Пример #1
0
def main():
    filename = "SPECT.csv"
    attributes = []
    rows = []
    with open(filename, 'r') as csvfile:
        csvreader = csv.reader(csvfile)

        attributes = next(csvreader)
        for row in csvreader:
            rows.append(row)

    k = 10
    accuracy = []
    summ = 0

    for i in range(1, k + 1):
        after_fold = fold(rows, i, k)
        train_set = after_fold[0]
        test_set = after_fold[1]
        acc = train(train_set, attributes, test_set)
        accuracy.append(acc)
    print("The Accuracy for each fold is as follows : ")
    for i in accuracy:
        summ += i
        print(math.ceil(i))
    summ = summ / k
    print("Average Accuracy : ", summ)
Пример #2
0
def main():
    filename = "IRIS.csv"
    attributes = []
    rows = []
    with open(filename, 'r') as csvfile:
        csvreader = csv.reader(csvfile)

        attributes = next(csvreader)
        for row in csvreader:
            rows.append(row)

    print(len(attributes))
    k = 10
    #n=int(input("Enter the number of nodes at hidden layer : "))
    n = 5
    max_acc = 0
    threshold = 0.1
    for j in range(k):
        for i in range(1, k + 1):
            constant = i / 10
            Rows = shuffle(rows)
            accuracy = []
            Pre = []
            Re = []
            for i in range(1, k + 1):
                after_fold = fold(Rows, i, k)
                train_set = after_fold[0]
                test_set = after_fold[1]
                intermediate = train(train_set, test_set, attributes, constant,
                                     n, threshold)
                acc = intermediate[0]
                Precision = intermediate[1]
                Recall = intermediate[2]
                accuracy.append(acc)
                Pre.append(Precision)
                Re.append(Recall)
            acc_sum = 0
            pre_sum = 0
            re_sum = 0
            for i in accuracy:
                print(i)
            for i in accuracy:
                acc_sum += i
            for i in Pre:
                pre_sum += i
            for i in accuracy:
                re_sum += i
            if (acc_sum / k) > max_acc:
                max_acc = acc_sum / k
                max_constant = constant
            print("For Learning Rate : ", constant, " Accuracy : ",
                  acc_sum / k)
            print("Precision : ", pre_sum / k, " Recall : ", re_sum / k)
            print("--------------------------------------------")
        print("Maximum Accuracy : ", max_acc, " For learning rate : ",
              max_constant, " For Threshold : ", threshold)
        threshold += 0.1
def naive_bayes(k, rows, attributes):
    accuracy = []
    for i in range(1, k + 1):
        after_fold = fold(rows, i, k)
        train_set = after_fold[0]
        test_set = after_fold[1]
        #print(len(train_set),"------------------")
        acc = train(train_set, attributes, test_set)
        accuracy.append(acc)
    summ = 0
    for i in accuracy:
        summ += i
    return (summ / k)
def main():
	filename="IRIS.csv"
	attributes=[]
	rows=[]
	with open(filename,'r') as csvfile:
		csvreader=csv.reader(csvfile)

		attributes=next(csvreader)
		for row in csvreader:
			rows.append(row)

	print(len(attributes))
	k=10
	acc_final=[]
	for i in range(1,k+1):
		constant=i/10
		#constant=0.2
		Rows=shuffle(rows)
		accuracy=[]
		Pre=[]
		Re=[]
		for i in range(1,k+1):
			after_fold=fold(rows,i,k)
			train_set=after_fold[0]
			test_set=after_fold[1]
			intermediate=train(train_set,test_set,attributes,constant)
			acc=intermediate[0]
			Precision=intermediate[1]
			Recall=intermediate[2]
			accuracy.append(acc)
			Pre.append(Precision)
			Re.append(Recall)
		#print(accuracy)
		acc_sum=0
		pre_sum=0
		re_sum=0
		for i in accuracy:
			print(i)
		for i in accuracy:
			acc_sum+=i
		for i in Pre:
			pre_sum+=i
		for i in accuracy:
			re_sum+=i
		acc_final.append(acc_sum/k)
		print("For Learning Rate : ",constant," Accuracy : ",acc_sum/k)
		print("Precision : ",pre_sum/k," Recall : ",re_sum/k)