Machine learning terms: Difference between revisions

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{{see also|Machine learning|Artificial intelligence terms}}
{{see also|Machine learning|Artificial intelligence terms}}
==Fundamentals==
==Fundamentals==
*[[accuracy]]
*[[activation function]]
*[[artificial intelligence]]
*[[AUC (Area under the ROC curve)]]
*[[backpropagation]]
*[[batch]]
*[[batch size]]
*[[bias (ethics/fairness)]]
*[[bias (math) or bias term]]
*[[binary classification]]
*[[bucketing]]
*[[categorical data]]
*[[class]]
*[[classification model]]
*[[classification threshold]]
*[[class-imbalanced dataset]]
*[[clipping]]
*[[confusion matrix]]
*[[continuous feature]]
*[[convergence]]
*[[DataFrame]]
*[[data set or dataset]]
*[[deep model]]
*[[dense feature]]
*[[depth]]
*[[discrete feature]]
*[[dynamic]]
*[[dynamic model]]
*[[early stopping]]
*[[embedding layer]]
*[[epoch]]
*[[example]]
*[[false negative (FN)]]
*[[false positive (FP)]]
*[[false positive rate (FPR)]]
*[[feature]]
*[[feature cross]]
*[[feature engineering]]
*[[feature set]]
*[[feature vector]]
*[[feedback loop]]
*[[generalization]]
*[[generalization curve]]
*[[gradient descent]]
*[[ground truth]]
*[[hidden layer]]
*[[hyperparameter]]
*[[independently and identically distributed (i.i.d)]]
*[[inference]]
*[[input layer]]
*[[interpretability]]
*[[iteration]]
*[[L0 regularization]]
*[[L1 loss]]
*[[L1 regularization]]
*[[L2 loss]]
*[[L2 regularization]]
*[[label]]
*[[labeled example]]
*[[lambda]]
*[[layer]]
*[[learning rate]]
*[[linear model]]
*[[linear]]
*[[linear regression]]
*[[logistic regression]]
*[[Log Loss]]
*[[log-odds]]
*[[loss]]
*[[loss curve]]
*[[loss function]]
*[[machine learning]]
*[[majority class]]
*[[mini-batch]]
*[[minority class]]
*[[model]]
*[[multi-class classification]]
*[[negative class]]
*[[neural network]]
*[[neuron]]
*[[node (neural network)]]
*[[nonlinear]]
*[[nonstationarity]]
*[[normalization]]
*[[numerical data]]
*[[offline]]
*[[offline inference]]
*[[one-hot encoding]]
*[[one-vs.-all]]
*[[online]]
*[[online inference]]
*[[output layer]]
*[[overfitting]]
*[[pandas]]
*[[parameter]]
*[[positive class]]
*[[post-processing]]
*[[prediction]]
*[[proxy labels]]
*[[rater]]
*[[Rectified Linear Unit (ReLU)]]
*[[regression model]]
*[[regularization]]
*[[regularization rate]]
*[[ReLU]]
*[[ROC (receiver operating characteristic) Curve]]
*[[Root Mean Squared Error (RMSE)]]
*[[sigmoid function]]
*[[softmax]]
*[[sparse feature]]
*[[sparse representation]]
*[[sparse vector]]
*[[squared loss]]
*[[static]]
*[[static inference]]
*[[stationarity]]
*[[stochastic gradient descent (SGD)]]
*[[supervised machine learning]]
*[[synthetic feature]]
*[[test loss]]
*[[training]]
*[[training loss]]
*[[training-serving skew]]
*[[training set]]
*[[true negative (TN)]]
*[[true positive (TP)]]
*[[true positive rate (TPR)]]
*[[underfitting]]
*[[unlabeled example]]
*[[unsupervised machine learning]]
*[[validation]]
*[[validation loss]]
*[[validation set]]
*[[weight]]
*[[weighted sum]]
*[[Z-score normalization]]

Revision as of 22:36, 27 January 2023

See also: Machine learning and Artificial intelligence terms

Fundamentals