Example #1
0
def hypotheses_expected_final_entropy(action, data=None, normalized=False):

	#normalize p_data_action, p_theory_data not necessarily, just tell me
	norm=0
	for d in world.possible_data(action):
	 	norm+=model.p_data_action(d,action,data)

	expval=0
	for d in world.possible_data(action):
		alldata=[d] if data is None else [d]+data
		expval+=utils.H(lambda hs: model.p_hypotheses_data(hs,alldata),\
					model.fullh_space, False)*model.p_data_action(d,action,data)
	
	return expval/norm
Example #2
0
def hypotheses_expected_final_entropy(action, data=None, normalized=False):

    #normalize p_data_action, p_theory_data not necessarily, just tell me
    norm = 0
    for d in world.possible_data(action):
        norm += model.p_data_action(d, action, data)

    expval = 0
    for d in world.possible_data(action):
        alldata = [d] if data is None else [d] + data
        expval+=utils.H(lambda hs: model.p_hypotheses_data(hs,alldata),\
           model.fullh_space, False)*model.p_data_action(d,action,data)

    return expval / norm
Example #3
0
    def success_probability(self, action, prev_data=[]):

        data_no, data_yes = world.possible_data(action)
        p_yes = model.p_data_action(data_yes, action, prev_data)
        p_no = model.p_data_action(data_no, action, prev_data)

        return p_yes / (p_yes + p_no)
Example #4
0
	def success_probability(self, action, prev_data=[]):

		data_no, data_yes=world.possible_data(action)
		p_yes=model.p_data_action(data_yes, action, prev_data)
		p_no=model.p_data_action(data_no, action, prev_data)
		
		return p_yes/(p_yes+p_no)
Example #5
0
def theory_expected_entropy_gain(action, data=None):
	
	#normalize p_data_action
	#p_theory_data SHOULD BE NORMALIZED.
	norm=0
	for d in world.possible_data(action):
	 	norm+=model.p_data_action(d,action,data)

	expval=0
	for d in world.possible_data(action):
		alldata=[d] if data is None else [d]+data
		#print utils.H(lambda t: model.p_theory_data(t, alldata), model.t_space)
		#print 'p_d_a', model.p_data_action(d,action,data)
		expval+=(utils.H(lambda t: model.p_theory_data(t, alldata, normalized=True)\
				, model.t_space)-\
				 utils.H(lambda t: model.p_theory_data(t, data, normalized=True)\
				, model.t_space))*\
				model.p_data_action(d,action,data)

	return expval/norm
Example #6
0
def theory_expected_entropy_gain(action, data=None):

    #normalize p_data_action
    #p_theory_data SHOULD BE NORMALIZED.
    norm = 0
    for d in world.possible_data(action):
        norm += model.p_data_action(d, action, data)

    expval = 0
    for d in world.possible_data(action):
        alldata = [d] if data is None else [d] + data
        #print utils.H(lambda t: model.p_theory_data(t, alldata), model.t_space)
        #print 'p_d_a', model.p_data_action(d,action,data)
        expval+=(utils.H(lambda t: model.p_theory_data(t, alldata, normalized=True)\
          , model.t_space)-\
           utils.H(lambda t: model.p_theory_data(t, data, normalized=True)\
          , model.t_space))*\
          model.p_data_action(d,action,data)

    return expval / norm
Example #7
0
def p_data_action(datapoint, action, prev_data=None):
	if datapoint in world.possible_data(action):
		pda=0
		machine=action[1]
		for t in t_space:
			for h in hf.create_all_hypotheses(machine):
				pda+=h.single_likelihood(datapoint)*\
					 t.hypothesis_likelihood(h)*t.prior()
						#h.unnormalized_posterior(prev_data)
		return pda
	else:
		return 0
Example #8
0
def p_data_action(datapoint, action, prev_data=[]):
    """UNNORMALIZED --CHECKED"""
    if datapoint in world.possible_data(action):
        pda = 0
        machine = action[1]
        for t in t_space:
            for h in singleh_space:
                pda+=p_singledata_hypothesis(datapoint,h,machine)*\
                   p_hypothesis_theorydata(h,machine,t,prev_data)*\
                  p_theory_data(t,prev_data)#, normalized=True) I don't need to normalize, this gives an extra constant

