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tranE.py
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tranE.py
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from random import uniform, sample
from numpy import *
from copy import deepcopy
class TransE:
def __init__(self, entityList, relationList, tripleList, margin = 1, learingRate = 0.00001, dim = 10, L1 = True):
self.margin = margin
self.learingRate = learingRate
self.dim = dim#向量维度
self.entityList = entityList#一开始,entityList是entity的list;初始化后,变为字典,key是entity,values是其向量(使用narray)。
self.relationList = relationList#理由同上
self.tripleList = tripleList#理由同上
self.loss = 0
self.L1 = L1
def initialize(self):
'''
初始化向量
'''
entityVectorList = {}
relationVectorList = {}
for entity in self.entityList:
n = 0
entityVector = []
while n < self.dim:
ram = init(self.dim)#初始化的范围
entityVector.append(ram)
n += 1
entityVector = norm(entityVector)#归一化
entityVectorList[entity] = entityVector
print("entityVector初始化完成,数量是%d"%len(entityVectorList))
for relation in self. relationList:
n = 0
relationVector = []
while n < self.dim:
ram = init(self.dim)#初始化的范围
relationVector.append(ram)
n += 1
relationVector = norm(relationVector)#归一化
relationVectorList[relation] = relationVector
print("relationVectorList初始化完成,数量是%d"%len(relationVectorList))
self.entityList = entityVectorList
self.relationList = relationVectorList
def transE(self, cI = 20):
print("训练开始")
for cycleIndex in range(cI):
Sbatch = self.getSample(150)
Tbatch = []#元组对(原三元组,打碎的三元组)的列表 :{((h,r,t),(h',r,t'))}
for sbatch in Sbatch:
tripletWithCorruptedTriplet = (sbatch, self.getCorruptedTriplet(sbatch))
if(tripletWithCorruptedTriplet not in Tbatch):
Tbatch.append(tripletWithCorruptedTriplet)
self.update(Tbatch)
if cycleIndex % 100 == 0:
print("第%d次循环"%cycleIndex)
print(self.loss)
self.writeRelationVector("c:\\relationVector.txt")
self.writeEntilyVector("c:\\entityVector.txt")
self.loss = 0
def getSample(self, size):
return sample(self.tripleList, size)
def getCorruptedTriplet(self, triplet):
'''
training triplets with either the head or tail replaced by a random entity (but not both at the same time)
:param triplet:
:return corruptedTriplet:
'''
i = uniform(-1, 1)
if i < 0:#小于0,打坏三元组的第一项
while True:
entityTemp = sample(self.entityList.keys(), 1)[0]
if entityTemp != triplet[0]:
break
corruptedTriplet = (entityTemp, triplet[1], triplet[2])
else:#大于等于0,打坏三元组的第二项
while True:
entityTemp = sample(self.entityList.keys(), 1)[0]
if entityTemp != triplet[1]:
break
corruptedTriplet = (triplet[0], entityTemp, triplet[2])
return corruptedTriplet
def update(self, Tbatch):
copyEntityList = deepcopy(self.entityList)
copyRelationList = deepcopy(self.relationList)
for tripletWithCorruptedTriplet in Tbatch:
headEntityVector = copyEntityList[tripletWithCorruptedTriplet[0][0]]#tripletWithCorruptedTriplet是原三元组和打碎的三元组的元组tuple
tailEntityVector = copyEntityList[tripletWithCorruptedTriplet[0][1]]
relationVector = copyRelationList[tripletWithCorruptedTriplet[0][2]]
headEntityVectorWithCorruptedTriplet = copyEntityList[tripletWithCorruptedTriplet[1][0]]
tailEntityVectorWithCorruptedTriplet = copyEntityList[tripletWithCorruptedTriplet[1][1]]
headEntityVectorBeforeBatch = self.entityList[tripletWithCorruptedTriplet[0][0]]#tripletWithCorruptedTriplet是原三元组和打碎的三元组的元组tuple
tailEntityVectorBeforeBatch = self.entityList[tripletWithCorruptedTriplet[0][1]]
relationVectorBeforeBatch = self.relationList[tripletWithCorruptedTriplet[0][2]]
headEntityVectorWithCorruptedTripletBeforeBatch = self.entityList[tripletWithCorruptedTriplet[1][0]]
tailEntityVectorWithCorruptedTripletBeforeBatch = self.entityList[tripletWithCorruptedTriplet[1][1]]
if self.L1:
distTriplet = distanceL1(headEntityVectorBeforeBatch, tailEntityVectorBeforeBatch, relationVectorBeforeBatch)
distCorruptedTriplet = distanceL1(headEntityVectorWithCorruptedTripletBeforeBatch, tailEntityVectorWithCorruptedTripletBeforeBatch , relationVectorBeforeBatch)
else:
distTriplet = distanceL2(headEntityVectorBeforeBatch, tailEntityVectorBeforeBatch, relationVectorBeforeBatch)
distCorruptedTriplet = distanceL2(headEntityVectorWithCorruptedTripletBeforeBatch, tailEntityVectorWithCorruptedTripletBeforeBatch , relationVectorBeforeBatch)
eg = self.margin + distTriplet - distCorruptedTriplet
if eg > 0: #[function]+ 是一个取正值的函数
self.loss += eg
if self.L1:
tempPositive = 2 * self.learingRate * (tailEntityVectorBeforeBatch - headEntityVectorBeforeBatch - relationVectorBeforeBatch)
tempNegtative = 2 * self.learingRate * (tailEntityVectorWithCorruptedTripletBeforeBatch - headEntityVectorWithCorruptedTripletBeforeBatch - relationVectorBeforeBatch)
tempPositiveL1 = []
tempNegtativeL1 = []
for i in range(self.dim):#不知道有没有pythonic的写法(比如列表推倒或者numpy的函数)?
