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terminology.tex
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terminology.tex
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% !Mode:: "TeX:UTF-8"
\newglossaryentry{DL}
{
name=深度学习,
description={deep learning},
sort={deep learning},
}
\newglossaryentry{knowledge_base}
{
name=知识库,
description={knowledge base},
sort={knowledge base},
}
\newglossaryentry{ML}
{
name=机器学习,
description={machine learning},
sort={machine learning},
}
\newglossaryentry{ML_model}
{
name=机器学习模型,
description={machine learning model},
sort={machine learning model},
}
\newglossaryentry{ebv}
{
name=基本单位向量,
description={elementary basis vectors},
sort={elementary basis vectors},
}
\newglossaryentry{logistic_regression}
{
name=逻辑回归,
description={logistic regression},
sort={logistic regression},
}
\newglossaryentry{regression}
{
name=回归,
description={regression},
sort={regression},
}
\newglossaryentry{AI}
{
name=人工智能,
description={artificial intelligence},
sort={artificial intelligence},
symbol={AI}
}
\newglossaryentry{naive_bayes}
{
name=朴素贝叶斯,
description={naive Bayes},
sort={naive Bayes},
}
\newglossaryentry{representation}
{
name=表示,
description={representation},
sort={representation},
}
\newglossaryentry{representation_learning}
{
name=表示学习,
description={representation learning},
sort={representation learning},
}
\newglossaryentry{AE}
{
name=自编码器,
description={autoencoder},
sort={autoencoder},
}
\newglossaryentry{encoder}
{
name=编码器,
description={encoder},
sort={encoder},
}
\newglossaryentry{decoder}
{
name=解码器,
description={decoder},
sort={decoder},
}
\newglossaryentry{MLP}
{
name=多层感知机,
description={multilayer perceptron},
sort={multilayer perceptron},
symbol={MLP}
}
\newglossaryentry{cybernetics}
{
name=控制论,
description={cybernetics},
sort={cybernetics},
}
\newglossaryentry{connectionism}
{
name=联结主义,
description={connectionism},
sort={connectionism},
}
\newglossaryentry{ANN}
{
name=人工神经网络,
description={artificial neural network},
sort={artificial neural network},
symbol={ANN}
}
\newglossaryentry{NN}
{
name=神经网络,
description={neural network},
sort={neural network},
}
\newglossaryentry{SGD}
{
name=随机梯度下降,
description={stochastic gradient descent},
sort={stochastic gradient descent},
symbol={SGD}
}
\newglossaryentry{linear_model}
{
name=线性模型,
description={linear model},
sort={linear model},
}
\newglossaryentry{mode}
{
name=峰值,
description={mode},
sort={mode},
}
\newglossaryentry{unimodal}
{
name=单峰值,
description={unimodal},
sort={unimodal},
}
\newglossaryentry{modality}
{
name=模态,
description={modality},
sort={modality},
}
\newglossaryentry{multimodal}
{
name=多峰值,
description={multimodal},
sort={multimodal},
}
\newglossaryentry{linear_regression}
{
name=线性回归,
description={linear regression},
sort={linear regression},
}
\newglossaryentry{ReLU}
{
name=整流线性单元,
description={rectified linear unit},
sort={rectified linear unit},
symbol={ReLU}
}
\newglossaryentry{distributed_representation}
{
name=分布式表示,
description={distributed representation},
sort={distributed representation},
}
\newglossaryentry{nondistributed_representation}
{
name=非分布式表示,
description={nondistributed representation},
sort={nondistributed representation},
}
\newglossaryentry{nondistributed}
{
name=非分布式,
description={nondistributed},
sort={nondistributed},
}
\newglossaryentry{hidden_unit}
{
name=隐藏单元,
description={hidden unit},
sort={hidden unit},
}
\newglossaryentry{LSTM}
{
name=长短期记忆,
description={long short-term memory},
sort={long short-term memory},
symbol={LSTM}
}
\newglossaryentry{DBN}
{
name=深度信念网络,
description={deep belief network},
sort={deep belief network},
