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lecture 1 Definition : A real vector space is a set of elements V together with two operation and satisfying the following properties : If u and v any elements of V, then : 1. u v is in V ( i.e V is closed under the operation ) . 2. u v = v u, for u and v in V . 3. u ( v w ) = ( u v) w, for all u , v and w in V . 4. There is an element 0 in V such that : u 0 = 0 u, for u in V ( 0 is called zero vector ) . 5. For each u in V, then the element –u in V such that : u -u = 0 ( -u is called negative of u ) . 6. If u any elements of V and c is any real number, then : c ʘu is in V ( i.e V is closed under the operation ,the real number c is called scalar ) . 7. c ʘ ( u v ) = c ʘu c v for all the real number c and all u and v in V . 8. ( c d ) ʘu = c ʘu d ʘu for all the real numbers c and d, and all u in V . 9. c ʘ ( d ʘu ) = (cd ) ʘu for all the real numbers c and d, and all u in V . 10. 1 ʘu = u for all u in V . The operation is called vector addition ; the operation ʘ is called vector scalar multiplication . Example (1) let F [a , b] be the set of all real – valued functions that are defined on the interval [a , b] . If f and g are in V, we define f g by : ( f g )(t) = f(t) +g(t) If f is in F [a , b] and c is a scalar, we define c f by : (c ʘ f )(t) = c f (t) Show that F [a , b] is a vector space ? Solution : F [a , b] = { f(a,b), a,b R } 1. ( f g)(t) = f(t) + g(t) 2. ( f g)(t) = f(t) + g(t) = g(t) +f(t) = ( g + f )(t) 3. f(t) ( g k )(t) =(f (g +k))(t) = f (t)+(g+k)(t) =f(t)+g(t)+k(t) 4. f (t) 0 = 0 f (t) = f (t) 5. f(t) - f (t) = 0 6. (c ʘ f )(t) = c f (t) 7. c ʘ ( f g)(t) =c ( f g)(t) = c ( f(t) + g(t) ) = cf ( t ) +c g ( t ) = cʘf (t) cʘg (t) 8. (c +d ) ʘ f(t) = ( c+d ) f(t) = ( c + d )f(t) = c f(t) + d f(t) = cʘ f(t) + dʘ f(t) = cʘ f(t) dʘ f(t) 9. c ʘ ( d ʘ f (t) ) = c ( d ʘ f (t) )= c (df (t) ) =c d f(t) =(cd)f(t) =( c d ) ʘ f(t) 10. 1 ʘf(t) = f(t) Then F is vector space Example (2): Let V = P ={p1(t) , p2(t) , ……… , pn(t) } and if p1(t) = antn + an-1tn-1 + ………..+ a1t + a0 and p2(t) = bntn +bn-1tn-1 + …………. + b1t + b0 W define p1(t) p2(t) as p1(t) p2(t) = (an + bn )tn + (an-1 + bn-1 )tn-1 +……..+ (a1 + b1 )t + (a0 + b0 ) And we also define c ʘ p(t) as : c ʘ p(t) = (c an )tn +(c an-1 )tn-1 + ……… + (c a1)t + ca0 Show that V is vector space or not Solution : 1. p1(t) p2(t) = (an + bn )tn + (an-1 + bn-1 )tn-1 + …….. + (a1 + b1 )t +(a0 + b0) 2. p1(t) p2(t) = (an + bn )tn + (an-1 + bn-1 )tn-1 + …….. + (a1 + b1 )t + (a0 + b0) = (bn + an )tn + (bn-1 + an-1 )tn-1 + …….. + (b1 + a1 )t + (b0 + a0 ) = p2(t) p1(t) 3. Let p3(t) = cntn +cn-1tn-1 + …………. + c1t + c0 p1(t) (p2(t) p3(t)) = p1(t) ((bn + cn )tn + (bn-1 + cn-1 )tn-1 + …….. + (b1 + c1 )t +(b0 + c0 ) =(an +(bn + cn )tn + (an-1 +( bn-1 + cn-1) )tn-1 + …….. + (a1+( b1 + c1 ))t + (a0 +( b0 + c0 )) = ((an +bn) + cn )tn + ((an-1 + bn-1) + cn-1 )tn-1 + …….. + ( (a1+ b1) + c1 )t + (a0 + b0 )+ c0 ) = (p1(t) p2(t)) p3(t) 4. P(x) 0 = (an + 0)tn + (an-1 + 0 )tn-1 + ………. + (a1 +0 )t + (a0 + 0) = antn + an-1tn-1 + ………..+ a1t + a0 = P(x) 5. P(x) - P(x) = (an + (-an)) tn + (an-1 + (an-1 )) tn-1 + ………… + (a1 + (-a1 )) t + (a0 +(- a0)) = 0 +0 +………+0 + 0 = 0 6. c ʘ p(t) = (c an )tn +(c an-1 )tn-1 + ……… + (c a1)t + ca0 7. C ʘ (p1(t) p2(t)) = c ʘ ((an + bn )tn + (an-1 + bn-1 )tn-1 + …….. + (a1 + b1 )t +(a0 + b0)) = c (an + bn )tn + c (an-1 + bn-1 )tn-1+ ………. + c (a1 + b1 )t + c (a0 + b0) =can tn+ +cbntn +can-1tn-1+c bn-1tn-1 + ………+ ca1t + c b1t + ca0 + cb0 = ( can tn + can-1tn-1 + ……… + ca1t + ca0 ) +( cbntn + c bn-1tn-1 + …….. + c b1t + cb0 ) = c ʘ P1(x) cʘ P2(x) 8. ( c + d ) ʘ P(x) = ( c + d ) antn + ( c + d ) an-1tn-1 + ………..