Correções em HOFTS, IFTS e PIFTS

This commit is contained in:
Petrônio Cândido de Lima e Silva 2016-10-25 15:52:44 -02:00
parent 62ca5efc1b
commit ce5c267505
3 changed files with 61 additions and 50 deletions

View File

@ -4,12 +4,13 @@ from pyFTS import *
class HighOrderFLRG:
def __init__(self,order):
self.LHS = []
self.RHS = []
self.RHS = {}
self.order = order
self.strlhs = ""
def appendRHS(self,c):
self.RHS.append(c)
if c.name not in self.RHS:
self.RHS[c.name] = c
def strLHS(self):
if len(self.strlhs) == 0:
@ -24,16 +25,17 @@ class HighOrderFLRG:
def __str__(self):
tmp = ""
for c in sorted(self.RHS, key=lambda s: s.name):
for c in sorted(self.RHS):
if len(tmp) > 0:
tmp = tmp + ","
tmp = tmp + c.name
tmp = tmp + c
return self.strLHS() + " -> " + tmp
class HighOrderFTS(fts.FTS):
def __init__(self,name):
super(HighOrderFTS, self).__init__(1,name)
self.order = 1
self.setsDict = {}
def generateFLRG(self, flrs):
flrgs = {}
@ -54,9 +56,14 @@ class HighOrderFTS(fts.FTS):
def train(self, data, sets, order):
self.order = order
self.sets = sets
for s in self.sets: self.setsDict[s.name] = s
tmpdata = common.fuzzySeries(data,sets)
flrs = common.generateRecurrentFLRs(tmpdata)
self.flrgs = self.generateFLRG(flrs)
def getMidpoints(self,flrg):
ret = np.array([self.setsDict[s].centroid for s in flrg.RHS])
return ret
def forecast(self,data):

10
ifts.py
View File

@ -1,8 +1,6 @@
import numpy as np
from pyFTS import *
class IntervalFTS(hofts.HighOrderFTS):
def __init__(self,name):
super(IntervalFTS, self).__init__(name)
@ -11,7 +9,7 @@ class IntervalFTS(hofts.HighOrderFTS):
def getUpper(self,flrg):
if flrg.strLHS() in self.flrgs:
tmp = self.flrgs[ flrg.strLHS() ]
ret = max(np.array([s.upper for s in tmp.RHS]))
ret = max(np.array([self.setsDict[s].upper for s in tmp.RHS]))
else:
ret = flrg.LHS[-1].upper
return ret
@ -19,7 +17,7 @@ class IntervalFTS(hofts.HighOrderFTS):
def getLower(self,flrg):
if flrg.strLHS() in self.flrgs:
tmp = self.flrgs[ flrg.strLHS() ]
ret = min(np.array([s.lower for s in tmp.RHS]))
ret = min(np.array([self.setsDict[s].lower for s in tmp.RHS]))
else:
ret = flrg.LHS[-1].lower
return ret
@ -48,8 +46,6 @@ class IntervalFTS(hofts.HighOrderFTS):
for k in np.arange(self.order,l):
print(k)
flrs = []
mvs = []
@ -61,7 +57,7 @@ class IntervalFTS(hofts.HighOrderFTS):
lags = {}
if self.order > 1:
subset = ndata[k-self.order : k ]
print(subset)
for instance in subset:
mb = common.fuzzyInstance(instance, self.sets)
tmp = np.argwhere( mb )