symbol={DBN}
}
\newglossaryentry{RNN}
{
name=循环神经网络,
description={recurrent neural network},
sort={recurrent neural network},
symbol={RNN}
}
\newglossaryentry{recurrence}
{
name=循环,
description={recurrence},
sort={recurrence},
}
\newglossaryentry{RL}
{
name=强化学习,
description={reinforcement learning},
sort={reinforcement learning},
}
\newglossaryentry{inference}
{
name=推断,
description={inference},
sort={inference},
}
\newglossaryentry{overflow}
{
name=上溢,
description={overflow},
sort={overflow},
}
\newglossaryentry{underflow}
{
name=下溢,
description={underflow},
sort={underflow},
}
\newglossaryentry{softmax}
{
name=softmax函数,
description={softmax function},
sort={softmax function},
}
\newglossaryentry{softmax_chap15}
{
name=softmax,
description={softmax},
sort={softmax},
}
\newglossaryentry{underestimation}
{
name=欠估计,
description={underestimation},
sort={underestimation},
}
\newglossaryentry{overestimation}
{
name=过估计,
description={overestimation},
sort={overestimation},
}
\newglossaryentry{softmax_unit}
{
name=softmax单元,
description={softmax unit},
sort={softmax unit},
}
\newglossaryentry{softmax_chap11}
{
name=softmax,
description={softmax},
sort={softmax},
}
\newglossaryentry{multinoulli}
{
name=Multinoulli分布,
description={multinoulli distribution},
sort={multinoulli distribution},
}
\newglossaryentry{poor_conditioning}
{
name=病态条件,
description={poor conditioning},
sort={poor conditioning},
}
\newglossaryentry{objective_function}
{
name=目标函数,
description={objective function},
sort={objective function},
}
\newglossaryentry{objective}
{
name=目标,
description={objective},
sort={objective},
}
\newglossaryentry{criterion}
{
name=准则,
description={criterion},
sort={criterion},
}
\newglossaryentry{cost_function}
{
name=代价函数,
description={cost function},
sort={cost function},
}
\newglossaryentry{cost}
{
name=代价,
description={cost},
sort={cost},
}
\newglossaryentry{loss_function}
{
name=损失函数,
description={loss function},
sort={loss function},
}
\newglossaryentry{prcurve}
{
name=PR曲线,
description={PR curve},
sort={PR curve},
}
\newglossaryentry{fscore}
{
name=F分数,
description={F-score},
sort={F-score},
}
\newglossaryentry{loss}
{
name=损失,
description={loss},
sort={loss},
}
\newglossaryentry{error_function}
{
name=误差函数,
description={error function},
sort={error function},
}
\newglossaryentry{GD}
{
name=梯度下降,
description={gradient descent},
sort={gradient descent},
}
\newglossaryentry{local_descent}
{
name=局部下降,
description={local descent},
sort={local descent},
}
\newglossaryentry{steepest}
{
name=最陡下降,
description={steepest descent},
sort={steepest descent},
}
\newglossaryentry{GA}
{
name=梯度上升,
description={gradient ascent},
sort={gradient ascent},
}
\newglossaryentry{derivative}
{
name=导数,
description={derivative},
sort={derivative},
}
\newglossaryentry{critical_points}
{
name=临界点,
description={critical point},
sort={critical point},
}
\newglossaryentry{stationary_point}
{
name=驻点,
description={stationary point},
sort={stationary point},
}
\newglossaryentry{local_minimum}
{
name=局部极小点,
description={local minimum},
sort={local minimum},
}
\newglossaryentry{minimum}
{
name=极小点,
description={minimum},
sort={minimum},
}
\newglossaryentry{local_minima}
{
name=局部极小值,
description={local minima},
sort={local minima},
}
\newglossaryentry{minima}
{
name=极小值,
description={minima},
sort={minima},
}
\newglossaryentry{global_minima}
{
name=全局极小值,
description={global minima},
sort={global minima},
}
\newglossaryentry{local_maxima}
{
name=局部极大值,
description={local maxima},
sort={local maxima},
}
\newglossaryentry{maxima}
{
name=极大值,
description={maxima},
sort={maxima},
}
\newglossaryentry{local_maximum}