+( c + d ) a1t + ( c + d ) a0 = can tn + dan tn + can-1tn-1 + dan-1tn-1 +……… + ca1t +da1t + ca0 + a0 = (can tn +can-1tn-1 + ……… + ca1t + ca0 ) + (dan tn +dan-1tn-1 + ……… + da1t + da0 ) = c ʘ P(x) dʘ P(x) 9. c ʘ ( dʘ P(x)) = cʘ (dan tn +dan-1tn-1 + ……… + da1t + da0 ) = c (dan tn +dan-1tn-1 + ……… + da1t + da0 ) = cdan tn +cdan-1tn-1 + ……… +c da1t + cda0 = (cd)an tn +(cd)an-1tn-1 + ……… +(cd)a1t + (cd)a0 = (cd) P(x) 10.1 ʘ P(x) = 1 . antn + 1 .an-1tn-1 + ………..+1 . a1t +1 . a0 = antn + an-1tn-1 + ………..+ a1t + a0 = P(x) Then V is the vector space . Example (3) : Let Vis the set of all ovdered triples real number and define the operations ⊕ and ʘ by ⊕ , , )= cʘ , = Show that V is vector space or not ? Solution (3) : 1. ⊕ , , )= , 2. ⊕( , , )⊕ , , ))= =( + + , 3. ⊕ ( 0 , 0 ,0 ) = 4. + 5. c ʘ ⊕ ) = = ( 0, 0 ,0 ) ) + , + , + ) 6. c ʘ ((x,y,z )⊕(x', , )) = c ʘ ( =(c , = , , 7. (c +d) ʘ(x , y ,z ) c ʘ(x , y , z ) ⊕ d ʘ(x , y ,z ) = ( cx , y , z ) ⊕ = ( c + d ) ʘ ( x , y , z ) ≠ c ʘ ( x , y , z ) ⊕ d ʘ( x , y , z ) V is not vector space . Lecture (2) Theorem (1) If V is a vector space then : 1. 0 ʘ u = 0 for every u in V 2. c ʘ 0 = 0 for every u in V 3. If c ʘ u = 0 then c = 0 or u = 0 4. ( - 1 ) ʘ u = -u for every u in V Proof : We have : 0ʘ u = ( 0+ 0 ) ʘ u 0 ʘ u = 0 u ⊕0 u We adding – 0 ʘ u to both sides : 0ʘ u ⊕ ( -0 ʘ u) = ( 0 ʘ u ⊕ 0 u ) ⊕ (- 0 u ) 0 = (0 ʘ u ⊕ 0 ʘ u ) ⊕ ( - 0 ʘ u ) 0=0⊕ u0 0=0 ʘu Exercise Suppose that c ʘ u =0 and c ≠ 0 we have : 1 c u = 1ʘ u =( c ) ʘ u = 1/c ʘ (c u) = 1/c ʘ 0 = 0 ( -1) ʘ u ⊕u = (-1) ʘu ⊕ (1) ʘ u = (-1+1) ʘ u = 0 u = 0 -u is unique we conclude that (-1) ʘ u = -u Subspace Definition : Let V be a vector space and w anon empty subset of V . Then w is a subspace of V if w is a vector space with respect to the operations in V then w is called a subspace of V . Example (1) Every vector space has at least two subspace itself and the subspace {0} consisting only of the zero vector is called the zero subspace . Theorem (2) Let V be a vector space with operations ⊕ and ʘ and let w be a non empty subset of V . Then w is a subspace of v if and only if the following conditions hold : 1 ) If u and v are any vectors in w then u ⊕ v is in w 2 ) If c is any real number and u is any vector in w, then c ʘ u is in w . Proof (2 ) → w is subspace of V If w is subspace of v then it is vector space and : (a) If u and v are any vectors in w then u ⊕ v is in w b) If c is any real number and u is any vector in w, then c ʘ u is in w of defined subspace hold : these are precisely (1) and (2) of the theorem . ← conversely, Suppose that (1) and (2) hold To prove w is subspace of V . First, from (2) we have that : (- 1) ʘ u is in w for any u in w From (1) we have that u (-1) ʘ u is in w But u (-1) ʘ u =0, so 0 is in w Then u ʘ 0 = u for any u in w . finally properties 2 -10 hold in w because they hold in V . Hence w is a subspace of V . Remark 1. Observe that the subspace consisting only of the zero vector is a non empty subspace 2. If a subset w of a vector space V does not conation the zero vector then w is not a subspace of V . Example (2) a b 0 0 c d Consider the set w consisting of all 2 3 matrices of the form where a,b,c and d are arbitrary