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Quadratic Extensions in ACL2

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 Added by EPTCS
 Publication date 2020
and research's language is English
 Authors Ruben Gamboa




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Given a field K, a quadratic extension field L is an extension of K that can be generated from K by adding a root of a quadratic polynomial with coefficients in K. This paper shows how ACL2(r) can be used to reason about chains of quadratic extension fields Q = K_0, K_1, K_2, ..., where each K_i+1 is a quadratic extension field of K_i. Moreover, we show that some specific numbers, such as the cube root of 2 and the cosine of pi/9, cannot belong to any of the K_i, simply because of the structure of quadratic extension fields. In particular, this is used to show that the cube root of 2 and cosine of pi/9 are not rational.



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352 - Matt Kaufmann 2020
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134 - John Cowles 2015
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61 - Cuong K. Chau 2015
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132 - David S. Hardin 2013
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