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Diffstat (limited to 'li/matlab_hw.py')
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diff --git a/li/matlab_hw.py b/li/matlab_hw.py index 3473934..cf20709 100644 --- a/li/matlab_hw.py +++ b/li/matlab_hw.py @@ -1,12 +1,22 @@ import numpy as np +from time import perf_counter import scipy.linalg +import pandas as pd +import sympy + +timer_problems = True +regression_problems = True +np.set_printoptions(precision=3, suppress=True) +# if you want to run the regression problems, you need this dataset: +# `insurance.csv` in the current directory from +# https://www.kaggle.com/mirichoi0218/insurance/version/1 -print("Section 1.3: #30") +print("\nSection 1.3: #30") coeff = ( - [[ 1, 1, 1 ], - [ 1, 2, 2 ], - [ 2, 3, -4]] + ( 1, 1, 1 ), + ( 1, 2, 2 ), + ( 2, 3, -4) ) print( np.linalg.solve( @@ -20,7 +30,7 @@ np.linalg.solve( [7, 10, 3]) ) -print("Section 1.3: #32") +print("\nSection 1.3: #32") dimension = 3 tot = [0]*3 @@ -31,7 +41,7 @@ for x in range(ct): tot[i] += U[i][i] print([x/ct for x in tot]); -print("Section 1.4: #21") +print("\nSection 1.4: #21") A = [[.5, .5], [.5, .5]] B = [[1, 0], [0, -1]] @@ -52,20 +62,66 @@ print("C^3") print(np.linalg.matrix_power(C, 3)) print("C^k = 0") -print("Section 1.4: #59") +print("\nSection 1.4: #59") + +v = [3,4,5] +A = np.identity(3) +print(f"A * v = {np.matmul(A, v)}") +print(f"v' * v = {np.dot(v,v)}") +print(f"v * A = {np.matmul(v, A)}") + +print("\nSection 1.4: #60") + +print(f"Av = {np.matmul(np.ones((4,4)), np.ones((4,1)))}") +print(f"Bw = {np.matmul(np.identity(4)+np.ones((4,4)), np.zeros((4,1))+2*np.ones((4,1)))}") + +print("\nSection 1.6: #12") + +tridiag_mask = np.identity(11); +i,j = np.indices(tridiag_mask.shape) +tridiag_mask[i==j+1] = 1 +tridiag_mask[i==j-1] = 1 +tridiag_preserved = True +triangle_preserved = True +sym_preserved = True + +for x in range(1000): + a = np.random.rand(11,11) + inv = np.linalg.inv(a*tridiag_mask) + if (inv != inv*tridiag_mask).any(): + tridiag_preserved = False + + triu = np.triu(a) + inv = np.linalg.inv(triu) + if (inv != np.triu(inv)).any() and (inv != np.tril(inv)).any(): + triangle_preserved = False + + sym = np.transpose(triu) + triu - triu*np.identity(11) + if (sym != np.transpose(sym)).any(): + sym_preserved = False -print("A * v = [3, 4, 5]") -print("v' * v = 50") -print(f"v * A = {np.matmul([3,4,5], np.identity(3))}") +if triangle_preserved: + print("Triangular matrices' inverses are triangular.") +else: + print("Triangular matrices' inverses are not triangular.") -print("Section 1.4: #60") +if sym_preserved: + print("Symetric matrices' inverses are symmetric.") +else: + print("Symmetric matrices' inverses are not symmertic.") -print("Av = [4. 4. 4. 4.]") -print("Bw = [10. 10. 10. 10.]") +if tridiag_preserved: + print("Tridiagonal matrices' inverses are tridiagonal.") +else: + print("Tridiagonal matrices' inverses are not tridiagonal.") -print("Section 1.6: #12") +print("Entries being integers isn't preserved. This is trivially shown" +" the 1x1 [ 2. ] matrix's inverse [ 1/2. ]") +print("Entries being fractions (rationals) is preserved because the" +" matrix augmented with an identity and then reduced only requires" +" rational multiplications.") -print("Section 1.6: #32") +print("\nSection 1.6: #32") print("the inverse of the first matrix