(* Content-type: application/mathematica *) (*** Wolfram Notebook File ***) (* http://www.wolfram.com/nb *) (* CreatedBy='Mathematica 7.0' *) (*CacheID: 234*) (* Internal cache information: NotebookFileLineBreakTest NotebookFileLineBreakTest NotebookDataPosition[ 145, 7] NotebookDataLength[ 413420, 7523] NotebookOptionsPosition[ 408698, 7373] NotebookOutlinePosition[ 409169, 7391] CellTagsIndexPosition[ 409126, 7388] WindowFrame->Normal*) (* Beginning of Notebook Content *) Notebook[{ Cell[CellGroupData[{ Cell[BoxData[ RowBox[{"2", "-", "2"}]], "Input", CellChangeTimes->{{3.4743245867416687`*^9, 3.474324586919676*^9}}], Cell[BoxData["0"], "Output", CellChangeTimes->{3.474324588346888*^9}] }, Open ]], Cell[BoxData["\[IndentingNewLine]"], "Input", CellChangeTimes->{3.474324613301796*^9}], Cell[CellGroupData[{ Cell["Moving Expectation Values", "Title", CellChangeTimes->{{3.474324636351067*^9, 3.47432464301681*^9}, { 3.4743970437200413`*^9, 3.474397057892755*^9}, 3.4744743607144737`*^9}], Cell["\<\ Nicholas Wheeler ÌÇÐÄÊÓÆµ Physics Department 4 February 2010\ \>", "Text", CellChangeTimes->{{3.4743246504971857`*^9, 3.474324677835874*^9}}, FontSize->10], Cell[BoxData["\[IndentingNewLine]"], "Input", CellChangeTimes->{3.4743246908153267`*^9}], Cell["\<\ We are concerned with a quantum system the state vectors of which live in a \ 3D complex vector space, in which we have erected an orthonormal basis which \ serves to cast all abstract statements into explicit matrix-theoretic form. \ We have adopted units which serve to render \[HBar] = 1. 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