithProportion(1 - validationProportion))
if not (len(trainingData) > 0 and len(validationData)):
raise ValueError("Provided dataset too small to be split into training " +
"and validation sets with proportion " + str(validationProportion))
self.ds = trainingData
bestweights = self.module.params.copy()
bestverr = self.testOnData(validationData)
trainingErrors = []
validationErrors = [bestverr]
while True:
trainingErrors.append(self.train())
validationErrors.append(self.testOnData(validationData))
if epochs == 0 or validationErrors[-1] < bestverr:
# one update is always done
bestverr = validationErrors[-1]
bestweights = self.module.params.copy()
if maxEpochs != None and epochs >= maxEpochs:
self.module.params[:] = bestweights
break
epochs += 1
if len(validationErrors) >= continueEpochs * 2:
# have the validation errors started going up again?
# compare the average of the last few to the previous few
old = validationErrors[-continueEpochs * 2:-continueEpochs]
new = validationErrors[-continueEpochs:]
if min(new) > max(old):
self.module.params[:] = bestweights
break
trainingErrors.append(self.testOnData(trainingData))
self.ds = dataset
if verbose:
print 'train-errors:', fListToString(trainingErrors, 6)
print 'valid-errors:', fListToString(validationErrors, 6)
return trainingErrors, validationErrors
开发者ID:kaeufl,项目名称:pybrain,代码行数:58,代码来源:backprop.py
示例2: testSingleAction
def testSingleAction(self):
r = self.runSequences(num_actions=1, r_states=map(array, [[1, 0, 0, 0], [0, 1, 0, 0], [0, 0, 1, 0]]),
num_interactions=1000, lr=0.1, _lambda=0.5, gamma=0.5)
if self.verbose:
for x, l in r:
print x
for a in l:
print fListToString(a, 2)
for _, l in r:
self.assertAlmostEquals(min(l[0]), max(l[0]), places=0)
self.assertAlmostEquals(min(l[1]), max(l[1]), places=0)
self.assertAlmostEquals(min(l[2]), max(l[2]), places=0)
self.assertAlmostEquals(max(l[3]) - 1, min(l[3]), places=0)
开发者ID:DanSGraham,项目名称:School-Projects,代码行数:13,代码来源:linearfa.py
示例3: testSimple
def testSimple(self):
r = self.runSequences(num_actions=3, num_features=5, num_states=4, num_interactions=2000,
lr=0.1, _lambda=0.5, gamma=0.5)
if self.verbose:
for x, l in r:
print x
for a in l:
print fListToString(a[0], 2)
for _, l in r:
self.assertAlmostEquals(min(l[0][0]), max(l[0][0]), places=0)
self.assertAlmostEquals(min(l[1][0]), max(l[1][0]), places=0)
self.assertAlmostEquals(min(l[2][0]) + len(l[2][0]) - 1, max(l[2][0]), places=0)
self.assertAlmostEquals(min(l[3][0]), max(l[3][0]), places=0)
开发者ID:DanSGraham,项目名称:School-Projects,代码行数:13,代码来源:linearfa.py
示例4: _evaluateSequence
def _evaluateSequence(self, f, seq, verbose = False):
"""Return the ponderated MSE over one sequence."""
totalError = 0.
ponderation = 0.
for input, target in seq:
res = f(input)
e = 0.5 * sum((target-res).flatten()**2)
totalError += e
ponderation += len(target)
if verbose:
print(( 'out: ', fListToString( list( res ) )))
print(( 'correct:', fListToString( target )))
print(( 'error: % .8f' % e))
return totalError, ponderation
开发者ID:Angeliqe,项目名称:pybrain,代码行数:14,代码来源:supervised.py
示例5: _evaluateSequence
def _evaluateSequence(self, f, seq, verbose = False):
""" return the importance-ponderated MSE over one sequence. """
totalError = 0
ponderation = 0.