real numbers . Then w a subset of the vector space M23 show that w is a subspace of M23 . Solution (2) a b 0 Consider u 0 c d a a ' b b' 0 cc u⊕v= a b 0 ' a ' and v 0 b' c ' 0 d' 0 d d' ka kb 0 kc kd kʘu=k = 0 c d 0 Then by theorem (2) w is subspace of M23 Example (3) Which of the following subset of R2 with the usual operations of vector addition and scalar multiplication are subspace ? x 1. w1 is the set of all vectors of the form , where x 0 y x 2. w2 is the set of all vectors of the form , x 0 , y 0 where y x 3. w3 is the set of all vectors of the form , where x=0 y Solution(3) 1. w1 is the right half of xy – plane it is not subspace of R2 because x 3x the scalar multiply -3 = is not in w1 . y 3 y 2. w2 is the first quadrant of the xy – plane the same vector and scalar multiple -3 = is not in w2 . w2 is not subspace . 3. w3 is the y – axis in the xy – plane 0 0 1 2 let u and v b b 0 b1 b2 be vectors in w3 then u u v 0 0 c u c b1 cb1 Which is in w3 so property (1) and (2) hence w3 is a vector space of R2. Example (4) Consider the homogeneous Ax = 0 where A is an m matrix . A solution consists of a vector x in Rn , let w be the subset of Rn consisting of all solutions of homogeneous system . To check that w is subspace of Rn . Solution (4) Let x and y be solutions then : Ax = 0 , Ay = 0 A ( x+ y ) = Ax + Ay = 0 + 0 = 0 c is scalar then : A ( cx ) = c Ax = c .0 = 0 So cx is olso solution hence w is a subspace of Rn . Definition Let v1 , v2 ,……… , vk be vectors in vector space V . A vector v in V is called a linear combination of v1 , v2 ,……… ,vk if v = c1v1 + c2v2 + …….. + ck vk for some real numbers c1 , c2 , ……. , ck Example (1) In R3 let v1 = ( 1 , 2 , 1 ) , v2 = ( 1 , 0 , 2 ) and v3 = ( 1 , 1 , 0 ) the vector v = ( 2 , 1 , 5) fined linear combination of v1 , v2 and v3 Solution (1) If can find real numbers c1 , c2 and c3 so that : c1 v1 +c2v2 +c3v3 = v c1 (1 , 2 ,1 ) + c2 ( 1 , 0 ,2 ) + c3 ( 1 , 1 , 0 ) = ( 2 , 1 , 5 ) (c1 , 2c1 , c1 ) + ( c2 ,0 ,2c2 ) + (c3 , c3 ,0 ) = ( 2 ,1 , 5 ) ( c1 + c2 +c3 ,2c1 +0+c3 ,c1+2c2+0) = ( 2,1,5) c1 + c2 +c3 =2 …….. (1) 2c1 +0 +c3 =1 ……..(2) c1 +2c2 +0 =5 ………(3) By equation (2) c3 = 1-2c1 By equation (3) c2 =(5-c1)/2 Then in equation (1) c1 +(5-c1 )/2 +1-2c1 =2 2c1 +5 - c1+ 2 - 4c1 = 4 2c1 + + 7 -5c1 = 4 -3c1 = -3 c1 = 1 c2 =(5-c1)/2 = (5-1)/2 =2 c3 =1-2c1 = 1-2 = -1 Lecture (3) : If S = { v1 , v2 , ……….. , vn } is a set of vectors in a vector space V . Then the set of all vectors in V that are linear combinations of the vectors in S is denoted by span S or span { v1 , v2 , ………. , vn } . Example (1) : consider the set S of 2 3 matrices given by : 1 0 0 0 1 0 0 0 0 0 0 0 S { , , , } 0 0 0 0 0 0 0 1 0 0 0 1 Then span S is the set in M23 consisting of all vectors of the form 1 0 0 0 1 0 0 0 0 0 0 0 c1 c1 c2 c3 c4 0 0 0 0 0 0 0 1 0 0 0 1 0 c2 c3 0 c4 That is span S is the subset of M23 consisting of all matrices of the form c1 0 c2 c3 0 where c1 , c2 , c3 and c4 are real numbers . c 4 Theorem (3) Let S = { v1 , v2 , ……….. , vn } be a set of vectors in a vector space V . Then span S is a subspace of V. Example (1) Let v1 = 2t2 + t + 2 , v2 = t2 -2t , v3 = 5t2 – 5t +2 , v4 = - t2-3t – 2 determine if the vector u = t2 + t + 2 belongs to span { v1 , v2 , v3 , v4 } Solution (1) If we can find scalar c1 , c2 , c3 and c4 so that : c1v1 + c2v2 + c3v3 +c4v4 = u c1 (2t2 + t +2 )+c2 ( t2 -2t )+ c3 ( 5t2 -5t + 2 )+c4 ( t2 – 3t – 2 ) = t2 + t + 2 2c1t2 + c1t + 2c1 + c2t2-2c2t + 5c3t2 – 5c3t + 2c3 +c4t2 – 3c4t – 2c4 = t2 + t +2 (2c1 + c2 +5c3 +c4 ) t2 + ( c1 – 2c2 -5c3 -3c4 )t + ( 2c1 + 2c3 -2c4 ) = t2 + t +2 2c1 + c2 +5c3 + c4 =1………. (1) c1 -2c2 -5c3 -3c4 = 1 ……….. (2) 2c1 +2c3 -2c4 = 2 ……………(3) we devoid equation ( 3) by 2 we get c1 + c3 –c4 = 1 c1 = 1- c3 + c4 Put in Eq. (2) 1 – c3 + c4 -2c2 -5c3 -3c4 =1 2c2 +6c3 + 2c4 = 0 c2 + 3c3 + c4 = 0 ………. (4) Put c1 = 1- c3 + c4 in Eq. (1) 2 – 2c3 +2c4 + c2 +5c3 + c4 = 1 c2 +3c3 + 3c4 = -1 ………. (5) c2 + 3c3 +c4 = 0 c2 +3c3 +3c4 = -1 _______________ -2c4 = 1 c4 = 1 2 c1 = 1 1 c3 2 2 1 2 c1 = c 3 To put in Eq. (3) 1 – 2c3 + 1 = 0 -2c3 = -2 c3 = 1 c1 1 2 c 2 3c3 c 4 3 1 5 2 2 which indicates that the system is in consistent that is it has no solution . hence u dose not belong to span { v1 , v2 ,….. ,vn } . Remark In general to determine if a specific vector V belong to span S, we investigate the consistency of an appropriate linear system . Subspaces in Rn (optioal ) Example (1) Let V = R3 and let W = { w1 , w2 , w3 , w4 } when 0 w1 = 0 , w2 = 0 1 0 , w = 3 0 0 1 1 and w = 1 4 0 0 Determine if W is subspace of V . Solution (1) Apply Th. 1 using bit scalars and binary arithmetic we have : w1 + w1 = w1 w1 + w2 = w2 w1 + w3 = w3 w1 + w4 = w4 w2 + w2 = w1 w2 + w3 = w4 w3 + w3 = w1 w3 + w4 = w2 w4 + w4 = w1 So W is closed under vector addition Also 0wi = w1 and 1wj = wj for j = 1 , 2 , 3 , 4 Hence w is closed under multiplication . Thus w is subspace of B3 Example (2) 3 In B let 1 v1 1 0 0 , v 2 1 1 1 1 , v3 1 determine if the vector u 0 1 0 belongs to span {v1 , v2 , v3 }. Solution (2) If we can find (bit) scalar c1 , c2 , c3 so that c1v1 + c2v2 + c3v3 = u Then u belongs to span { v1 , v2 , v3 } substituting for u , v1 , v2 and v3 we have : 1 0 1 1 c1 1 + c 2 1 + c3 1 = 0 0 1 1 0 c1 0 c3 1 c c c 0 1 2 3 0 c 2 c3 0 c1 c3 1 c c c 0 2 3 1 c 2 c3 0 c1 +c3 =1 ………. (1) c1 = 1-c3 c1 + c2 + c3 = 0 ……. (2) c2 + c3 = 0 ………… (3) c2 = -c3 to put in Eq. (2) then : 1 - c3 - c3 + c3 = 0 c3 = 1 c2 = - 1 c1 = 0 u is in span { v1 , v2 , v3 } . Lecture (4) : Linear Independence Definition: The vectors v1 , v2 ,…….. , vn in a vector space V are said to be linearly dependent if there exist constants c1 ,c2 , …….. , cn not all zero such that : c1v1 + c2v2 + …….. + cnvn = 0 Other wise, v1 , v2 ,…….. , vn are called linear independent . That is v1 , v2 ,…….. , vn are linear independent if whenever c1v1 + c2v2 + …….. + cnvn = 0 we must have c1 = c2 = …….. = cn = 0 Example (1) 1 2 1 0 Determine whether the vectors and and found the 0 1 0 1 homogeneous linear system Ax = 0 linear dependent or linear independent . Solution (1) Forming Equation 1 1 c1 + c2 0 0 2 0 0 0 1 0 1 0 c1 2c 2 0 c 0 0 1 0 c 2 0 0 c 2 0 c1 2c 2 0 0 c1 0 c2 c2 0 -c1 –2c2 =0 c1 = 0 c2 = 0 Whose only solution is c1 = c2 = 0 . Hence the given vectors are linearly independent . Example (2) Consider the vectors : p1(t) = t2 + t +2 , p2(t) = 2t2 + t , p3(t) = 3t2 +2t + 2 To find out whether S = { p1(t) , p2(t) , p3(t) } is linear dependent or linear independent . Solution (2) Let c1 p1(t) + c2 p2(t) + c3 p3(t) = 0 c1 ( t2 + t + 2 ) + c2( 2t2 + t ) + c2 ( 3t2 +2t + 2 ) = 0 c1 t2 + c1t + 2 c1 + 2 c2 t2 + c2 t + 3 c3 t2 +2 c3 t + 2 c3 = 0t2 + 0t +0 (c1 +2 c2 + 3 c3 ) t2 + (c1 + c2 + 2 c2 ) t + ( 2c1 + 2 c3 ) = 0t2 +0t + 0 c1 +2 c2 + 3 c3 = 0 …………… ( 1 ) c1 + c2 + 2 c2 = 0 ……………..