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main.py
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132 lines (96 loc) · 3.1 KB
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from histograma import Histograma
from original import Original
#from normalizerOffline import normalizer
from maxMin_Normalizer import maxMin_Normalizer
'''
added by Martin
'''
import time,sys
import numpy as np
from sklearn.metrics import mean_squared_error
####ate aqui
class Main:
def run(self):
beg=time.time()
data = open("classes-17-end.out", "r")
saida = open("classes-17-norm-histo.out", "w")
#tamanhoJanela = int(sys.argv[1]) #as paper
tamanhoJanela=500
self.hists = []
hists = self.hists
linha = data.readline()
resFinal=[]
while linha !="":
janela = []
while linha !="" and len(janela) < tamanhoJanela:
tmp1 = linha.strip("\n").split(",")[5:-1]#removing IPsrc,IPdst,portsrc,portdsc,proto,class
tmp2 = []
for i in tmp1:
tmp2.append(float(i))
janela.append(tmp2)
linha = data.readline()
#processa janela
#print len(janela)
features = []
for i in range(len(janela)):
for j in range(len(janela[i])):
if (len(features)-1) < j:
features+=[[]]
features[j].append(janela[i][j])
for j in range(len(features)):
if len(hists) < j+1:
hists.append(Histograma(features[j]))
else:
hists[j].updateHistograma(features[j])
# print j, "hist", hists[j].hist, hists[j].pivo
#print features[j]
# end=time.time()-beg
# return hists,end
resultados = []
for i in range(len(janela)):
resultados.append([])
for j in range(len(janela[i])):
resultados[-1].append(hists[j].getNormalizedValues(janela[i][j])[0])
for k in resultados:
tmp = []
tmp2= []
for l in k:
tmp.append(str(l))
tmp2.append(l)
resFinal.append(tmp2)
linhaSaida = ",".join(tmp)
saida.write(linhaSaida+"\n")
end=time.time()-beg
# # saida.write(str('processing time : '+str(end))+'\n')
##return hists,end #to retunr the object
return resFinal,end
# #print janela
if __name__ == "__main__":
#output_file=open(str(sys.argv[1])+'-output','w')
print 'proposal starting... '+'\n'
proposal,timeProposal=Main().run()
print 'proposal finished... '+'\n'
print 'original started...'+'\n'
old=Original().run()
print 'maxMin started....'+'\n'
maxMin,timeMaxmin=maxMin_Normalizer().run()
'''
to calculate the mean square error
'''
original_proposal=[]
original_max=[]
original=np.asfarray(old)
proposal=np.asfarray(proposal)
maxMin=np.asfarray(maxMin)
for i in range(len(proposal[0])):
original_proposal.append(mean_squared_error(original[:,i],proposal[:,i]))
original_max.append(mean_squared_error(original[:,i],maxMin[:,i]))
# #MSEproposal=mean_squared_error(original,proposal)
# #MSEmaxMin=mean_squared_error(original,maxMin)
MSEproposal=sum(original_proposal)/float(len(original_proposal))
MSEmaxMin=sum(original_max)/float(len(original_max))
output_file.write(str(MSEproposal)+','+str(timeProposal)+'\n')
# #output_file.write('Proposal Procesing time: '+ str(timeProposal)+'\n')
output_file.write(str(MSEmaxMin)+','+str(timeMaxmin)+'\n')
# #output_file.write('MaxMin Procesing time: '+ str(timeMaxmin)+'\n')
output_file.close()