09/29 - Analogy to Vector Spaces: Difference between revisions

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Revision as of 19:11, 11 November 2008

Analogy to Vector Spaces

Let the vector v be defined as:

  • v=a1v^1+a2v^2+a3v^3=j=13vja^j
    • a1,a2,a3 are the coefficients
    • v^1,v^2,v^3 are the basis vectors
    • A vector basis is a set of n linearly independent vectors capable of generating an n-dimensional subspace of n
      • Generating: using a linear combination of n vectors to be able to uniquely identify any part of the n-dimensional space

Dot Product & Inner Product

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Dot Product

The dot (scalar) product takes two vectors over the real numbers and returns a real-valued scalar quantity. Geometrically, it will show the projection of one vector onto another.

The dot product of two vectors a=a1,a2,...,an and b=b1,b2,...,bn is defined as ab=i=1naibi=a1b1+a2b2++anbn

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Inner Product

Since we will be dealing with complex numbers, we need to use the inner product instead of the dot product

The inner product of two vectors a=a1+b1j,a2+b2j,...,an+bnj and b=c1+d1j,c2+d2j,...,cn+dnj is defined as ab=i=1naibi*