for input, target, importance in seq:
res = f(input)
e = 0.5 * dot(importance.flatten(), ((target-res).flatten()**2))
totalError += e
ponderation += sum(importance)
if verbose:
print 'out: ', fListToString(list(res))
print 'correct: ', fListToString(target)
print 'importance:', fListToString(importance)
print 'error: % .8f' % e
return totalError, ponderation
开发者ID:ZachPhillipsGary,项目名称:CS200-NLP-ANNsProject,代码行数:15,代码来源:importance.py
示例6: testSingleStateFullDiscounted
def testSingleStateFullDiscounted(self):
r = self.runSequences(num_actions=4, num_features=3, num_states=1, num_interactions=500,
gamma=0, lr=0.25)
if self.verbose:
for x, l in r:
print x
for a in l:
print fListToString(a[0], 2)
for _, l in r:
self.assertAlmostEquals(min(l[0][0]), 1, places=0)
self.assertAlmostEquals(max(l[0][0]), 1, places=0)
self.assertAlmostEquals(2 * min(l[1][0]), 1, places=0)
self.assertAlmostEquals(2 * max(l[1][0]), 1, places=0)
self.assertAlmostEquals(min(l[2][0]), 0, places=0)
self.assertAlmostEquals(max(l[2][0]), len(l[2][0]) - 1, places=0)
self.assertAlmostEquals(min(l[3][0]), max(l[3][0]), places=0)
开发者ID:DanSGraham,项目名称:School-Projects,代码行数:16,代码来源:linearfa.py
示例7: _oneGeneration
def _oneGeneration(self):
self.oldPops.append(self.pop)
self.generation += 1
fitnesses = self._evaluatePopulation()
# store best in hall of fame
besti = argmax(array(fitnesses))
best = self.pop[besti]
bestFits = sorted(fitnesses)[::-1][:self._numSelected()]
self.hallOfFame.append(best)
self.hallOfFitnesses.append(bestFits)
if self.verbose:
print 'Generation', self.generation
print ' relat. fits:', fListToString(sorted(fitnesses), 4)
if len(best.params) < 20:
print ' best params:', fListToString(best.params, 4)
self.pop = self._selectAndReproduce(self.pop, fitnesses)
开发者ID:DanSGraham,项目名称:code,代码行数:18,代码来源:coevolution.py
示例8: trainUntilConvergence
def trainUntilConvergence(self, dataset=None, maxEpochs=None, verbose=None,
continueEpochs=10, validationProportion=0.25):
epochs = 0
if dataset == None:
dataset = self.ds
if verbose == None:
verbose = self.verbose
trainingData, validationData = (
dataset.splitWithProportion(1 - validationProportion))
if not (len(trainingData) > 0 and len(validationData)):
raise ValueError("Provided dataset too small to be split into training " +
"and validation sets with proportion " + str(validationProportion))
self.ds = trainingData
bestweights = self.module.params.copy()
bestverr = self.testOnData(validationData)
trainingErrors = []
validationErrors = [bestverr]
while True:
trainingErrors.append(self.train())
validationErrors.append(self.testOnData(validationData))
if epochs == 0 or validationErrors[-1] < bestverr:
bestverr = validationErrors[-1]
bestweights = self.module.params.copy()
if maxEpochs != None and epochs >= maxEpochs:
self.module.params[:] = bestweights
break
epochs += 1
if len(validationErrors) >= continueEpochs * 2:
old = validationErrors[-continueEpochs * 2:-continueEpochs]
new = validationErrors[-continueEpochs:]
if min(new) > max(old):
self.module.params[:] = bestweights
break
trainingErrors.append(self.testOnData(trainingData))
self.ds = dataset
if verbose:
print 'train-errors:', fListToString(trainingErrors, 6)
print 'valid-errors:', fListToString(validationErrors, 6)
return trainingErrors, validationErrors
开发者ID:LuckyMagpie,项目名称:Cocktail,代码行数:41,代码来源:backprop.py
示例9: _updateShaping
def _updateShaping(self):
""" Daan: "This won't work. I like it!" """
assert self.numberOfCenters == 1
possible = self.shapingFunction.getPossibleParameters(self.windowSize)
matchValues = []
pdfs = [multivariateNormalPdf(s, self.mus[0], self.sigmas[0])
for s in self.samples]
for p in possible:
self.shapingFunction.setParameter(p)
transformedFitnesses = self.shapingFunction(self.fitnesses)
#transformedFitnesses /= sum(transformedFitnesses)
sumValue = sum([x * log(y) for x, y in zip(pdfs, transformedFitnesses) if y > 0])
normalization = sum([x * y for x, y in zip(pdfs, transformedFitnesses) if y > 0])
matchValues.append(sumValue / normalization)
self.shapingFunction.setParameter(possible[argmax(matchValues)])
if len(self.allsamples) % 100 == 0:
print possible[argmax(matchValues)]
print fListToString(matchValues, 3)
开发者ID:ZachPhillipsGary,项目名称:CS200-NLP-ANNsProject,代码行数:22,代码来源:fem.py
示例10: trainUntilConvergence
def trainUntilConvergence(self, dataset=None, maxEpochs=None, verbose=None,
continueEpochs=10, validationProportion=0.25,
trainingData=None, validationData=None,
convergence_threshold=10):
"""Train the module on the dataset until it converges.
Return the module with the parameters that gave the minimal validation
error.
If no dataset is given, the dataset passed during Trainer
initialization is used. validationProportion is the ratio of the dataset
that is used for the validation dataset.