{
name=局部极大点,
description={local maximum},
sort={local maximum},
}
\newglossaryentry{saddle_points}
{
name=鞍点,
description={saddle point},
sort={saddle point},
}
\newglossaryentry{global_minimum}
{
name=全局最小点,
description={global minimum},
sort={global minimum},
}
\newglossaryentry{partial_derivatives}
{
name=偏导数,
description={partial derivative},
sort={partial derivative},
}
\newglossaryentry{gradient}
{
name=梯度,
description={gradient},
sort={gradient},
}
\newglossaryentry{identifiable}
{
name=可辨认的,
description={identifiable},
sort={identifiable},
}
\newglossaryentry{directional_derivative}
{
name=方向导数,
description={directional derivative},
sort={directional derivative},
}
\newglossaryentry{line_search}
{
name=线搜索,
description={line search},
sort={line search},
}
\newglossaryentry{example}
{
name=样本,
description={example},
sort={example},
}
\newglossaryentry{hill_climbing}
{
name=爬山,
description={hill climbing},
sort={hill climbing},
}
\newglossaryentry{ill_conditioning}
{
name=病态,
description={ill conditioning},
sort={ill conditioning},
}
\newglossaryentry{jacobian}
{
name=Jacobian,
description={Jacobian},
sort={Jacobian},
}
\newglossaryentry{hessian}
{
name=Hessian,
description={Hessian},
sort={Hessian},
}
\newglossaryentry{second_derivative}
{
name=二阶导数,
description={second derivative},
sort={second derivative},
}
\newglossaryentry{curvature}
{
name=曲率,
description={curvature},
sort={curvature},
}
\newglossaryentry{taylor}
{
name=泰勒,
description={taylor},
sort={taylor},
}
\newglossaryentry{second_derivative_test}
{
name=二阶导数测试,
description={second derivative test},
sort={second derivative test},
}
\newglossaryentry{newton_method}
{
name=牛顿法,
description={Newton's method},
sort={Newton's method},
}
\newglossaryentry{second_order_method}
{
name=二阶方法,
description={second-order method},
sort={second-order method},
}
\newglossaryentry{first_order_method}
{
name=一阶方法,
description={first-order method},
sort={first-order method},
}
\newglossaryentry{lipschitz}
{
name=Lipschitz,
description={Lipschitz},
sort={Lipschitz},
}
\newglossaryentry{lipschitz_continuous}
{
name=Lipschitz连续,
description={Lipschitz continuous},
sort={Lipschitz continuous},
}
\newglossaryentry{lipschitz_constant}
{
name=Lipschitz常数,
description={Lipschitz constant},
sort={Lipschitz constant},
}
\newglossaryentry{convex_optimization}
{
name=凸优化,
description={Convex optimization},
sort={Convex optimization},
}
\newglossaryentry{nonconvex}
{
name=非凸,
description={nonconvex},
sort={nonconvex},
}
\newglossaryentry{nume_optimization}
{
name=数值优化,
description={numerical optimization},
sort={numerical optimization},
}
\newglossaryentry{constrained_optimization}
{
name=约束优化,
description={constrained optimization},
sort={constrained optimization},
}
\newglossaryentry{feasible}
{
name=可行,
description={feasible},
sort={feasible},
}
\newglossaryentry{KKT}
{
name=Karush–Kuhn–Tucker,
description={Karush–Kuhn–Tucker},
sort={Karush–Kuhn–Tucker},
symbol={KKT}
}
\newglossaryentry{generalized_lagrangian}
{
name=广义Lagrangian,
description={generalized Lagrangian},
sort={generalized Lagrangian},
}
\newglossaryentry{generalized_lagrange_function}
{
name=广义Lagrange函数,
description={generalized Lagrange function},
sort={generalized Lagrange function},
}
\newglossaryentry{equality_constraints}
{
name=等式约束,
description={equality constraint},
sort={equality constraint},
}
\newglossaryentry{inequality_constraints}
{
name=不等式约束,
description={inequality constraint},
sort={inequality constraint},
}
\newglossaryentry{regularization}
{
name=正则化,
description={regularization},
sort={regularization},
}
\newglossaryentry{regularizer}
