selection_view
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Axis
selection_viewon sub-layerL3_5_E_selected_features_post_selection(layerl3_5).
Sub-layer
L3_5_E_selected_features_post_selection
Axis metadata
Default:
'multi'Sweepable: False
Status: operational
Operational status summary
Operational: 4 option(s)
Future: 0 option(s)
Options
multi – operational
Render every selection view.
L3.5.E selection view multi.
This option configures the selection_view axis on the L3_5_E_selected_features_post_selection sub-layer of L3.5; output is emitted under manifest.diagnostics/l3_5/L3_5_E_selected_features_post_selection/ alongside the other selected views.
When to use
Default rich audit. Activates the multi branch on L3.5.selection_view; combine with related options on the same sub-layer for a comprehensive diagnostic.
References
macroforecast design Part 4: ‘diagnostic layers default-off; non-blocking; produce JSON + matplotlib views attached to manifest.diagnostics/.’
Related options: selected_list, selection_count_per_origin, selection_stability
Last reviewed 2026-05-05 by macroforecast author.
selected_list – operational
List of selected features per OOS origin.
L3.5.E selection view selected_list.
This option configures the selection_view axis on the L3_5_E_selected_features_post_selection sub-layer of L3.5; output is emitted under manifest.diagnostics/l3_5/L3_5_E_selected_features_post_selection/ alongside the other selected views.
When to use
Cheapest readout; the raw record of feature-selection decisions.
References
macroforecast design Part 4: ‘diagnostic layers default-off; non-blocking; produce JSON + matplotlib views attached to manifest.diagnostics/.’
Related options: selection_count_per_origin, selection_stability, multi
Last reviewed 2026-05-05 by macroforecast author.
selection_count_per_origin – operational
Count of selected features per OOS origin.
L3.5.E selection view selection_count_per_origin.
This option configures the selection_view axis on the L3_5_E_selected_features_post_selection sub-layer of L3.5; output is emitted under manifest.diagnostics/l3_5/L3_5_E_selected_features_post_selection/ alongside the other selected views.
When to use
Detecting selection volatility; large variation across origins flags an unstable selection process.
References
macroforecast design Part 4: ‘diagnostic layers default-off; non-blocking; produce JSON + matplotlib views attached to manifest.diagnostics/.’
Related options: selected_list, selection_stability, multi
Last reviewed 2026-05-05 by macroforecast author.
selection_stability – operational
Jaccard / Kuncheva-style stability across origins.
L3.5.E selection view selection_stability.
This option configures the selection_view axis on the L3_5_E_selected_features_post_selection sub-layer of L3.5; output is emitted under manifest.diagnostics/l3_5/L3_5_E_selected_features_post_selection/ alongside the other selected views.
When to use
Quantifying selection robustness; high stability is a positive indicator for the feature-selection method.
References
macroforecast design Part 4: ‘diagnostic layers default-off; non-blocking; produce JSON + matplotlib views attached to manifest.diagnostics/.’
Related options: selected_list, selection_count_per_origin, multi
Last reviewed 2026-05-05 by macroforecast author.