View File

@ -1,45 +1,33 @@
import numpy as np
from pyFTS import *
class ProbabilisticIntervalFLRG:
class ProbabilisticIntervalFLRG(hofts.HighOrderFLRG):
def __init__(self,order):
self.LHS = []
self.RHS = []
self.RHSfreqs = {}
self.order = order
super(ProbabilisticIntervalFLRG, self).__init__(order)
self.RHS = {}
self.frequencyCount = 0
self.strlhs = ""
def appendRHS(self,c):
self.RHS.append(c)
self.frequencyCount = self.frequencyCount + 1
if c.name in self.RHSfreqs:
self.RHSfreqs[c.name] = self.RHSfreqs[c.name] + 1
else:
self.RHSfreqs[c.name] = 1
def strLHS(self):
if len(self.strlhs) == 0:
for c in self.LHS:
if len(self.strlhs) > 0:
self.strlhs = self.strlhs + ","
self.strlhs = self.strlhs + c.name
return self.strlhs
def appendLHS(self,c):
self.LHS.append(c)
def appendRHS(self,c):
self.frequencyCount = self.frequencyCount + 1
if c.name in self.RHS:
self.RHS[c.name] = self.RHS[c.name] + 1
else:
self.RHS[c.name] = 1
def getProbability(self,c):
return self.RHS[c] / self.frequencyCount
def __str__(self):
tmp = ""
for c in sorted(self.RHS, key=lambda s: s.name):
if len(tmp) > 0:
tmp = tmp + ","
tmp = tmp + c.name
return self.strLHS() + " -> " + tmp
tmp2 = ""
for c in sorted(self.RHS):
if len(tmp2) > 0:
tmp2 = tmp2 + ","
tmp2 = tmp2 + c + "(" + str(round(self.RHS[c]/self.frequencyCount,3)) + ")"
return self.strLHS() + " -> " + tmp2
class ProbabilisticIntervalFTS(ifts.IntervalFTS):
def __init__(self,name):
super(IntervalFTS, self).__init__(1,name)
super(ProbabilisticIntervalFTS, self).__init__(name)
self.flrgs = {}
self.globalFrequency = 0
@ -60,6 +48,25 @@ class ProbabilisticIntervalFTS(ifts.IntervalFTS):
self.globalFrequency = self.globalFrequency + 1
return (flrgs)
def getProbability(self, flrg):
return flrg.frequencyCount / self.globalFrequency
def getUpper(self,flrg):
if flrg.strLHS() in self.flrgs:
tmp = self.flrgs[ flrg.strLHS() ]
ret = sum(np.array([ tmp.getProbability(s) * self.setsDict[s].upper for s in tmp.RHS]))
else:
ret = flrg.LHS[-1].upper
return ret
def getLower(self,flrg):
if flrg.strLHS() in self.flrgs:
tmp = self.flrgs[ flrg.strLHS() ]
ret = sum(np.array([ tmp.getProbability(s) * self.setsDict[s].lower for s in tmp.RHS]))
else:
ret = flrg.LHS[-1].lower
return ret
def forecast(self,data):
@ -105,26 +112,27 @@ class ProbabilisticIntervalFTS(ifts.IntervalFTS):
flrg = hofts.HighOrderFLRG(self.order)
for kk in path: flrg.appendLHS(self.sets[ kk ])
flrs.append(flrg)
##
flrs.append( self.flrgs[ flrg.strLHS() ] )
# Acha a pertinência geral de cada FLRG
mvs.append(min(self.getSequenceMembership(subset, flrg.LHS)))
else:
mv = common.fuzzyInstance(ndata[k],self.sets)
tmp = np.argwhere( mv )
idx = np.ravel(tmp)
mv = common.fuzzyInstance(ndata[k],self.sets) # get all membership values
tmp = np.argwhere( mv ) # get the indices of values > 0
idx = np.ravel(tmp) # flatten the array
for kk in idx:
flrg = hofts.HighOrderFLRG(self.order)
flrg.appendLHS(self.sets[ kk ])
flrs.append(flrg)
flrs.append( self.flrgs[ flrg.strLHS() ] )
mvs.append(mv[kk])
count = 0
for flrg in flrs:
# achar o os bounds de cada FLRG, ponderados pela pertinência
up.append( mvs[count] * self.getUpper(flrg) )
lo.append( mvs[count] * self.getLower(flrg) )
up.append( self.getProbability(flrg) * mvs[count] * self.getUpper(flrg) )
lo.append( self.getProbability(flrg) * mvs[count] * self.getLower(flrg) )
count = count + 1
# gerar o intervalo