{
name=正则化项,
description={regularizer},
sort={regularizer},
}
\newglossaryentry{regularize}
{
name=正则化,
description={regularize},
sort={regularize},
}
\newglossaryentry{generalization}
{
name=泛化,
description={generalization},
sort={generalization},
}
\newglossaryentry{generalize}
{
name=泛化,
description={generalize},
sort={generalize},
}
\newglossaryentry{underfitting}
{
name=欠拟合,
description={underfitting},
sort={underfitting},
}
\newglossaryentry{overfitting}
{
name=过拟合,
description={overfitting},
sort={overfitting},
}
\newglossaryentry{bias_sta}
{
name=偏差,
description={bias in statistics},
sort={bias in statistics},
}
\newglossaryentry{BIAS}
{
name=偏差,
description={biass},
sort={biass},
}
\newglossaryentry{bias_aff}
{
name=偏置,
description={bias in affine function},
sort={bias in affine function},
}
\newglossaryentry{variance}
{
name=方差,
description={variance},
sort={variance},
}
\newglossaryentry{ensemble}
{
name=集成,
description={ensemble},
sort={ensemble},
}
\newglossaryentry{estimator}
{
name=估计,
description={estimator},
sort={estimator},
}
\newglossaryentry{weight_decay}
{
name=权重衰减,
description={weight decay},
sort={weight decay},
}
\newglossaryentry{ridge_regression}
{
name=岭回归,
description={ridge regression},
sort={ridge regression},
}
\newglossaryentry{tikhonov_regularization}
{
name=Tikhonov正则,
description={Tikhonov regularization},
sort={Tikhonov regularization},
}
\newglossaryentry{covariance}
{
name=协方差,
description={covariance},
sort={covariance},
}
\newglossaryentry{sparse}
{
name=稀疏,
description={sparse},
sort={sparse},
}
\newglossaryentry{feature_selection}
{
name=特征选择,
description={feature selection},
sort={feature selection},
}
\newglossaryentry{feature_extractor}
{
name=特征提取器,
description={feature extractor},
sort={feature extractor},
}
\newglossaryentry{MAP}
{
name=最大后验,
description={Maximum A Posteriori},
sort={Maximum A Posteriori},
symbol={MAP}
}
\newglossaryentry{pooling}
{
name=池化,
description={pooling},
sort={pooling},
}
\newglossaryentry{dropout}
{
name=Dropout,
description={Dropout},
sort={dropout},
}
\newglossaryentry{monte_carlo}
{
name=蒙特卡罗,
description={Monte Carlo},
sort={Monte Carlo},
}
\newglossaryentry{early_stopping}
{
name=提前终止,
description={early stopping},
sort={early stopping},
}
\newglossaryentry{CNN}
{
name=卷积神经网络,
description={convolutional neural network},
sort={convolutional neural network},
symbol={CNN}
}
\newglossaryentry{mcmc}
{
name=马尔可夫链蒙特卡罗,
description={Markov Chain Monte Carlo},
symbol={MCMC},
sort={Markov Chain Monte Carlo},
}
\newglossaryentry{tempering_transition}
{
name=回火转移,
description={tempered transition},
sort={tempered transition},
}
\newglossaryentry{markov_chain}
{
name=马尔可夫链,
description={Markov Chain},
sort={Markov Chain},
}
\newglossaryentry{harris_chain}
{
name=哈里斯链,
description={Harris Chain},
sort={Harris Chain},
}
\newglossaryentry{minibatch}
{
name=小批量,
description={minibatch},
sort={minibatch},
}
\newglossaryentry{importance_sampling}
{
name=重要采样,
description={Importance Sampling},
sort={Importance Sampling},
}
\newglossaryentry{undirected_model}
{
name=无向模型,
description={undirected Model},
sort={undirected Model},
}
\newglossaryentry{partition_function}
{
name=配分函数,
description={Partition Function},
sort={Partition Function},
}
\newglossaryentry{law_of_large_numbers}
{
name=大数定理,
description={Law of large number},
sort={Law of large number},
}
\newglossaryentry{central_limit_theorem}
{
name=中心极限定理,
description={central limit theorem},
sort={central limit theorem},
}
\newglossaryentry{energy_based_model}
{
name=基于能量的模型,
description={Energy-based model},
symbol={EBM},
sort={Energy-based model},
}