import numpy as np def softmax(x): """Compute softmax values for each sets of scores in x.""" pass # TODO: Compute and return softmax(x) x = np.array(x) x = np.exp(x) x.astype('float32') if x.ndim == 1: sumcol = sum(x) for i in range(x.size): x[i] = x[i]/float(sumcol) if x.ndim > 1: sumcol = x.sum(axis = 0) for row in x: for i in range(row.size): row[i] = row[i]/float(sumcol[i]) return x #测试结果 scores = [3.0,1.0, 0.2] print softmax(scores)
import numpy as np def softmax(x): return np.exp(x)/np.sum(np.exp(x),axis=0) #测试结果 scores = [3.0,1.0, 0.2] print softmax(scores)
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