如下所示:
to_categorical(y, num_classes=None, dtype=’float32′)
将整型标签转为onehot。y为int数组,num_classes为标签类别总数,大于max(y)(标签从0开始的)。
返回:如果num_classes=None,返回len(y) * [max(y) 1](维度,m*n表示m行n列矩阵,下同),否则为len(y) * num_classes。说出来显得复杂,请看下面实例。
代码语言:javascript复制import keras
ohl=keras.utils.to_categorical([1,3])
# ohl=keras.utils.to_categorical([[1],[3]])
print(ohl)
"""
[[0. 1. 0. 0.]
[0. 0. 0. 1.]]
"""
ohl=keras.utils.to_categorical([1,3],num_classes=5)
print(ohl)
"""
[[0. 1. 0. 0. 0.]
[0. 0. 0. 1. 0.]]
"""
该部分keras源码如下:
代码语言:javascript复制def to_categorical(y, num_classes=None, dtype='float32'):
"""Converts a class vector (integers) to binary class matrix.
E.g. for use with categorical_crossentropy.
# Arguments
y: class vector to be converted into a matrix
(integers from 0 to num_classes).
num_classes: total number of classes.
dtype: The data type expected by the input, as a string
(`float32`, `float64`, `int32`...)
# Returns
A binary matrix representation of the input. The classes axis
is placed last.
"""
y = np.array(y, dtype='int')
input_shape = y.shape
if input_shape and input_shape[-1] == 1 and len(input_shape) 1:
input_shape = tuple(input_shape[:-1])
y = y.ravel()
if not num_classes:
num_classes = np.max(y) 1
n = y.shape[0]
categorical = np.zeros((n, num_classes), dtype=dtype)
categorical[np.arange(n), y] = 1
output_shape = input_shape (num_classes,)
categorical = np.reshape(categorical, output_shape)
return categorical
补充知识:keras笔记——keras.utils.to_categoracal()函数
keras.utils.to_categoracal (y, num_classes=None, dtype=’float32′)
将整形标签转为onehot,y为int数组,num_classes为标签类别总数,大于max (y),(标签从0开始的)。
返回:
如果num_classes=None, 返回 len(y)*[max(y) 1] (维度,m*n表示m行n列矩阵),否则为len(y)*num_classes。
以上这篇浅谈keras中的keras.utils.to_categorical用法就是小编分享给大家的全部内容了,希望能给大家一个参考。