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YZ Sözlüğü

Yapay Zekanın tam sözlüğü

162
kategoriler
2.032
alt kategoriler
23.060
terimler
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terimler

Information Gain

Quantitative metric measuring the reduction in entropy obtained by partitioning a dataset according to a specific attribute, used by ID3 to select the optimal splitting attribute at each node of the tree.

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Shannon Entropy

Mathematical measure of uncertainty or disorder in a dataset, calculated as the negative sum of probabilities multiplied by their binary logarithm, serving as the basis for calculating information gain in ID3.

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Splitting Attribute

Variable selected at a given node to partition the dataset into more homogeneous subsets, chosen by ID3 based on the maximum information gain among all available attributes.

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Leaf Node

Terminal node of the ID3 decision tree containing no further subdivisions, representing a final decision or a classification based on the majority class of the samples contained in this node.

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Information Gain Ratio

Variant of information gain normalized by the intrinsic entropy of the attribute, introduced to correct the bias of ID3 towards attributes with many possible values.

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Training Set

Subset of data used by ID3 to build the decision tree, containing labeled examples that allow the algorithm to learn the relationships between attributes and target classes.

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Class Prediction

Classification process in ID3 where a new sample traverses the tree from the root to a leaf, with the predicted class being the one associated with the reached leaf node according to the successive attribute tests.

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Tree Depth

Maximum number of branches traversed from the root to any leaf in the ID3 tree, directly influencing the model's complexity and its ability to capture patterns in the data.

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Purity criterion

Measure of class homogeneity in a node, where a perfectly pure node contains samples from a single class, serving as the basis for evaluating partition quality in ID3.

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Explanatory variables

Set of attributes used by ID3 to build the decision tree, each being evaluated for its splitting potential based on its ability to reduce uncertainty about the target variable.

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