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YZ Sözlüğü

Yapay Zekanın tam sözlüğü

162
kategoriler
2.032
alt kategoriler
23.060
terimler
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terimler

Deep Survival Analysis

Application of deep neural networks to model survival data, enabling the capture of complex non-linear relationships between covariates and event risk.

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Time Censoring

Phenomenon where the event of interest is not observed for some units before the end of the study, creating incomplete data that requires specific analysis methods.

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Hazard Function

Function describing the instantaneous rate of event occurrence at time t, conditional on survival up to that time, modeled differently in deep learning approaches.

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DeepHit

Deep neural network architecture that directly models the discrete survival distribution without parametric assumptions on the shape of the hazard function.

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Right Censoring

The most common type of censoring in survival analysis where the survival time is known to be greater than a certain observed value, but the exact value is unknown.

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Survival Loss

Loss function specifically designed for survival analysis models, accounting for both observed event times and censored data in optimization.

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Deep Cox Network

Extension of the Cox proportional hazards model using a neural network to learn a non-linear representation of covariates while maintaining the proportional hazards assumption.

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Neural Kaplan-Meier

Deep learning approach that estimates the survival function by combining the flexibility of neural networks with the non-parametric properties of the Kaplan-Meier estimator.

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Informative Censoring

Situation where the censoring mechanism is related to the event risk, violating the non-informative censoring assumption and requiring more sophisticated survival models.

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Time-to-Event Prediction

Prediction task aimed at estimating the time until the occurrence of a specific event, using deep learning models to handle the complexity and censoring of data.

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Survival Curve

Graphical representation of the probability of survival over time, estimated by deep learning models from training data and individual predictions.

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Concordance Index (C-index)

Evaluation metric specific to survival analysis measuring the model's ability to correctly order event times between pairs of individuals.

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Dynamic Deep Survival Models

Deep learning models that incorporate longitudinal or sequential data to continuously update survival predictions over time.

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Competing Risks

Situation where multiple types of mutually exclusive events can occur, requiring multi-task deep learning models to estimate cause-specific risks.

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Recurrent Neural Networks for Survival

Use of RNNs or LSTMs to model sequential survival data where covariates evolve over time before the occurrence of the event.

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Attention-based Survival Models

Deep learning architectures using attention mechanisms to identify the most influential covariates on survival risk at different time points.

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Frailty Models in Deep Learning

Extension of deep learning survival models incorporating random effects (frailty) to capture unobserved heterogeneity between individuals or groups.

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SurvivalGAN

Generative adversarial networks specifically designed to synthesize realistic survival data preserving censoring characteristics and time distributions.

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Multi-Task Survival Learning

Learning approach where the survival model is trained simultaneously on multiple related tasks to improve generalization and capture shared relationships.

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