本文整理汇总了Python中pysgpp.DataVector.__setitem__方法的典型用法代码示例。如果您正苦于以下问题:Python DataVector.__setitem__方法的具体用法?Python DataVector.__setitem__怎么用?Python DataVector.__setitem__使用的例子?那么恭喜您, 这里精选的方法代码示例或许可以为您提供帮助。您也可以进一步了解该方法所在类pysgpp.DataVector
的用法示例。
在下文中一共展示了DataVector.__setitem__方法的4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,您的评价将有助于系统推荐出更棒的Python代码示例。
示例1: calc_indicator_value
# 需要导入模块: from pysgpp import DataVector [as 别名]
# 或者: from pysgpp.DataVector import __setitem__ [as 别名]
def calc_indicator_value(self, index):
numData = self.trainData.getNrows()
numCoeff = self.grid.getSize()
seq = self.grid.getStorage().seq(index)
num = 0
denom = 0
tmp = DataVector(numCoeff)
self.multEval.multTranspose(self.errors, tmp)
num = tmp.__getitem__(seq)
num **= 2
alpha = DataVector(numCoeff)
col = DataVector(numData)
alpha.__setitem__(seq, 1.0)
self.multEval.mult(alpha, col)
col.sqr()
denom = col.sum()
if denom == 0:
print "Denominator is zero"
value = 0
else:
value = num/denom
return value
示例2: test_1
# 需要导入模块: from pysgpp import DataVector [as 别名]
# 或者: from pysgpp.DataVector import __setitem__ [as 别名]
def test_1(self):
storage = self.grid.getStorage()
coord = DataVector(storage.dim())
num_coeff = self.alpha.__len__()
values = [self.functor.__call__(storage,i) for i in xrange(storage.size())]
expect = []
for i in xrange(num_coeff):
# print i
val = 0
single = DataVector(num_coeff)
single.__setitem__(i, self.alpha.__getitem__(i))
for j in xrange(self.trainData.getNrows()):
self.trainData.getRow(j, coord)
val += abs( self.grid.eval(single, coord) * (self.errors.__getitem__(j)**2) )
expect.append(val)
# print values
# print expect
# print [ values[i]/expect[i] for i in xrange(values.__len__())]
self.assertEqual(values, expect)
示例3: TestWeightedRefinementOperator
# 需要导入模块: from pysgpp import DataVector [as 别名]
# 或者: from pysgpp.DataVector import __setitem__ [as 别名]
class TestWeightedRefinementOperator(unittest.TestCase):
def setUp(self):
#
# Grid
#
DIM = 2
LEVEL = 2
self.grid = Grid.createLinearGrid(DIM)
self.grid_gen = self.grid.createGridGenerator()
self.grid_gen.regular(LEVEL)
#
# trainData, classes, errors
#
xs = []
DELTA = 0.05
DELTA_RECI = int(1/DELTA)
for i in xrange(DELTA_RECI):
for j in xrange(DELTA_RECI):
xs.append([DELTA*i, DELTA*j])
random.seed(1208813)
ys = [ random.randint(-10, 10) for i in xrange(DELTA_RECI**2)]
# print xs
# print ys
self.trainData = DataMatrix(xs)
self.classes = DataVector(ys)
self.alpha = DataVector([3, 6, 7, 9, -1])
self.errors = DataVector(DELTA_RECI**2)
coord = DataVector(DIM)
for i in xrange(self.trainData.getNrows()):
self.trainData.getRow(i, coord)
self.errors.__setitem__ (i, self.classes[i] - self.grid.eval(self.alpha, coord))
#print "Errors:"
#print self.errors
#
# Functor
#
self.functor = WeightedErrorRefinementFunctor(self.alpha, self.grid)
self.functor.setTrainDataset(self.trainData)
self.functor.setClasses(self.classes)
self.functor.setErrors(self.errors)
def test_1(self):
storage = self.grid.getStorage()
coord = DataVector(storage.dim())
num_coeff = self.alpha.__len__()
values = [self.functor.__call__(storage,i) for i in xrange(storage.size())]
expect = []
for i in xrange(num_coeff):
# print i
val = 0
single = DataVector(num_coeff)
single.__setitem__(i, self.alpha.__getitem__(i))
for j in xrange(self.trainData.getNrows()):
self.trainData.getRow(j, coord)
val += abs( self.grid.eval(single, coord) * (self.errors.__getitem__(j)**2) )
expect.append(val)
# print values
# print expect
# print [ values[i]/expect[i] for i in xrange(values.__len__())]
self.assertEqual(values, expect)
示例4: TestOnlinePredictiveRefinementDimension
# 需要导入模块: from pysgpp import DataVector [as 别名]
# 或者: from pysgpp.DataVector import __setitem__ [as 别名]
class TestOnlinePredictiveRefinementDimension(unittest.TestCase):
def setUp(self):
#
# Grid
#
DIM = 2
LEVEL = 2
self.grid = Grid.createLinearGrid(DIM)
self.grid_gen = self.grid.createGridGenerator()
self.grid_gen.regular(LEVEL)
#
# trainData, classes, errors
#
xs = []
DELTA = 0.05
DELTA_RECI = int(1/DELTA)
for i in xrange(DELTA_RECI):
for j in xrange(DELTA_RECI):
xs.append([DELTA*i, DELTA*j])
random.seed(1208813)
ys = [ random.randint(-10, 10) for i in xrange(DELTA_RECI**2)]
self.trainData = DataMatrix(xs)
self.classes = DataVector(ys)
self.alpha = DataVector([3, 6, 7, 9, -1])
self.multEval = createOperationMultipleEval(self.grid, self.trainData)
self.errors = DataVector(DELTA_RECI**2)
coord = DataVector(DIM)
for i in xrange(self.trainData.getNrows()):
self.trainData.getRow(i, coord)
self.errors.__setitem__ (i, abs(self.classes[i] - self.grid.eval(self.alpha, coord)))
#
# OnlinePredictiveRefinementDimension
#
hash_refinement = HashRefinement();
self.strategy = OnlinePredictiveRefinementDimension(hash_refinement)
self.strategy.setTrainDataset(self.trainData)
self.strategy.setClasses(self.classes)
self.strategy.setErrors(self.errors)
def test_1(self):
storage = self.grid.getStorage()
gridSize = self.grid.getSize()
numDim = storage.dim()
print "######"
print "Expected result:"
print "######"
expected = {}
for j in xrange(gridSize):
HashGridIndex = storage.get(j)
HashGridIndex.setLeaf(False)
print "Point: ", j, " (", HashGridIndex.toString(), ")"
for d in xrange(numDim):
#
# Get left and right child
#
leftChild = HashGridIndex(HashGridIndex)
rightChild = HashGridIndex(HashGridIndex)
storage.left_child(leftChild, d)
storage.right_child(rightChild, d)
#
# Check if point is refinable
#
if storage.has_key(leftChild) or storage.has_key(rightChild):
continue
#
# Insert children temporarily
#
storage.insert(leftChild)
storage.insert(rightChild)
val1 = self.calc_indicator_value(leftChild)
val2 = self.calc_indicator_value(rightChild)
#.........这里部分代码省略.........