If the training and validation data is already set, the splitPropotion is ignored
If maxEpochs is given, at most that many epochs
are trained. Each time validation error hits a minimum, try for
continueEpochs epochs to find a better one."""
epochs = 0
if dataset is None:
dataset = self.ds
if verbose is None:
verbose = self.verbose
if trainingData is None or validationData is None:
# Split the dataset randomly: validationProportion of the samples for
# validation.
trainingData, validationData = (
dataset.splitWithProportion(1 - validationProportion))
if not (len(trainingData) > 0 and len(validationData)):
raise ValueError("Provided dataset too small to be split into training " +
"and validation sets with proportion " + str(validationProportion))
self.ds = trainingData
bestweights = self.module.params.copy()
bestverr = self.testOnData(validationData)
bestepoch = 0
self.trainingErrors = []
self.validationErrors = [bestverr]
while True:
trainingError = self.train()
validationError = self.testOnData(validationData)
if isnan(trainingError) or isnan(validationError):
raise Exception("Training produced NaN results")
self.trainingErrors.append(trainingError)
self.validationErrors.append(validationError)
if epochs == 0 or self.validationErrors[-1] < bestverr:
# one update is always done
bestverr = self.validationErrors[-1]
bestweights = self.module.params.copy()
bestepoch = epochs
if maxEpochs != None and epochs >= maxEpochs:
self.module.params[:] = bestweights
break
epochs += 1
if len(self.validationErrors) >= continueEpochs * 2:
# have the validation errors started going up again?
# compare the average of the last few to the previous few
old = self.validationErrors[-continueEpochs * 2:-continueEpochs]
new = self.validationErrors[-continueEpochs:]
if min(new) > max(old):
self.module.params[:] = bestweights
break
lastnew = round(new[-1], convergence_threshold)
if sum(round(y, convergence_threshold) - lastnew for y in new) == 0:
self.module.params[:] = bestweights
break
#self.trainingErrors.append(self.testOnData(trainingData))
self.ds = dataset
if verbose:
print(('train-errors:', fListToString(self.trainingErrors, 6)))
print(('valid-errors:', fListToString(self.validationErrors, 6)))
return self.trainingErrors[:bestepoch], self.validationErrors[:1 + bestepoch]
开发者ID:lbvienna,项目名称:compare_documents,代码行数:70,代码来源:ExtendedBackprop.py
示例11: BalanceTask
# any episodic task
task = BalanceTask()
# any neural network controller
net = buildNetwork(task.outdim, 1, task.indim)
# any optimization algorithm to be plugged in, for example:
# learner = CMAES(storeAllEvaluations = True)
# or:
learner = HillClimber(storeAllEvaluations = True)
# in a non-optimization case the agent would be a LearningAgent:
# agent = LearningAgent(net, ENAC())
# here it is an OptimizationAgent:
agent = OptimizationAgent(net, learner)
# the agent and task are linked in an Experiment
# and everything else happens under the hood.
exp = EpisodicExperiment(task, agent)
exp.doEpisodes(100)
print('Episodes learned from:', len(learner._allEvaluations))
n, fit = learner._bestFound()
print('Best fitness found:', fit)
print('with this network:')
print(n)
print('containing these parameters:')
print(fListToString(n.params, 4))
开发者ID:Angeliqe,项目名称:pybrain,代码行数:28,代码来源:optimizers_for_rl.py
示例12: CompetitiveCoevolution
from pybrain.utilities import fListToString
# TODO: convert to unittest
C = CompetitiveCoevolution(None, [1, 2, 3, 4, 5, 6, 7, 8], populationSize=4)
def b(x, y):
C.allResults[(x, y)] = [1, 1, 1, []]
C.allResults[(y, x)] = [-1, 1, -1, []]
if x not in C.allOpponents:
C.allOpponents[x] = []
if y not in C.allOpponents:
C.allOpponents[y] = []
C.allOpponents[x].append(y)
C.allOpponents[y].append(x)
b(1, 6)
b(1, 7)
b(8, 1)
b(5, 2)
b(6, 2)
b(8, 2)
b(3, 5)
b(3, 6)
b(3, 7)
b(4, 5)
b(4, 7)
b(8, 4)
print(C.pop)
print(C.parasitePop)
print(' ', fListToString(C._competitiveSharedFitness(C.pop, C.parasitePop), 2))
print('should be:', fListToString([0.83, 0.00, 1.33, 0.83], 2))
开发者ID:Boblogic07,项目名称:pybrain,代码行数:29,代码来源:competitivecoevolution.py
示例13: writeDoubles
def writeDoubles(self, node, l, precision = 6):
self.addTextNode(node, fListToString(l, precision)[2:-1])
开发者ID:Boblogic07,项目名称:pybrain,代码行数:2,代码来源:handling.py
示例14: BalanceTask
# any episodic task
task = BalanceTask()
# any neural network controller
net = buildNetwork(task.outdim, 1, task.indim)
# any optimization algorithm to be plugged in, for example:
# learner = CMAES(storeAllEvaluations = True)
# or:
learner = HillClimber(storeAllEvaluations = True)
# in a non-optimization case the agent would be a LearningAgent:
# agent = LearningAgent(net, ENAC())
# here it is an OptimizationAgent:
agent = OptimizationAgent(net, learner)
# the agent and task are linked in an Experiment
# and everything else happens under the hood.
exp = EpisodicExperiment(task, agent)
exp.doEpisodes(100)
print 'Episodes learned from:', len(learner._allEvaluations)
n, fit = learner._bestFound()
print 'Best fitness found:', fit
print 'with this network:'
print n
print 'containing these parameters:'
print fListToString(n.params, 4)
开发者ID:Boblogic07,项目名称:pybrain,代码行数:28,代码来源:optimizers_for_rl.py
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