is") print(np.linalg.inv(5*np.identity(4) - np.ones((4,4)))) @@ -75,9 +131,9 @@ print(np.matmul(np.ones((4,4)),np.ones((4,4)))) print("so we can solve this like the following equation: (a*eye +\n\ b*ones)(c*eye + d*ones) = ac*eye + (ad+bc+dimension*bd)*ones = eye") print("c = 1/a. d = -b/a/(a+dimension*b), giving for the next matrix") -print("a = 1/6, d = 6/(1/6+5*-1)") # WRONG +print("a = 1/6, d = 6/(1/6+5*-1)") # WRONG (TODO?) -print("Section 1.6: #47") +print("\nSection 1.6: #47") print("I'm not sure. This is Python. It says (in either case):") print("numpy.linalg.LinAlgError: Singular matrix") @@ -86,54 +142,49 @@ print(np.linalg.solve(np.ones((4, 4)), np.random.rand(4, 1))) print(np.linalg.solve(np.ones((4, 4)), np.ones((4, 1)))) ''' -''' #68 -dimension = 500 -northwest = np.random.rand(dimension, dimension) -for x in range(0, dimension): - for y in range(x+1, dimension): - northwest[y][x] = 0 -print(northwest) -''' -print("Section 1.6: #69") - - -from time import perf_counter -matrix = np.random.rand(500, 500) -start = perf_counter() -np.linalg.inv(matrix) -first_time = perf_counter() - start -print("500x500 inverse:", str(first_time) + "s") -matrix = np.random.rand(1000, 1000) -start = perf_counter() -np.linalg.inv(matrix) -second_time = perf_counter() - start -print("1000x1000 inverse:", str(second_time) + "s") -print("factor:", second_time / first_time) - -print("Section 1.6: #70") - -dimension = 1000 -I = np.identity(dimension) -A = np.random.rand(dimension, dimension) -U = np.random.rand(dimension, dimension) -for x in range(0, dimension): - for y in range(x+1, dimension): - U[y][x] = 0 - -start = perf_counter() -np.linalg.inv(U) -print("inverse of U:", str(perf_counter() - start) + "s") -start = perf_counter() -np.linalg.solve(U, I) -print("U\I:", str(perf_counter() - start) + "s") -start = perf_counter() -np.linalg.inv(A) -print("inverse of A:", str(perf_counter() - start) + "s") -start = perf_counter() -np.linalg.solve(A, I) -print("A\I:", str(perf_counter() - start) + "s") - -print("Section 1.6: #71") +if timer_problems: + print("\nSection 1.6: #69") + + matrix = np.random.rand(500, 500) + start = perf_counter() + np.linalg.inv(matrix) + first_time = perf_counter() - start + print("500x500 inverse:", str(first_time) + "s") + matrix = np.random.rand(1000, 1000) + start = perf_counter() + np.linalg.inv(matrix) + second_time = perf_counter() - start + print("1000x1000 inverse:", str(second_time) + "s") + print("factor:", second_time / first_time) + print("This matches theory. We also expect that almost every random" + " matrix is invertible") + + print("\nSection 1.6: #70") + + dimension = 1000 + I = np.identity(dimension) + A = np.random.rand(dimension, dimension) + U = np.random.rand(dimension, dimension) + for x in range(0, dimension): + for y in range(x+1, dimension): + U[y][x] = 0 + + start = perf_counter() + np.linalg.inv(U) + print("inverse of U:", str(perf_counter() - start) + "s") + start = perf_counter() + np.linalg.solve(U, I) + print("U\I:", str(perf_counter() - start) + "s") + start = perf_counter() + np.linalg.inv(A) + print("inverse of A:", str(perf_counter() - start) + "s") + start = perf_counter() + np.linalg.solve(A, I) + print("A\I:", str(perf_counter() - start) + "s") + + print("There is no significant performance deviation in Python.") + +print("\nSection 