Esempio n. 1
0
def accuracy(y, t):
    y, t = as_variable(y), as_variable(t)

    pred = y.data.argmax(axis=1).reshape(t.shape)
    result = (pred == t.data)
    acc = result.mean()
    return Variable(as_array(acc))
Esempio n. 2
0
def softmax_cross_entropy_simple(x, t):
    x, t = as_variable(x), as_variable(t)
    N = x.shape[0]

    p = softmax(x)
    p = clip(p, 1e-15, 1.0)
    log_p = log(p)
    tlog_p = log_p[np.arange(N), t.data]
    y = -1 * sum(tlog_p) / N
    return y
Esempio n. 3
0
def reshape(x, shape):
    """
    Def reshape

    Explanation
    -----------
    Get parameter(shape) is ndarray.shape and reshape parameter(x)'s shape from parameter(shape).
    """
    if x.shape == shape:
        return as_variable(x)
    return Reshape(shape)(x)
Esempio n. 4
0
def mean_squared_error_simple(x0, x1):
    x0, x1 = as_variable(x0), as_variable(x1)
    diff = x0 - x1
    y = sum(diff**2) / len(diff)
    return y
Esempio n. 5
0
def softmax_simple(x, axis=1):
    x = as_variable(x)
    y = exp(x)
    sum_y = sum(y, axis=axis, keepdims=True)
    return y / sum_y
Esempio n. 6
0
def sigmoid_simple(x):
    x = as_variable(x)
    y = 1 / (1 + exp(-x))
    return y
Esempio n. 7
0
def sum_to(x, shape):
    if x.shape == shape:
        return as_variable(x)
    return SumTo(shape)(x)
Esempio n. 8
0
def broadcast_to(x, shape):
    if x.shape == shape:
        return as_variable(x)
    return BroadcastTo(shape)(x)