Exemplo n.º 1
0
Arquivo: vb4.py Projeto: dkiela/thesis
def qLoves(x,y):
	global parameters

	lB=bsim.loadBrain('vb-exp-BReport.txt')
	lG=bsim.loadBrain('vb-exp-GReport.txt')
	lT=bsim.loadBrain('vb-exp-TReport.txt')
	lS=bsim.loadBrain('vb-exp-SReport.txt')
	_,spikesB=brainalyze.countSpikes(lB,10000*(parameters['ENDSIM']/2))
	_,spikesG=brainalyze.countSpikes(lG,10000*(parameters['ENDSIM']/2))
	_,spikesT=brainalyze.countSpikes(lT,10000*(parameters['ENDSIM']/2))
	_,spikesS=brainalyze.countSpikes(lS,10000*(parameters['ENDSIM']/2))

	if x[1]=='B':
		spikesA=spikesB
	elif x[1]=='G':
		spikesA=spikesG
	if y[1]=='B':
		spikesO=spikesB
	elif y[1]=='G':
		spikesO=spikesG

	cBT=brainalyze.corr(spikesB,spikesT)#/(brainalyze.corr(spikesT,spikesS)/1)
	cGT=brainalyze.corr(spikesG,spikesT)#/(brainalyze.corr(spikesT,spikesS)/1)
	cBS=brainalyze.corr(spikesB,spikesS)#/(brainalyze.corr(spikesS,spikesT)/1)
	cGS=brainalyze.corr(spikesG,spikesS)#/(brainalyze.corr(spikesS,spikesT)/1)

	cAT=brainalyze.corr(spikesA,spikesT)#/(brainalyze.corr(spikesS,spikesT)/1)
	cOT=brainalyze.corr(spikesO,spikesT)#/(brainalyze.corr(spikesS,spikesT)/1)
	cAS=brainalyze.corr(spikesA,spikesS)#/(brainalyze.corr(spikesS,spikesT)/1)
	cOS=brainalyze.corr(spikesO,spikesS)#/(brainalyze.corr(spikesS,spikesT)/1)

	print "john = Lover (cBT)", cBT*100
	print "mary = Lover (cGT)", cGT*100
	print "john = Lovee (cBS)", cBS*100
	print "mary = Lovee (cGS)", cGS*100
	print "x = Lover (cAT)", cAT*100
	print "y = Lover (cOT)", cOT*100
	print "x = Lovee (cAS)", cAS*100
	print "y = Lovee (cOS)", cOS*100

	if x != y and cAT > cOT and cOS > cAS:
		return True
	elif x == y:
		# this is a bit of a hack, but can be made not to depend on x or y
		if x==john and cBT > cBS and cGT > cGS and cBT >= cGT and cBS >= cGS:
			return True
		elif x==mary and cBS > cBT and cGS > cGT and cGT >= cBT and cGS >= cBS:
			return True
		else:
			return False
	else:
		return False
Exemplo n.º 2
0
def Loves(x,y):
	if not ran:
		if x == X or x == Y or y == X or y == Y:
			print "Error: variables not allowed in declarative phase."
			return False
		global bradb
		# inject stimulus object
		injectBrain(bradb, agent, rates[x], 0.0, parameters['LEARNING'])
		injectBrain(bradb, object, rates[y], 0.0, parameters['LEARNING'])
		print "Stored"
	else:
		lX=loadBrain(parameters['BRAINNAME']+'-'+x+'Report.txt')
		lA=loadBrain(parameters['BRAINNAME']+'-'+agent+'Report.txt')
		lY=loadBrain(parameters['BRAINNAME']+'-'+y+'Report.txt')
		lO=loadBrain(parameters['BRAINNAME']+'-'+object+'Report.txt')

		_,spikesX=brainalyze.countSpikes(lX,10000*parameters['LEARNING'])
		_,spikesA=brainalyze.countSpikes(lA,10000*parameters['LEARNING'])

		_,spikesY=brainalyze.countSpikes(lY,10000*parameters['LEARNING'])
		_,spikesO=brainalyze.countSpikes(lO,10000*parameters['LEARNING'])

		xAg = brainalyze.corr(spikesX,spikesA)
		yAg = brainalyze.corr(spikesY,spikesA)
		xObj = brainalyze.corr(spikesX,spikesO)
		yObj = brainalyze.corr(spikesY,spikesO)

                if x == mary:
                        xAgc=xAg/ma_nl
                        yAgc=yAg/ja_nl
                if x == john:
                        xAgc=xAg/ja_nl
                        yAgc=yAg/ma_nl
                if y == mary:
                        yObjc=yObj/mo_nl
                        xObjc=xObj/jo_nl
                if y == john:
                        yObjc=yObj/jo_nl
                        xObjc=xObj/mo_nl