( 2 ) 2c1 + 2 c3 = 0 …………………( 3 ) In Eq. ( 3 ) c1 = - c3 To put in Eq. (1) we found : - c3 +2 c2 + 3c3 =0 And put in Eq. (2) - c3 + c2 + 2 c3 = 0 c2 + c3 = 0 2 c2 + 2 c3 = 0 c2 + c3 = 0 If c3 = 1 then c2 = -1 c1 = -1 c1 = c2 c3 0 p1(t) , p2(t) and p3(t) are linear dependent Example (3) Are the vectors v1 = ( 1 , 0 , 1 , 2 ) , v2 = ( 0 , 1 , 1 , 2 ) , v3 = ( 1 , 1 , 1 , 3 ) in R4 linearly dependent or linearly independent . Solution (3) Let c1 v1 + c2 v2 + c3 v3 = 0 c1( 1 , 0 , 1 , 2 ) + c2 ( 0 , 1 , 1 , 2 ) + c3 ( 1 , 1 , 1 , 3 ) = 0 (c1 , 0 , c1 , 2c1 ) +( 0 , c2 , c2 , 2c2 ) + (c3 , c3 , c3 , 3c3 ) =( 0 ,0 ,0 ,0 ) (c1 +c3 , c2 + c3 , c1 + c2 + c3 , 2c1 +2c2 +3c3 ) = ( 0 , 0 , 0 ) c1 + c3 = 0 ………..……. (1) c2 + c3 = 0 …………..… (2) c1 + c2 + c3 = 0 ………..(3) 2c1 + 2c2 + 3c3 =0…….(4) In Eq. (1) c3 = - c1 In Eq.(2) c3 = - c2 c1 = c2 c3 = 0 c1 = c2 = c3 = 0 Then v1 , v2 and v3 are linear independent . Theorem (3) The nonzero vectors v1 , v2 ……… , vn in a vectors space V dependent if and only if one of the vectors vj , j 2 is a linear combination of the ` vectors v1 , v2 , …… .,vj-1 . Proof If vi is linear combination of v1 , v2 , …… , vj-1 vj = c1 v1 + c2 v2 + ……… + cj-1 vj-1 Then : c1 v1 + c2 v2 + ………. + ( - 1 ) vj + 0 vj+1 + ……… + 0vn = 0 cj = ( - 1) 0 v1 , v2 , ……….. , vn are linearly dependent . Conversely : Suppose that v1 , v2 , …………. , vn are linearly dependent then there exist scalar c1 , c2 ,……. , cn not all zero, such that : c1 v1 + c2 v2 + ………. + cnvn = 0 Let j be the largest subscript for which cj 0 if j > 1 Then : vj c j 1 c1 c v1 2 v 2 ............ v j 1 cj cj cj If j = 1 then c1 v1 = 0 v1 = 0, a contradiction of the hypothesis that none of the vectors is the zero vector . one of the vectors vj is linear combination of the preceding vectors v1 , v2 , ……… , vj-1 Example (1) Consider the vectors v1 = ( 1 , 2 , -1 ) , v2 = ( 1 , -1`, 1 ) , v3 = ( -3 ,2 ,-1 ) v4 = ( 2 , 0 , 0 ) in R3 Is S = { v1 , v2 , v3 , v4 } linearly dependent or linearly independent ? Solution (1) Let c1 v1 + c2 v2 + c3 v3 +c4 v4 = 0 c1 (1 , 2 , -1) + c2 (1 , -1 , 1) + c3 ( -3 ,2 ,-1 ) + c4 ( 2 , 0 , 0 ) = ( 0 , 0 , 0 ) (c1 , 2c1 , - c1)+(c2 , - c2 , c2 )+( -3 c3 , 2 c3 , - c3 )+( 2 c4 , 0 , 0 ) = ( 0 , 0 ,0 ) (c1 + c2 -3 c3 +2 c4 , 2 c1 - c2 +2 c3 , - c1 + c2 - c3 )= ( 0 , 0 , 0 ) c1 + c2 -3 c3 +2 c4 =0 …………(1) 2 c1 - c2 +2 c3 = 0 ………….....(2) - c1 + c2 - c3 = 0 …………….. (3) By multiplication 2 in Eq. (3) we get : - 2c1 +2 c2 -2 c3 = 0 ………… (4) We addition Eq. (1) and Eq. (4) c1 + c2 -3 c3 +2 c4 = 0 - 2c1 +2 c2 -2 c3 = 0 ___________________ c2 = 0 In Eq. (2) we get : c1 = - c3 If c3 = 1 c1 = -1 c4 = 2 Basis And Dimension Basis Definition : The vectors v1 , v2 , …… , vn a vector space V are said to form a basis for V if : 1. v1 , v2 , …… , vn span V . 2. v1 , v2 , …… , vn are linear independent . Remark If v1 , v2 , …… , vn form a basis for a vector space V then they must be non zero and distinct and so we write them as a set { v1 , v2 , …… , vn }. Example (1) The vectors e1 = (1 , 0 ) and e2 = ( 0 , 1 ) form basis for R2, the vectors e1 , e2 and e3 form basis for R3 and in general , the vectors e1 , e2 , ….. , en form a basis for Rn . Each of these sets of vectors is called the natural basis or standard basis for R2 , R3 and Rn respectively . Example (2) Show that the set S = { v1 , v2 , v3 , v4 } ,where v1 = ( 1 , 0 , 1 , 0 ) v2 = ( 0 , 1 , -1 , 2 ) , v3 = ( 0 , 2 , 2 , 1) and v4 = ( 1 , 0 , 0 ,1 ) is basis for R4 Solution (2) To show that set S = { v1 , v2 , v3 , v4 } is linear independent, we form the Equation c1 v1 + c2 v2 + c3 v3 + c4 v4 = 0 c1( 1,0,1,0 ) + c2( 0,1,-1,2 ) +c3( 0,2,2,1) +c4( 1,0,0,1 ) = ( 0,0,0,0) (c1,0,c1,o ) + ( 0,c2 -c2 ,2c2 ) + ( 0,2c3 ,2c3 ,c3 ) + (c4 ,0,0,c4 )= ( 0,0,0,0 ) (c1 + c4 , c2 + 2 c3 , c1 - c2 +2c3 , 2c2 +c3 + c4 ) = ( 0, 0, 0, 0 ) c1 + c4 = 0 ………….. (1) c2 + 2c3 = 0 ……..