        return pda
    else:
        return 0
Example #9
0
def p_data_action(datapoint, action, prev_data=[]):
	"""UNNORMALIZED --CHECKED"""
	if datapoint in world.possible_data(action):
		pda=0
		machine=action[1]
		for t in t_space:
			for h in singleh_space:
				pda+=p_singledata_hypothesis(datapoint,h,machine)*\
				 	 p_hypothesis_theorydata(h,machine,t,prev_data)*\
					 p_theory_data(t,prev_data)#, normalized=True) I don't need to normalize, this gives an extra constant				
				 
		return pda
	else:
		return 0
Example #10
0
def p_data_action(datapoint, action, prev_data=[]):
    """UNNORMALIZED"""
    if datapoint in world.possible_data(action):
        pda = 0
        machine = action[1]
        for t in t_space:
            #for h in hf.create_all_hypotheses(machine):
            for h in singleh_space:
                pda+=p_singledata_hypothesis(datapoint, h, machine)*\
                  p_hypothesis_theory(h,machine,t)*p_theory(t)
                #p_hypothesis_data(h, machine, prev_data)
                #pda+=h.single_likelihood(datapoint)*h.unnormalized_posterior(prev_data)
        return pda  #float(pda)/len(world.possible_data(action))
    else:
        return 0
Example #11
0
def p_data_action(datapoint, action, prev_data=[]):
	"""UNNORMALIZED"""
	if datapoint in world.possible_data(action):
		pda=0
		machine=action[1]
		for t in t_space:
			#for h in hf.create_all_hypotheses(machine):
			for h in singleh_space:
				pda+=p_singledata_hypothesis(datapoint, h, machine)*\
					 p_hypothesis_theory(h,machine,t)*p_theory(t)
				     #p_hypothesis_data(h, machine, prev_data)
				#pda+=h.single_likelihood(datapoint)*h.unnormalized_posterior(prev_data)
		return pda#float(pda)/len(world.possible_data(action))
	else:
		return 0
Example #12
0
#  	print 't: {0}, p: {1}, ppost: {2}'.format(t, model.p_theory(t),\
#  													model.p_theory_data(t,d0)\
#  													)


d0p=Datapoint.Datapoint((t1,m0), True)
d1=Datapoint.Datapoint((t1,m1), True)
#for h in model.singleh_space:
#print model.p_data_action(d0p, (t1,m0), []), model.p_data_action(d0p, (t1,m0), d0)

action=(t2,m1)
n1=0
n2=0
p1s=[]
p2s=[]

d0[0].display()
print action
for dat in world.possible_data(action):
	p1=model.p_data_action(dat, (t2,m1), [])
	p2=model.p_data_action(dat, (t2,m1), d0)
	
	n1+=p1
	n2+=p2

	p1s.append(p1)
	p2s.append(p2)


print [p/n1 for p in p1s]
print [p/n2 for p in p2s]
Example #13
0
# for t in model.t_space:
#  	print 't: {0}, p: {1}, ppost: {2}'.format(t, model.p_theory(t),\
#  													model.p_theory_data(t,d0)\
#  													)

d0p = Datapoint.Datapoint((t1, m0), True)
d1 = Datapoint.Datapoint((t1, m1), True)
#for h in model.singleh_space:
#print model.p_data_action(d0p, (t1,m0), []), model.p_data_action(d0p, (t1,m0), d0)

action = (t2, m1)
n1 = 0
n2 = 0
p1s = []
p2s = []

d0[0].display()
print action
for dat in world.possible_data(action):
    p1 = model.p_data_action(dat, (t2, m1), [])
    p2 = model.p_data_action(dat, (t2, m1), d0)

    n1 += p1
    n2 += p2

    p1s.append(p1)
    p2s.append(p2)

print[p / n1 for p in p1s]
print[p / n2 for p in p2s]