THE DIMENSION OF A VECTOR SPACE

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Presentation transcript:

THE DIMENSION OF A VECTOR SPACE Vector Spaces THE DIMENSION OF A VECTOR SPACE © 2012 Pearson Education, Inc.

DIMENSION OF A VECTOR SPACE Theorem 9: If a vector space V has a basis B , then any set in V containing more than n vectors must be linearly dependent. Proof: Let {u1, …, up} be a set in V with more than n vectors. The coordinate vectors [u1]B, …, [up]B form a linearly dependent set in , because there are more vectors (p) than entries (n) in each vector. © 2012 Pearson Education, Inc.

DIMENSION OF A VECTOR SPACE So there exist scalars c1, …, cp, not all zero, such that Since the coordinate mapping is a linear transformation, The zero vector in © 2012 Pearson Education, Inc.

DIMENSION OF A VECTOR SPACE The zero vector on the right displays the n weights needed to build the vector from the basis vectors in B. That is, . Since the ci are not all zero, {u1, …, up} is linearly dependent. Theorem 9 implies that if a vector space V has a basis B , then each linearly independent set in V has no more than n vectors. © 2012 Pearson Education, Inc.

DIMENSION OF A VECTOR SPACE Theorem 10: If a vector space V has a basis of n vectors, then every basis of V must consist of exactly n vectors. Proof: Let B1 be a basis of n vectors and B2 be any other basis (of V). Since B1 is a basis and B2 is linearly independent, B2 has no more than n vectors, by Theorem 9. Also, since B2 is a basis and B1 is linearly independent, B2 has at least n vectors. Thus B2 consists of exactly n vectors. © 2012 Pearson Education, Inc.

DIMENSION OF A VECTOR SPACE Definition: If V is spanned by a finite set, then V is said to be finite-dimensional, and the dimension of V, written as dim V, is the number of vectors in a basis for V. The dimension of the zero vector space {0} is defined to be zero. If V is not spanned by a finite set, then V is said to be infinite-dimensional. Example 1: Find the dimension of the subspace © 2012 Pearson Education, Inc.

DIMENSION OF A VECTOR SPACE H is the set of all linear combinations of the vectors , , , Clearly, , v2 is not a multiple of v1, but v3 is a multiple of v2. By the Spanning Set Theorem, we may discard v3 and still have a set that spans H. © 2012 Pearson Education, Inc.

SUBSPACES OF A FINITE-DIMENSIONAL SPACE Finally, v4 is not a linear combination of v1 and v2. So {v1, v2, v4} is linearly independent and hence is a basis for H. Thus dim . Theorem 11: Let H be a subspace of a finite-dimensional vector space V. Any linearly independent set in H can be expanded, if necessary, to a basis for H. Also, H is finite-dimensional and © 2012 Pearson Education, Inc.

SUBSPACES OF A FINITE-DIMENSIONAL SPACE Proof: If , then certainly . Otherwise, let be any linearly independent set in H. If S spans H, then S is a basis for H. Otherwise, there is some in H that is not in Span S. © 2012 Pearson Education, Inc.

SUBSPACES OF A FINITE-DIMENSIONAL SPACE But then will be linearly independent, because no vector in the set can be a linear combination of vectors that precede it (by Theorem 4). So long as the new set does not span H, we can continue this process of expanding S to a larger linearly independent set in H. But the number of vectors in a linearly independent expansion of S can never exceed the dimension of V, by Theorem 9. © 2012 Pearson Education, Inc.

THE BASIS THEOREM So eventually the expansion of S will span H and hence will be a basis for H, and . Theorem 12: Let V be a p-dimensional vector space, . Any linearly independent set of exactly p elements in V is automatically a basis for V. Any set of exactly p elements that spans V is automatically a basis for V. Proof: By Theorem 11, a linearly independent set S of p elements can be extended to a basis for V. © 2012 Pearson Education, Inc.

THE BASIS THEOREM But that basis must contain exactly p elements, since dim . So S must already be a basis for V. Now suppose that S has p elements and spans V. Since V is nonzero, the Spanning Set Theorem implies that a subset of S is a basis of V. Since dim , must contain p vectors. Hence . © 2012 Pearson Education, Inc.

THE DIMENSIONS OF NUL A AND COL A Let A be an matrix, and suppose the equation has k free variables. A spanning set for Nul A will produce exactly k linearly independent vectors—say, —one for each free variable. So is a basis for Nul A, and the number of free variables determines the size of the basis. © 2012 Pearson Education, Inc.

DIMENSIONS OF NUL A AND COL A Thus, the dimension of Nul A is the number of free variables in the equation , and the dimension of Col A is the number of pivot columns in A. Example 2: Find the dimensions of the null space and the column space of © 2012 Pearson Education, Inc.

DIMENSIONS OF NUL A AND COL A Solution: Row reduce the augmented matrix to echelon form: There are three free variable—x2, x4 and x5. Hence the dimension of Nul A is 3. Also dim Col because A has two pivot columns. © 2012 Pearson Education, Inc.