….. (2) c1 = - c4 c2 = -2 c3 c1 - c2 +2c3 = 0 ……(3) 2c2 +c3 + c4 = 0……(4) c1 = c2 = c3 = c4 = 0 S linearly independent . To show that S span R4 Let v = ( a , b , c , d ) k1v1 + k2v2 + k3v3 + k4v4 = ( a , b , c , d ) substituting for v1 , v2 , v3 , v4 and v , we find a solution for k1 , k2 , k3 ,and k4 to the resulting linear system for any a , b , c , and d . Hence S span R4 and is basis for R4 Example (2) We must show that the set S ={ t2 + 1 , t – 1 , 2t + 2 } is a basis for the vector space . Solution (2) We must show that S spans V and is linearly independent c1( t2 + 1 ) + c2 (t – 1) + c3 ( 2t + 2 ) = at2 + bt + c c1 t2 + c1 + c2 t - c2 + 2 c3 t + 2 c3 = at2 + bt + c c1 t2 + (c2 + 2 c3 ) t + (c1 - c2 + 2 c3 ) = at2 + bt + c c1 = a …………………..……….……… (1) c2 + 2 c3 = b c2 = b - 2 c3 ………. (2) c1 - c2 + 2 c3 = c ……………..………..... (3) To put Eq. (1) and Eq.(2) in Eq.(3) we get : a – (b - 2 c3 ) + 2 c3 = c a – b + 4 c3 = c 4c3 = c + b – a c3 cba 4 In Eq. (2) c2 = b-2 cba abc 4 2 Hence S span V To show that S is linearly independent Let : c1 (t2 + 1 ) + c2 ( t – 1) + c3 (2t + 2 ) = 0t2 + 0t +0 c1t2 + c1 + c2t – c2 + 2 c3t +2 c3 = 0t2 + 0t +0 c1t2 + (c2 + 2 c3 )t + (c1 - c2 +2 c3 ) = 0t2 + 0t +0 c1 = 0 c2 + 2 c3 = 0 c2 = -2 c3 c1 - c2 +2 c3 = 0 0 + 2 c3 + 2 c3 =0 c3 = 0 c2 = 0 S is basis . Theorem (4) If S = { v1 , v2 , ………. , vn } is a basis for a vector space V . Then every vector in V can be written in one and only one way as linear combination of the vectors in S . Proof (4) S is basis S is span every vector v in V can be written as a linear combination of the vectors in S . Let v = c1 v1 + c2 v2 + ………. + cnvn and v = a1 v1 + a2 v2 + ………. + anvn c1 v1 + c2 v2 + ………. + cnvn = a1 v1 + a2 v2 + ………. + anvn c1 v1 + c2 v2 + ………. + cnvn – ( a1 v1 + a2 v2 + ………. + anvn ) = 0 (c1 - a1 ) v1 + (c2 - a2 ) v2 + ……….. + (cn - an ) vn = 0 S basis S linear independent S linear combination c1 - a1 = 0 c1 = a1 c2 - a2 = 0 c2 = a2 cn – an = 0 cn = an There is only one away to express v as a linear combination of the vectors in S . Theorem (5) Let S = { v1 , v2 , ………. , vn } be a set of onozero vectors in a vectorand space V and let W = span S . Then some subset of S is a basis for W . Example Let S = { v1 , v2 , v3 , v4 , v5 } be a set of vectors in R4 where v1 = ( 1 , 2 , -2 , 1 ) , v2 = ( -3 , 0 , -4 , 3 ) , v3 = ( 2 , 1 , 1 , -1 ) v4 = ( -3 , 3 , -9 , 6 ) and v5 = ( 9 , 3 , 7 , -6 ) find a subset of that is a basis for W = span S . Solution step 1 : c1 ( 1 , 2 , -2 , 1 ) + c2 ( -3 , 0 , -4 , 3 ) + c3 ( 2 , 1 , 1 , -1 ) + c4 ( -3 , 3 , -9 , 6 ) + c5 ( 9 , 3 , 7 , -6 ) = ( 0 , 0 , 0 , 0 ) step 2 : Equating corresponding components, we obtain the homogeneous system c1 - 3 c2 + 2 c3 -3 c4 + 9 c5 = 0 c2 + c3 + 3 c4 + 3 c5 = 0 -2 c1 - 4 c2 + c3 – 9 c4 + 7 c5 = 0 c1 + 3 c2 - c3 + 6 c4 – 6 c5 = 0 1 3 2 3 9 0 1 0 1 3 3 0 1 0 2 4 1 9 7 0 0 3 1 6 6 0 1 0 1 2 1 1 2 0 0 3 2 3 2 0 0 0 0 0 0 0 0 0 0 3 2 5 2 0 step (3) ; The leading a pear in columns land 2 so { v1 , v2 }is a basis for W=span S Theorem (6) If S = { v1 , v2 , ………. , vn } is a basis for a vector space