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Glosarium AI

Kamus lengkap Kecerdasan Buatan

162
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2.032
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23.060
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Concept Drift

Change in the conditional probability distribution P(y|x) where the relationships between features and the target evolve over time, requiring adaptation of predictive models.

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Virtual Drift

Change in the marginal distribution P(x) of input features without modification of the underlying relationship between features and the target P(y|x).

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Real Drift

Fundamental modification of the relationship between features and the target variable P(y|x), directly affecting the model's prediction performance.

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DDM (Drift Detection Method)

Statistical monitoring algorithm based on model error rates using the binomial distribution to detect significant changes in performance.

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EDDM (Early Drift Detection Method)

DDM variant optimized to detect gradual changes by monitoring the average distance between successive errors rather than just the error rate.

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ADWIN (Adaptive Windowing)

Adaptive algorithm that maintains a sliding window of variable size and statistically compares the distributions of two sub-windows to detect changes.

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Page-Hinkley Test

Statistical change detection test based on the accumulation of differences between observed values and their mean, effective for identifying abrupt drifts.

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KS Test (Kolmogorov-Smirnov Test)

Non-parametric test comparing the cumulative distribution functions of two samples to determine if they come from the same distribution.

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EWMA (Exponentially Weighted Moving Average)

Statistical smoothing method that assigns exponentially decreasing weights to older observations to detect changes in time series.

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Drift Detection Rate

Metric measuring the proportion of actual drifts correctly identified by a detection algorithm, thus evaluating its detection effectiveness.

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False Alarm Rate

Proportion of false drift detections reported by an algorithm when no actual change has occurred in the data distribution.

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Detection Delay

Time elapsed between the actual occurrence of a concept drift and its detection by the monitoring algorithm, measuring the system's responsiveness.

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Window-based Methods

Drift detection approaches using temporal windows to compare statistical distributions between recent and historical data.

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Statistical Process Control

Set of statistical methods used to monitor and control processes, adapted for detecting drifts in data streams.

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Change Point Detection

Identification of precise moments when the statistical properties of a time series change significantly, fundamental for drift detection.

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Feature Drift

Change in the distribution of one or more input features P(xi) over time, which can indirectly affect model performance.

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Prior Probability Drift

Change in the marginal distribution of the target variable P(y) without modification of the conditional relationship P(y|x), affecting class balance.

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Ensemble Methods for Drift Detection

Approaches combining multiple drift detectors or base models to improve the robustness and accuracy of change detection.

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Gradual Drift

Type of concept drift where changes in data distribution or relationships between variables occur gradually over an extended period.

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Abrupt Drift

Sudden and immediate change in data distribution or relationships between variables, requiring rapid detection and model adaptation.

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