Rogerius Sherman

Multi tool use
Rogerius Sherman (natus in Newton die 19 Aprilis 1721; mortuus in New Haven Connecticutae die 23 Iulii 1793) fuit politicorum peritus Americanus unus ex Conditoribus Civitatum Foederatarum. Nam Sherman, qui inter alia Conventui Continentali ut Connecticutae legatus adfuit et postea sive in Camera Repraesentantum Civitatum Foederatarum populi sive huius civitatis in senato legatus fuit, Societatem Continentalem, Declarationem Libertatis, Confoederationis Capita et Constitutionem Civitatum Foederatarum subscripsit, solus qui omnia quater haec acta signavit.
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Vicimedia Communia plura habent quae ad Civitatum Foederatarum Conditores spectant.
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Biographia a Carolo A. Goodrich anno 1856 scripta

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Lexici biographici: • Encyclopædia Britannica • Congressus Civitatum Foederatarum
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Haec stipula ad biographiam spectat. Amplifica, si potes!
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Subscriptores Declarationis Libertatis
I. Adams • S. Adams • Bartlett • Braxton • Carroll • Chase • Clark • Clymer • Ellery • Floyd • Franklin • Gerry • Gwinnett • Hall • Hancockius • Harrison • Hart • Hewes • Heyward • Hooper • Hopkins • Hopkinson • Samuel Huntington • Jefferson • F. Lee • R. Lee • Lewis • Livingston • Lynch • McKean • Middleton • L. Morris • R. Morris • Morton • Nelson • Paca • Paine • Penn • Read • Rodney • Ross • Rush • Rutledge • Sherman • Smith • Stockton • Stone • Taylor • Thornton • Walton • Whipple • Williams • Wilson • Witherspoon • Wolcott • Wythe
Subscriptores Constitutionis Civitatum Foederatarum
Baldwin · Bassett · Bedford · Blair · Blount · Brearley · Broom · Butler · Carroll · Clymer · Dayton · Dickinson · Few · Fitzsimons · Franklinius · Gilman · Gorham · Hamilton · Ingersoll · Jackson · Jenifer · Johnson · King · Langdon · Livingston · Madison · McHenry · Mifflin · G. Morris · R. Morris · Paterson · C. C. Pinckney · Pinckney · Read · Rutledge · Sherman · Spaight · Washingtonius · Williamson · Wilson
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