Autor des Abschnitts: Danielle J. Navarro and David R. Foxcroft

Referenzen

Anmerkung des Autors: Ich habe es bereits erwähnt, aber ich werde es noch einmal erwähnen. Diese Referenzliste ist entsetzlich unvollständig. Bitte gehen Sie nicht davon aus, dass dies die einzigen Quellen sind, auf die ich mich gestützt habe. Die endgültige Fassung dieses Buches wird noch viel mehr Quellen enthalten. Und wenn Sie in diesem Buch etwas sehen, das sich clever anhört und für das es keine Quellenangabe gibt, kann ich Ihnen versprechen, dass die Idee von jemand anderem stammt. Dies ist ein einführendes Lehrbuch: Keine der Ideen ist originell. Ich übernehme die Verantwortung für alle Fehler, aber ich kann keine Lorbeeren für die guten Sachen erwarten. Alles, was in diesem Buch steht, stammt von jemand anderem, und alle verdienen es, für ihre hervorragende Arbeit gewürdigt zu werden. Ich hatte nur noch nicht die Gelegenheit, es ihnen zu geben.

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