pyFTS/ismailefendi.py
Petrônio Cândido de Lima e Silva b613c6db8a Acréscimo de informações aos modelos
2016-10-25 16:21:32 -02:00

84 lines
1.9 KiB
Python

import numpy as np
from pyFTS import *
class ImprovedWeightedFLRG:
def __init__(self,LHS):
self.LHS = LHS
self.RHS = {}
self.count = 0.0
def append(self,c):
if c.name not in self.RHS:
self.RHS[c.name] = 1.0
else:
self.RHS[c.name] = self.RHS[c.name] + 1.0
self.count = self.count + 1.0
def weights(self):
return np.array([ self.RHS[c]/self.count for c in self.RHS.keys() ])
def __str__(self):
tmp = self.LHS.name + " -> "
tmp2 = ""
for c in sorted(self.RHS):
if len(tmp2) > 0:
tmp2 = tmp2 + ","
tmp2 = tmp2 + c + "(" + str(round(self.RHS[c]/self.count,3)) + ")"
return tmp + tmp2
class ImprovedWeightedFTS(fts.FTS):
def __init__(self,name):
super(ImprovedWeightedFTS, self).__init__(1,"IWFTS")
self.name = "Improved Weighted FTS"
self.detail = "Ismail & Efendi"
self.setsDict = {}
def generateFLRG(self, flrs):
flrgs = {}
for flr in flrs:
if flr.LHS.name in flrgs:
flrgs[flr.LHS.name].append(flr.RHS)
else:
flrgs[flr.LHS.name] = ImprovedWeightedFLRG(flr.LHS);
flrgs[flr.LHS.name].append(flr.RHS)
return (flrgs)
def train(self, data, sets):
self.sets = sets
for s in self.sets: self.setsDict[s.name] = s
tmpdata = common.fuzzySeries(data,self.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):
l = 1
ndata = np.array(data)
l = len(ndata)
ret = []
for k in np.arange(0,l):
mv = common.fuzzyInstance(ndata[k], self.sets)
actual = self.sets[ np.argwhere( mv == max(mv) )[0,0] ]
if actual.name not in self.flrgs:
ret.append(actual.centroid)
else:
flrg = self.flrgs[actual.name]
mp = self.getMidpoints(flrg)
ret.append( mp.dot( flrg.weights() ))
return ret