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Glosarium AI

Kamus lengkap Kecerdasan Buatan

162
kategori
2.032
subkategori
23.060
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Hybrid collaborative filtering

An approach combining traditional collaborative filtering with other methods like content-based or external knowledge to overcome cold start and data sparsity limitations.

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Hybrid content-based filtering

A method integrating content features with user behavioral signals to improve recommendation relevance and address the over-specialization problem.

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Hybrid weighting

A technique combining the scores of several recommendation algorithms using static or dynamic weights to produce a final recommendation score.

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Hybrid switching

A strategy that dynamically selects the most appropriate recommendation algorithm based on the context, user characteristics, or item properties.

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Hybrid feature combination

An approach that merges different feature sources (content, behavior, context) into a unified vector space for training a single recommendation model.

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Hybrid cascade

An architecture where the recommendations from a first algorithm are refined or re-ranked by one or more subsequent algorithms to improve final accuracy.

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Hybrid meta-level

A method that uses the recommendations of base algorithms as input features for a meta-model that learns to combine or correct these initial predictions.

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Mixed/hybrid recommender system

The seamless integration of multiple recommendation techniques (collaborative, content-based, knowledge-based) to leverage their complementary strengths and mitigate their respective weaknesses.

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Hybrid model fusion

Advanced technique combining predictions from multiple independently trained models using ensemble methods like stacking, bagging, or boosting.

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Adaptive hybrid recommendation

System that dynamically adjusts the combination of algorithms based on changes in user preferences, market trends, or model performance.

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Hybrid profiling

Construction of user profiles by merging explicit data (ratings), implicit data (clicks, viewing time), and contextual data for a more complete representation.

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Hybrid deep learning

Neural network architecture integrating specialized branches for different types of data (text, images, graphs) merged in upper layers for recommendation.

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Hybrid factor matrix

Extension of matrix factorization incorporating auxiliary information (item attributes, user metadata) directly into the model to improve generalization.

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Contextual hybrid recommendation

System combining traditional recommendation approaches with contextual information (time, place, device) to personalize suggestions based on the current situation.

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Hybrid score aggregation

Mathematical process combining recommendation scores from multiple sources using techniques like weighted average, median rank, or machine learning methods.

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Hybrid dimensionality reduction

Approach integrating SVD, PCA, and autoencoders to capture different structures in user-item data and improve latent representation for recommendation.

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Hybrid knowledge-based system

Integration of expert rules and domain constraints with statistical algorithms to ensure the consistency and explainability of recommendations.

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Temporal hybrid ensemble

Weighted combination of models trained on different time periods to capture both long-term trends and recent user preferences.

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