Summary
The sixth part of artificial intelligence term translation, including words starting with U, V, W, X, Y, and Z!
U
English term |
Chinese translation |
commonly used abbreviations |
Remark |
Ugly Duckling Theorem |
ugly duckling theorem |
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Unbiased |
Unbiased |
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Unbiased Estimate |
unbiased estimate |
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Unbiased Sample Variance |
unbiased sample variance |
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Unconstrained Optimization |
unconstrained optimization |
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Undercomplete |
incomplete |
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Under determined |
Underdetermined |
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Underestimation |
underestimated |
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Underfitting |
underfitting |
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machine learning |
Underfitting Regime |
underfitting mechanism |
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Underflow |
underflow |
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Underlying |
potential |
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Underlying Cause |
potential cause |
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Undersampling |
undersampling |
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Understandability |
intelligibility |
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Undirected |
undirected |
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Undirected Graph |
Undirected graph |
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Undirected Graphical Model |
undirected graph model |
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Undirected Model |
undirected model |
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Unequal Cost |
unequal cost |
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Unfolded Graph |
Expanded view |
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Unfolding |
expand |
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Unidirectional Language Model |
one-way language model |
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Unification |
oneness |
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Uniform Distribution |
Evenly distributed |
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Uniform Sampling |
uniform sampling |
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Uniform Stability |
uniform stability |
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unigram |
unary grammar |
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Unimodal |
single peak |
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Unit |
unit |
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Unit Norm |
unit norm |
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Unit Test |
unit test |
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Unit Variance |
unit variance |
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Unit Vector |
unit vector |
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Unit-Step Function |
unit step function |
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Unitary Matrix |
unitary matrix |
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Univariate Decision Tree |
Univariate Decision Tree |
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Universal Approximation Theorem |
general approximation theorem |
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Universal Approximator |
Universal Approximator |
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Universal Function Approximator |
通用函数近似器 |
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Unknown Token |
未知词元 |
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Unlabeled |
未标记 |
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Unnormalized Probability Function |
未规范化概率函数 |
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Unprojection |
反投影 |
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Unshared Convolution |
非共享卷积 |
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Unsupervised |
无监督 |
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Unsupervised Feature Learning |
无监督特征学习 |
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Unsupervised Layer-Wise Training |
无监督逐层训练 |
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Unsupervised Learning Algorithm |
无监督学习算法 |
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Unsupervised Learning |
无监督学习 |
UL |
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Unsupervised Pretraining |
无监督预训练 |
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Update Gate |
更新门 |
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Update Model Parameter |
迭代模型参数 |
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Upper Confidence Bounds |
上置信界限 |
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Upsampling |
上采样 |
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V
英文术语 |
中文翻译 |
常用缩写 |
备注 |
V-Structure |
V型结构 |
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Valid |
有效 |
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Validation Set |
验证集 |
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Validity Index |
有效性指标 |
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Value Function |
价值函数 |
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Value Function Approximation |
值函数近似 |
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Value Iteration |
值迭代 |
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Vanishing And Exploding Gradient Problem |
梯度消失与爆炸问题 |
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Vanishing Gradient |
梯度消失 |
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Vanishing Gradient Problem |
梯度消失问题 |
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Vapnik-Chervonenkis Dimension |
VC维 |
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Variable Elimination |
变量消去 |
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Variance |
方差 |
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Variance Reduction |
方差减小 |
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Variance Scaling |
方差缩放 |
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Variational Autoencoder |
变分自编码器 |
VAE |
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Variational Bayesian |
变分贝叶斯 |
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Variational Derivative |
变分导数 |
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Variational Distribution |
变分分布 |
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Variational Dropout |
变分暂退法 |
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Variational EM Algorithm |
变分EM算法 |
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Variational Free Energy |
变分自由能 |
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Variational Inference |
变分推断 |
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Vector |
向量 |
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Vector Space |
向量空间 |
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Vector Space Model |
向量空间模型 |
VSM |
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Vectorization |
向量化 |
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Version Space |
版本空间 |
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Virtual Adversarial Example |
虚拟对抗样本 |
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Virtual Adversarial Training |
虚拟对抗训练 |
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Visible Layer |
可见层 |
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Visible Variable |
可见变量 |
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Viterbi Algorithm |
维特比算法 |
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Vocabulary |
词表 |
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Von Neumann Architecture |
冯 · 诺伊曼架构 |
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Voted Perceptron |
投票感知器 |
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Version Control |
版本控制 |
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W
英文术语 |
中文翻译 |
常用缩写 |
备注 |
Wake Sleep |
醒眠 |
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Warp |
线程束 |
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Wasserstein Distance |
Wasserstein距离 |
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Wasserstein GAN |
Wasserstein生成对抗网络 |
WGAN |
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Weak Classifier |
弱分类器 |
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Weak Duality |
弱对偶性 |
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Weak Learner |
弱学习器 |
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Weakly Learnable |
弱可学习 |
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Weakly Supervised Learning |
弱监督学习 |
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Weight |
权重 |
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Weight Decay |
权重衰减 |
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Weight Normalization |
权重规范化 |
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Weight Scaling Inference Rule |
权重比例推断规则 |
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Weight Sharing |
权共享 |
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Weight Space Symmetry |
权重空间对称性 |
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Weight Vector |
权值向量 |
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Weighted Distance |
加权距离 |
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Weighted Voting |
加权投票 |
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Whitening |
白化 |
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Wide Convolution |
宽卷积 |
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Width |
宽度 |
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Winner-Take-All |
胜者通吃 |
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Within-Class Scatter Matrix |
Intra-class scatter matrix |
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Word Embedding |
word embedding |
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Word Sense Disambiguation |
word sense disambiguation |
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Word Vector |
word vector |
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Word Vector Space Model |
word vector space model |
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Word-Document Matrix |
word-text matrix |
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Word-Topic Matrix |
word-topic matrix |
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Working Memory |
working memory |
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Wrapper Method |
wrapped method |
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Workflow |
workflow |
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X
Y
Z
English term |
Chinese translation |
commonly used abbreviations |
Remark |
Z-Score Normalization |
Z-value normalization |
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Zero Mean |
zero mean |
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Zero Padding |
zero padding |
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Zero Tensor |
zero tensor |
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Zero-Centered |
Zero centralized |
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Zero-Data Learning |
Zero data learning |
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Zero-Shot Learning |
zero trial learning |
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Zipf’s Law |
Zipf's law |
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