V and T { w1 , w2 , …….. , wr } is a linearly independent set of vectors in V, then r n Proof Let T1 = {w1 , v1 , v2 , ………. , vn } S span V S span T1 W is linear combination of the vectors S we find that T1 is linearly dependent by theorem ( )some vj is a linear combination of the preceding vectors in T1 Delete that particular vector vj Let = { w1 , v1 , ……….. , vj-1 , vj+1 ,……. , vn } Note that S1 span V Let T2 = { w2 , w1 , v1 , …… , vj-1 , vj+1 , …… , vn } Then T2 is linearly dependent Some vector in T2 is linear combination of preceding vectors in T2 T is linear independent this cannot be w1 so it is i j . If the V vectors are all eliminated be for we can run out of w vectors then the resulting set of w vectors, a subset of T, is a linearly dependent, which implies that T is also linearly dependent . we have reached a contradiction, 1 1 1 0 0 1 0 1 1 1 0 0 0 0 0 0 0 0 0 1 0 0 0 0 1 0 0 0 0 1 0 0 0 0 1 0 1 0 0 0 0 1 0 1 0 0 0 0 0 0 1 0 0 0 1 1 The leading Is appear in columns 1 , 2 , 3 and 6, we conclude that { v1 , v2 , e1 , e4 } is basis for R4 containing v1 and v2 Theorem (7) Let V be an n – dimensional vector space and S = {v1 , v2 , ……. , vn } be a set of n vectors in V If S is linearly independent then it is a basis for V . If S span V then it is a basis for V . Example In example span Sis subspace of R4 , so dim w 4 S contains five vectors, we conclude by corollary that S is not a basis for W . In example 2 dim R4 = 4 and the set S contains four vectors it is possible for S to be basis for R4 . If S linearly independent or span R4, it is a basis ; other wise it is not a basis .thus , we need only check on of the conditions in Th . 7 not both . Inner Product Space Definition : Let V be a real vector space . An inner product on V is a function that assigns to each order pair of vectors u and v in V a real number ( u , v ) satisfying the following properties : 1. ( u , v ) 0 , ( u , v ) = 0 if and only if u = 0 . 2. ( u , v ) = ( v , u ) for any u , v in V . 3. ( u + v , w ) = ( u , w ) + ( v , w ) . 4. (cu , v ) = c ( u , v ) for u , v in V and c real number . Its clear that c ( u , v ) = ( u , cv ) because ( u , cv ) = ( cv , u) = c ( v , u ) Also, ( u , v + w ) = ( u , v ) + ( u , w ) . Example : We defined the standard inner product or dot product on Rn as the function that assigns to each ordered pair of vectors : u1 u u 2 u n , v1 v v 2 in Rn the number denoted by ( u , v ), given by : v n ( u , v ) = u1v1 + u2v2 +…… + unvn . of course, we must verify that this function satisfied the properties of definition . Remark : If we view the vectors u and v in Rn as n× 1 matrices, then we can write the standard inner product of u and v in terms of matrix multiplication as ( u , v ) = uT v Example: Let v be any finite – dimension vector space and let S = { u1 , u2 ,…. , un } be an ordered basis for V . if : V = a1u1 + a2u2 + ……… +anun and W = b1u1 + b2u2 + ………. + bnun we define : ( V , W ) = ( [v] s , [w]s ) = a1b1 + a2b2 + ……. + anbn We must satisfying the properties of inner product Example : u Let u 1 u 2 v and v 1 be vectors in R2 v 2 ( u , v ) = u12 -2 u1 u2 +3u22 show that this an inner product . Solution: ( u , v ) = u12 – 2 u1 u2 +u22 + 2u22 = ( u1 – u2 )2 +2u22 0 moreover, if ( u , u ) = 0 u1 = u2 and u2 = 0 so, u1 = 0 As follows ( u , u ) = u2 – 2uu + 3u2 = u2 – 2u2 + 3u2 = u2 -2u2 +3u2 = 0 Definition : A real vector space that has an inner product defined