if tempPositive[i] >= 0:
tempPositiveL1.append(1)
else:
tempPositiveL1.append(-1)
if tempNegtative[i] >= 0:
tempNegtativeL1.append(1)
else:
tempNegtativeL1.append(-1)
tempPositive = array(tempPositiveL1)
tempNegtative = array(tempNegtativeL1)
else:
tempPositive = 2 * self.learingRate * (tailEntityVectorBeforeBatch - headEntityVectorBeforeBatch - relationVectorBeforeBatch)
tempNegtative = 2 * self.learingRate * (tailEntityVectorWithCorruptedTripletBeforeBatch - headEntityVectorWithCorruptedTripletBeforeBatch - relationVectorBeforeBatch)
headEntityVector = headEntityVector + tempPositive
tailEntityVector = tailEntityVector - tempPositive
relationVector = relationVector + tempPositive - tempNegtative
headEntityVectorWithCorruptedTriplet = headEntityVectorWithCorruptedTriplet - tempNegtative
tailEntityVectorWithCorruptedTriplet = tailEntityVectorWithCorruptedTriplet + tempNegtative
#只归一化这几个刚更新的向量,而不是按原论文那些一口气全更新了
copyEntityList[tripletWithCorruptedTriplet[0][0]] = norm(headEntityVector)
copyEntityList[tripletWithCorruptedTriplet[0][1]] = norm(tailEntityVector)
copyRelationList[tripletWithCorruptedTriplet[0][2]] = norm(relationVector)
copyEntityList[tripletWithCorruptedTriplet[1][0]] = norm(headEntityVectorWithCorruptedTriplet)
copyEntityList[tripletWithCorruptedTriplet[1][1]] = norm(tailEntityVectorWithCorruptedTriplet)
self.entityList = copyEntityList
self.relationList = copyRelationList
def writeEntilyVector(self, dir):
print("写入实体")
entityVectorFile = open(dir, 'w')
for entity in self.entityList.keys():
entityVectorFile.write(entity+"\t")
entityVectorFile.write(str(self.entityList[entity].tolist()))
entityVectorFile.write("\n")
entityVectorFile.close()
def writeRelationVector(self, dir):
print("写入关系")
relationVectorFile = open(dir, 'w')
for relation in self.relationList.keys():
relationVectorFile.write(relation + "\t")
relationVectorFile.write(str(self.relationList[relation].tolist()))
relationVectorFile.write("\n")
relationVectorFile.close()
def init(dim):
return uniform(-6/(dim**0.5), 6/(dim**0.5))
def distanceL1(h, t ,r):
s = h + r - t
sum = fabs(s).sum()
return sum
def distanceL2(h, t, r):
s = h + r - t
sum = (s*s).sum()
return sum
def norm(list):
'''
归一化
:param 向量
:return: 向量的平方和的开方后的向量
'''
var = linalg.norm(list)
i = 0
while i < len(list):
list[i] = list[i]/var
i += 1
return array(list)
def openDetailsAndId(dir,sp="\t"):
idNum = 0
list = []
with open(dir) as file:
lines = file.readlines()
for line in lines:
DetailsAndId = line.strip().split(sp)
list.append(DetailsAndId[0])
idNum += 1
return idNum, list
def openTrain(dir,sp="\t"):
num = 0
list = []
with open(dir) as file:
lines = file.readlines()
for line in lines:
triple = line.strip().split(sp)
if(len(triple)<3):
continue
list.append(tuple(triple))
num += 1
return num, list
if __name__ == '__main__':
dirEntity = "C:\\data\\entity2id.txt"
entityIdNum, entityList = openDetailsAndId(dirEntity)
dirRelation = "C:\\data\\relation2id.txt"
relationIdNum, relationList = openDetailsAndId(dirRelation)
dirTrain = "C:\\data\\train.txt"
tripleNum, tripleList = openTrain(dirTrain)
print("打开TransE")
transE = TransE(entityList,relationList,tripleList, margin=1, dim = 100)
print("TranE初始化")
transE.initialize()
transE.transE(15000)
transE.writeRelationVector("c:\\relationVector.txt")
transE.writeEntilyVector("c:\\entityVector.txt")