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Modeller
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Kaynaklar
💬 Prompt Kütüphanesi 📖 YZ Sözlüğü 🔗 Faydalı Bağlantılar

YZ Sözlüğü

Yapay Zekanın tam sözlüğü

162
kategoriler
2.032
alt kategoriler
23.060
terimler
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terimler

Semantic Embedding

Dense vector representation of classes in a semantic space where relationships between concepts are preserved, allowing the model to understand similarities between unseen classes.

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Attribute-Based Classification

Approach where objects are described by a set of interpretable semantic attributes, enabling classification of new classes by combining these predefined attributes.

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Seen Classes

Set of object categories used during the model's training phase, for which visual examples are available for learning representations.

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Unseen Classes

Object categories absent from training data but that the model must identify during inference using only semantic descriptions or attributes.

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Visual-Semantic Mapping

Learning function that projects visual features of images into the semantic space where textual descriptions of classes reside.

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Compatibility Function

Function measuring the similarity between a visual representation and a semantic representation, used to assign the most probable class to a given instance.

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Generalized Zero-Shot Learning

Extension of ZSL where the model must classify both seen and unseen classes, introducing a classification bias toward familiar classes encountered during training.

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Transductive Zero-Shot Learning

ZSL variant where the model has access to test data from unseen classes during training, but without their labels, allowing better alignment of spaces.

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Inductive Zero-Shot Learning

Classic ZSL approach where the model learns only from seen classes and must completely generalize to unseen classes without access to test data.

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Cross-Modal Transfer

Transfer of knowledge between different data modalities, such as from text to images, essential for ZSL where textual descriptions guide visual recognition.

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Semantic Space

High-dimensional vector space where concepts and classes are represented, preserving semantic relationships and enabling reasoning about conceptual similarities.

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Label Embedding

Technique transforming class labels into continuous vectors in a semantic space, allowing models to treat classification outputs as regression problems.

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Feature Projection

Mathematical operation transforming visual features extracted from images to align them with semantic representations of classes in a common space.

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Zero-Shot Domain Adaptation

Combination of ZSL and domain adaptation where the model must classify unseen classes in a target domain different from the training data domain.

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Hierarchical Zero-Shot Learning

Approach leveraging the hierarchical structure of classes to improve generalization to unseen categories using parent-child relationships between concepts.

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Generative Zero-Shot Learning

Method using generative models to synthesize visual features of unseen classes, transforming ZSL into a classical supervised classification problem.

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