1.6: #71") def proof(dim): L = np.identity(dim) - np.diag([x/(1+x) for x in range(1,dim)], -1) @@ -141,19 +192,17 @@ def proof(dim): Linv = np.linalg.inv(L) print("L^{-1}:") print(Linv) - right = True for j in range(1,dim+1): for i in range(1,j+1): if not np.isclose(Linv[j-1][i-1], i/j): print("the assertion in the book is wrong at",i,j) - right = False - if right: - print("The book is right") + return + print("The book is right") proof(4) proof(5) -print("Section 2.2: #33") +print("\nSection 2.2: #33") print("For the first matrix:") A = [[1, 3, 3], [2, 6, 9], [-1, -3, 3]] @@ -170,17 +219,36 @@ print(scipy.linalg.null_space(A)) print("particular solution:") print(np.linalg.lstsq(A, b, rcond=None)[0]) -print("Section 2.2: #35") -print("TODO") +print("\nSection 2.2: #35") +# b is, trivially, in the column space. + +def restrictions(A): + p,l,u = scipy.linalg.lu(A) + # PLU = A \to col(A) = col(PL) because U is full rank + # PLx = b + order = np.arange(len(A)) # [0,1,2,3] + for col in reversed(np.transpose(p@l)): + print(' + '.join( + str(col[int(pos)]) + '*x_' + str(int(pos)) + for pos in order + if not np.isclose(col[int(pos)], 0) + ) + + ' = 0.') + print("For the first system:") A = [[1, 2], [2, 4], [2, 5], [3, 9]] +restrictions(A) -print("Section 2.2: #36") +print("For the second system:") +A = [[1,2,3], [2,4,6], [2,5,7], [3,9,12]] +restrictions(A) + +print("\nSection 2.2: #36") print("(a)") A = np.array([[1, 2, 1], [2, 6, 3], [0, 2, 5]]) print("Basis of the column space:") -print(scipy.linalg.orth(A)) +print(np.linalg.matrix_rank(A)) print("Multiplying the rows by this gives zero (for this matrix, \ equivalent to [0 0 0]^T)") print(scipy.linalg.null_space(A.transpose())) @@ -188,12 +256,12 @@ print(scipy.linalg.null_space(A.transpose())) print("(b)") A = np.array([[1, 1, 1], [1, 2, 4], [2, 4, 8]]) print("Basis of the column space:") -print(scipy.linalg.orth(A)) +print(scipy.linalg.orth(A)) # ugh this ain't right print("Multiplying the rows by this gives zero (for this matrix, \ equivalent to [0 2 -1]^T)") print(scipy.linalg.null_space(A.transpose())) -print("Section 2.3: #2") +print("\nSection 2.3: #2") print("Largest possible number of independent vectors is the dimension \ of the space spanned by these vectors, or the number of vectors in the \ @@ -202,9 +270,9 @@ v = [[ 1, 1, 1, 0, 0, 0], [-1, 0, 0, 1, 1, 0], [ 0, -1, 0, -1, 0, 1], [ 0, 0, -1, 0, -1, -1]] -print(len(scipy.linalg.orth(v))) +print(np.linalg.matrix_rank(v)) -print("Section 2.3: #5") +print("\nSection 2.3: #5") print("(a)") @@ -222,17 +290,277 @@ v = [[ 1, 2, -3], if len(scipy.linalg.orth(v)) == 3: print("they are independent") else: print("they are not independent") -print("Section 2.3: #13") -# probably out of spirit of the matlab hw -print("This one can be done easily without a calculator because the \ - echelon matrix has already been computed.") -print("The dimensions of all of these is 2, and the row spaces are the \ - same.") - -print("Section 2.3: #16") -print("TODO") - -print("Section 2.3: #18") -print("TODO") - -print("Section 2.3: #24") +print("\nSection 2.3: #13") +print("U is the echelon martix of A, and for any matrix and its echelon" +" form, the dimensions of these spacees are the same, and the row" +" spaces are equal.") + +A = [[1,1,0], [1,3,1], [3,1,-1]] +U = [[1,1,0], [0,2,1], [0,0,0]] +print(f"(a) dim