Composite Performance Measure
(Redirected from Combined Model Metric)
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A Composite Performance Measure is a multi-dimensional performance measure that combines multiple evaluation metrics (providing holistic model assessment through integrated measure calculation).
- AKA: Multi-Metric Performance Measure, Aggregate Performance Score, Combined Model Metric.
- Context:
- It can (typically) integrate Classification Metrics including composite accuracy, composite precision, and composite recall.
- It can (typically) combine Statistical Measures through composite weighted averages and composite harmonic means.
- It can (typically) implement Normalization Techniques for composite metric scaling and composite range alignment.
- It can (typically) establish Weighting Schemes based on composite business priorities.
- It can (typically) provide Unified Score Interpretation across composite metric dimensions.
- It can (typically) support Trade-Off Analysis between composite competing metrics.
- It can (typically) enable Threshold Optimization for composite decision boundaries.
- ...
- It can (often) include Domain-Specific Weights reflecting composite industry standards.
- It can (often) incorporate Confidence Intervals for composite uncertainty quantification.
- It can (often) provide Sensitivity Analysis showing composite metric contributions.
- It can (often) support Dynamic Weighting adapting to composite context changes.
- It can (often) enable Multi-Objective Optimization balancing composite metric goals.
- It can (often) implement Robust Aggregation handling composite outlier metrics.
- ...
- It can range from being a Simple Composite Measure to being a Complex Composite Measure, depending on its composite metric count.
- It can range from being a Static Composite Measure to being a Adaptive Composite Measure, depending on its composite weight flexibility.
- It can range from being a Linear Composite Measure to being a Non-Linear Composite Measure, depending on its composite aggregation function.
- It can range from being a Binary Composite Measure to being a Continuous Composite Measure, depending on its composite score range.
- It can range from being a Interpretable Composite Measure to being a Black-Box Composite Measure, depending on its composite transparency level.
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- It can be calculated by Scoring Functions implementing composite aggregation logic.
- It can utilize Statistical Libraries for composite computation.
- It can integrate with Evaluation Frameworks for composite metric collection.
- It can employ Optimization Algorithms for composite weight tuning.
- It can leverage Visualization Tools for composite score presentation.
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- Example(s):
- Standard Composite Measures, such as:
- F1 Score combining precision and recall via harmonic mean.
- Matthews Correlation Coefficient balancing true positives and true negatives.
- Balanced Accuracy averaging sensitivity and specificity.
- Business-Oriented Composite Measures, such as:
- Revenue-Weighted Accuracy combining prediction accuracy with business impact.
- Cost-Sensitive Score integrating error costs with performance metrics.
- Customer Satisfaction Index merging model performance with user feedback.
- Multi-Task Composite Measures, such as:
- Task-Averaged Performance aggregating across multiple task metrics.
- Weighted Task Score prioritizing critical task performance.
- Pareto-Optimal Metric balancing competing task objectives.
- Domain-Specific Composite Measures, such as:
- Clinical Performance Score combining sensitivity, specificity, and positive predictive value.
- Financial Risk Score integrating accuracy, coverage, and stability metrics.
- Search Quality Metric merging precision, recall, and ranking quality.
- Advanced Composite Measures, such as:
- Area Under Multiple Curves combining ROC, PR, and cost curves.
- Ensemble Diversity Score measuring model agreement and performance correlation.
- Fairness-Aware Metric balancing accuracy with demographic parity.
- ...
- Standard Composite Measures, such as:
- Counter-Example(s):
- Single Metric, which evaluates only one performance dimension.
- Raw Accuracy, which doesn't account for class imbalance.
- Unweighted Average, which treats all metrics equally without priority consideration.
- Maximum Score, which selects the best single metric without aggregation.
- Qualitative Assessment, which uses subjective judgment without quantitative combination.
- See: Performance Measure, Performance Assessment Framework, F-Measure, Multi-Objective Optimization, Weighted Average, Harmonic Mean, Score Aggregation, Metric Fusion, Evaluation Metric, Composite Index, Balanced Scorecard, Model Evaluation System.