on it is called an inner product space "a Euclidean space " In an inner product space we define the length of a vector u by u (u, v) we have u 0 if u 0 we can show that 0 0 Theorem [Cauchy –Schwarz Inequality ] If u and v are any two vectors in an inner product space V, then : (u, v) u . v Example 3 1 Let u 2 and v 2 be in the a Euclidean space R3 with the 2 3 standard inner product .Then : ( u , v ) = (1)(-3) + (2)(2) +(-3)(2) = -3 + 4 -6 = -5 u (u, v) (1) 2 (2) 2 (3) 2 14 v (u , v) (3) 2 (2) 2 (2) 2 17 (u , v) u . v Corollary [ Triangle Inequality ] If u and v are any vectors in an inner product space V, then : uv 2 (u v, u v) (u, v) 2(u, v) (v, v) uv 2 u 2(u, v) v 2 2 ( u v )2 so, u v u v Orthonormal basis Definition : Let V be an inner product space two vectors u and v are orthonormal if ( u , v ) = 0 Example Let v be the a Euclidean space R4 with the started inner product if 1 0 u 0 1 0 2 , v 3 0 Then: ( u , v ) = (1)(0) + (0)(2) +(0)(3) + (1)(0) = 0 Then, u , v are orthogonal . Definition : Let V an inner product space . A set S of vectors in V is called " orthogonal " if any two distinct vectors in S are orthogonal also, each vectors in S is of unit length then S is called " orthonormal" . Remark : The vector that length equal to 1 called unit vector and it of the form u 1 1 1 x so, u (u, v) ( x, x) x x x ( x, x) x.x x x.x 1 Theorem Let S = { u1 , u2 , ……. , un } be an orthogonal set of non zero vectors Rn in an inner product V, then S is linearly independent . proof Consider the equation c1u1 + c2 u2 + …… + cnun = 0 ………… (1) Taking the dot product of both side of (1) with ui , 1 i k , we have : (c1u1 + c2 u2 + …… + cnun ).ui = 0 . ui …………… (2) by properties ( ) the left side of (2) is : c1 ( u1 . ui ) + c2 ( u2 . ui ) + …….. + cn ( un . ui ) = 0 And the right side is 0 . since uj . ui = 0 if i j ,(2) become : 0 = ci (ui .ui ) = ci u i By ( ) 2 ………….. (3) ui 0 , since ui 0 Hence (3) implies that ci = 0 , 1 i k , and S is linearly independent Example Find the orthogonal set if : 2 , x 2 0 1 1 x1 0 2 and 0 x 3 1 , then { x1 , x2 , x3 } is an orthogonal 0 set and : (x1 , x2 ) =0 (x1 , x3 ) = 0 (x2 , x3 ) = 0 so, the vectors : u1 x1 1 5 x1 0 2 5 Whose x1 5 , x2 u 2 , x2 x2 5 2 5 0 1 5 0 x3 , u 3 x 1 3 0 , x3 1 so, u1 , u2 , x3 are unit vectors that : u1 u 2 x3 1 so, { u1 , u2 , x3 } is an orthonormal . Example 1 Let x1 3 2 1 and x 2 1 find the orthonormal set . 1 Solution ( x1 , x2 ) = 0 x1 1 9 4 14 , x2 1 1 1 3 x1 u1 x1 1 14 3 14 2 14 x 2 , u2 x 2 1 3 1 3 1 3 so, { u1 , u2 } is orthonormal set . Example 1 3 Let x1 1 2 4 1 , x 2 1 0 ( x1 , x2 ) = 0 x1 1 9 1 4 15 x 2 16 1 1 0 18 x u1 1 x1 1 15 3 15 1 15 2 15 4 18 1 x u 2 2 18 x2 1 18 0 So, { u1 , u2 } is an orthonormal set . Definition: F0r every Euclidean space Theorem Let S = { u1 , u2 , ….. , un } be an orthonormal basis for a Euclidean space V and let v any vector in V, then v = c1v1 + c2v2 + …….. + cnvn where ci = ( v , u i ) , i = 1 , 2 , …….. , n Example Let S = { u1 , u2 , u3 }be a basis for R3 2 u1 Theorem [Grom – Schmidt Process] Let V be an inner product space and w 0 an n- dimensional subspace of V, then there exist an orthonormal basis T = { w1 , w2 , ….. , wn } for w . Gram –Shmidit Process : Let S = { u1 , u2 , ….. , un }be any basis for w where w is subspace of V then : v1 = u 1 and v2 u 2 a1v1 u 2 (u 2 , v1 ) v1 (v1 , v1 ) and v3 u 3 (u3 , v1 ) (u , v ) v1 3 2 (v1 , v1 ) where a1 (u 2 , v1 ) (v1 , v1 )