		print "X Agent, Y Agent ", xAg,yAg
		print "X Object, Y Object ", xObj,yObj
#		print "Coeff xAg/yAg ", xAg/yAg
#		print "Coeff yObj/xObj", yObj/xObj
		print "(Corrected) X Agent, Y Agent ", xAgc,yAgc
		print "(Corrected) X Object, Y Object ", xObjc,yObjc

		if xAgc > yAgc and yObjc > xObjc:
			return True
		else:
			return False
Exemplo n.º 3
0
x=0
y=0
while x < len(rates):
	while y < len(rates):
		print rates[x],rates[y]
		lJ=brainsim8.loadBrain('vb-exp'+str(x)+'-'+str(y)+'-JReport.txt')
		lM=brainsim8.loadBrain('vb-exp'+str(x)+'-'+str(y)+'-MReport.txt')
		lX=brainsim8.loadBrain('vb-exp'+str(x)+'-'+str(y)+'-XReport.txt')
		lY=brainsim8.loadBrain('vb-exp'+str(x)+'-'+str(y)+'-YReport.txt')
		lAP=brainsim8.loadBrain('vb-exp'+str(x)+'-'+str(y)+'-APReport.txt')
		lOP=brainsim8.loadBrain('vb-exp'+str(x)+'-'+str(y)+'-OPReport.txt')
		lAQ=brainsim8.loadBrain('vb-exp'+str(x)+'-'+str(y)+'-AQReport.txt')
		lOQ=brainsim8.loadBrain('vb-exp'+str(x)+'-'+str(y)+'-OQReport.txt')
		lI=brainsim8.loadBrain('vb-exp'+str(x)+'-'+str(y)+'-IReport.txt')
		_,spikesJ=brainalyze.countSpikes(lJ,10000*(parameters['ENDSIM']/2))
		_,spikesM=brainalyze.countSpikes(lM,10000*(parameters['ENDSIM']/2))
		_,spikesX=brainalyze.countSpikes(lX,10000*(parameters['ENDSIM']/2))
		_,spikesY=brainalyze.countSpikes(lY,10000*(parameters['ENDSIM']/2))
		_,spikesAP=brainalyze.countSpikes(lAP,10000*(parameters['ENDSIM']/2))
		_,spikesOP=brainalyze.countSpikes(lOP,10000*(parameters['ENDSIM']/2))
		_,spikesAQ=brainalyze.countSpikes(lAQ,10000*(parameters['ENDSIM']/2))
		_,spikesOQ=brainalyze.countSpikes(lOQ,10000*(parameters['ENDSIM']/2))
		cJX=brainalyze.corr(spikesJ,spikesX)
		cMX=brainalyze.corr(spikesM,spikesX)
		cJY=brainalyze.corr(spikesJ,spikesY)
		cMY=brainalyze.corr(spikesM,spikesY)

		cXAP=brainalyze.corr(spikesX,spikesAP)
		cXOP=brainalyze.corr(spikesX,spikesOP)
		cXAQ=brainalyze.corr(spikesX,spikesAQ)
Exemplo n.º 4
0
	plt.subplot(512)
	plt.plot(sp,lG,'b')
	plt.subplot(513)
	plt.plot(sp,lT,'b')
	plt.subplot(514)
	plt.plot(sp,lS,'b')
	plt.subplot(515)
	plt.plot(sp,lI,'b')
	plt.show()

brainsim.simBrain(parameters)
lB=brainsim.loadBrain('vb-exp-BReport.txt')
lG=brainsim.loadBrain('vb-exp-GReport.txt')
lT=brainsim.loadBrain('vb-exp-TReport.txt')
lS=brainsim.loadBrain('vb-exp-SReport.txt')
_,spikesB=brainalyze.countSpikes(lB,10000*(parameters['ENDSIM']/2))
_,spikesG=brainalyze.countSpikes(lG,10000*(parameters['ENDSIM']/2))
_,spikesT=brainalyze.countSpikes(lT,10000*(parameters['ENDSIM']/2))
_,spikesS=brainalyze.countSpikes(lS,10000*(parameters['ENDSIM']/2))
cBT=brainalyze.corr(spikesB,spikesT)/(brainalyze.corr(spikesT,spikesS)/1)
cGT=brainalyze.corr(spikesG,spikesT)/(brainalyze.corr(spikesT,spikesS)/1)
cBS=brainalyze.corr(spikesB,spikesS)/(brainalyze.corr(spikesS,spikesT)/1)
cGS=brainalyze.corr(spikesG,spikesS)/(brainalyze.corr(spikesS,spikesT)/1)

#cBS=cBS+10
#cGS=cGS+10
#cBS=(cBS/cGS)*cBT
#cGS=cBT

print "Blue Triangle", cBT*100
print "Green Triangle", cGT*100