Caput (urbs)

Multi tool use
Vide etiam paginam discretivam: Caput (discretiva)

Amphitheatrum Flavium in Urbe capite Italiae et totius orbis veteris.
Caput est suprema civitatis urbs, quae in re publica est sedes parlamenti, in regno sedes principis.
Antiquitus, iuxta proverbium, Roma caput mundi erat.
Caput ac sedes administrationis fere eadem sunt. Exceptio est Nederlandia (qua caput Amstelodamum, sedes administrationis Haga).
Plerumque caput etiam est maxima urbs civitatis; exceptiones sunt, e.g.:
Helvetia: caput in Berna, summa urbs Turicum
CFA: caput Vasingtonia, maxima urbs Novum Eboracum
Africa Australis tres urbes praecipuas habet: Urbem Promontorii, ubi sedet parlamentum; Praetoriam, qua sedes administrationis; et Anthopegen, sedem summorum iudiciorum. Maxima autem urbs est Ioannisburgum.
Variae partes civitatum, provinciae, aut regiones, etiam capita sua habent.
Nexus interni
- Capita mundi
- Meacum
- Natio
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