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Linear Algebra — Between the Lines

From the axioms of vector spaces to inner product spaces. A six-part series that answers the questions textbooks leave between the lines, building intuition for linear algebra.

FO
Folio Official
6 articles
01
Folio Official·March 1, 2026

Why define vector spaces axiomatically? From arrows to axioms

In high school, vectors are arrows. In a university course, they become elements of a set satisfying eight axioms. Why the abstraction? Because polynomials, matrices, and functions are all vector spaces — and the axioms are what let us treat them with a single theory.

Linear AlgebraAlgebraBetween the Lines
02
Folio Official·March 1, 2026

What is "dimension," really? The truth about degrees of freedom

We all say "three-dimensional space" without blinking — but what exactly does the "three" mean? The answer is less obvious than it seems, and proving it requires the Steinitz exchange lemma.

Linear AlgebraAlgebraBetween the Lines
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03
Folio Official·March 1, 2026

Why matrix multiplication works that way: when linear maps become matrices

The definition of matrix multiplication looks arbitrary — until you realize it encodes composition of linear maps. We compute a concrete composition by hand and watch the "row-times-column" rule emerge naturally.

Linear AlgebraAlgebraBetween the Lines
04
Folio Official·March 1, 2026

What does the determinant measure? Area, volume, and orientation

The textbook definition of the determinant — a sum over permutations — can feel like it dropped out of the sky. In fact, it measures something beautifully concrete: the signed volume scaling factor of a linear map.

Linear AlgebraAlgebraBetween the Lines
05
Folio Official·March 1, 2026

Why eigenvalues matter: how diagonalization simplifies everything

Eigenvalues and eigenvectors appear suddenly in every linear algebra course — but why are they so important? Because they decompose a complicated linear map into independent scalings, turning hard problems into easy ones.

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06
Folio Official·March 1, 2026

The geometry that inner products unlock: orthogonality, projection, and least squares

A vector space, by itself, has no concept of length or angle. Inner products supply both — and with them come orthogonal projections, the Gram–Schmidt process, least squares, and the bridge to Fourier analysis.

Linear AlgebraAlgebraBetween the Lines