from pyFTS import * class ImprovedWeightedFLRG: def __init__(self,premiss): self.premiss = premiss self.consequent = {} self.count = 0.0 def append(self,c): if c not in self.consequent: self.consequent[c] = 1.0 else: self.consequent[c] = self.consequent[c] + 1.0 self.count = self.count + 1.0 def weights(self): return np.array([ self.consequent[c]/self.count for c in self.consequent.keys() ]) def __str__(self): tmp = self.premiss + " -> " tmp2 = "" for c in self.consequent.keys(): if len(tmp2) > 0: tmp2 = tmp2 + "," tmp2 = tmp2 + c + "(" + str(round(self.consequent[c]/self.count,3)) + ")" return tmp + tmp2 class ImprovedWeightedFTS(fts.FTS): def __init__(self,name): super(ImprovedWeightedFTS, self).__init__(1,name) def defuzzy(self,data): actual = self.fuzzy(data) if actual["fuzzyset"] not in self.flrgs: return self.sets[actual["fuzzyset"]].centroid flrg = self.flrgs[actual["fuzzyset"]] mi = np.array([self.sets[s].centroid for s in flrg.consequent.keys()]) return mi.dot( flrg.weights() ) def learn(self, data, sets): last = {"fuzzyset":"", "membership":0.0} actual = {"fuzzyset":"", "membership":0.0} for s in sets: self.sets[s.name] = s self.flrgs = {} count = 1 for inst in data: actual = self.fuzzy(inst) if count > self.order: if last["fuzzyset"] not in self.flrgs: self.flrgs[last["fuzzyset"]] = ImprovedWeightedFLRG(last["fuzzyset"]) self.flrgs[last["fuzzyset"]].append(actual["fuzzyset"]) count = count + 1 last = actual