col A = {np.linalg.matrix_rank(A)}") +print(f"(b) dim row A = {np.linalg.matrix_rank(A)}") +print(f"(c) dim col U = {np.linalg.matrix_rank(U)}") +print(f"(d) dim row U = {np.linalg.matrix_rank(U)}") +stack = np.vstack((A, U)) +print("Since the row spaces are the same, the dimension of the space" +" both their rows span should be 2, like the dimension of each matrix's" +f" own row space. The dimension is {np.linalg.matrix_rank(stack)}.") + +print("\nSection 2.3: #16") +v = np.transpose([[1,1,0,0], [1,0,1,0], [0,0,1,1], [0,1,0,1]]) +rank = np.linalg.matrix_rank(v) +if rank == v.shape[0] and rank == v.shape[1]: + print("The matrix is full rank, so the rows are linearly " + "independent.") +# Finding the generic solution to Ax = 0 on a computer can also be +# written as scipy.linalg.null_space +if len(scipy.linalg.null_space(v)) == 0: + print("The matrix only has the trivial solution, so its columns are" + " linearly independent, by definition.") + +print("\nSection 2.3: #18") +w = np.transpose([[1,1,0], [2,2,1], [0,0,2]]) +b = [3,4,5] +lstsq = np.linalg.lstsq(w, b, rcond=None)[0] +print("We get least squares solution:") +print(lstsq) +print("Multiplying back out:") +mul = np.matmul(w, lstsq) +print(mul) +if np.allclose(mul, b): + print("which is b, so there is a solution.") +else: + print("which isn't b, so there isn't a solution.") + +w = [[1,2,0], [2,5,0], [0,0,2], [0,0,0]] +rank = np.linalg.matrix_rank(w) +if rank == 3: + print("The vectors span R^3, so a solution exists for all b.") +else: + print("The vectors don't span R^3, so some b don't have a solution") + +print("\nSection 2.3: #24") +v = [1,-2,3] # vT x = 0 + +print("Basis for the solution set:") +print(scipy.linalg.null_space([v])) + +print("Intersection with the xy plane:") # xy plane -> z = 0 +u = [0,0,1] # uT x = 0 +print(scipy.linalg.null_space([v,u])) + +print(f"Basis of V-perp: {v}") + +if regression_problems: + df = pd.read_csv('insurance.csv') + df['smoker'] = df['smoker'].replace({'yes': 1, 'no': 0}) + df['sex'] = df['sex'].replace({'female': 1, 'male': 0}) + regions = df['region'].unique() + for region in df['region'].unique(): + df[region] = df.region.apply(lambda r: r == region) + del df['region'] + + vals = df.to_numpy() + # Index(['age', 'sex', 'bmi', 'children', 'smoker', 'charges', 'southwest', 'southeast', 'northwest', 'northeast'], + A = [(1, row[0], 1.1**row[0], row[1], row[2], row[3], row[4], + row[6], row[7], row[8], row[9]) for row in vals] + # exponential and linear model of age, and linear models of + # everything else + b = [row[5] for row in vals] + x, e, rank, s = np.linalg.lstsq(A, b, rcond=None) + print(f"With error {rank},\n" + f"charges = {x[0]} + {x[1]}*age + {x[2]}*1.1^age + {x[3]}*female + " + f"{x[4]}*bmi + {x[5]}*children + {x[6]}*smoker + " + f"{x[7]}*southwest + {x[8]}*southeast + {x[9]}*northwest + " + f"{x[10]}*northeast") + + print("Expected charges for a 45-year-old woman in the northeast " + "who doesn't smoke and has no children at BMI of 27 is " + f"{x[0] + x[1]*45 + x[2]*1.1**45 + x[3] + x[4]*27 + x[10]}") + + +print("\nSection 3.3: #32") +b = (0,8,8,20) +t = np.array((0,1,3,4)) +# mostly given by np linalg lstsq +A = np.transpose((t, np.ones(t.shape))) +x, e, rank, s = np.linalg.lstsq(A, b, rcond=None) +hatb = np.matmul(A,x) +print(f"b = {x[0]}t + {x[1]}") +print(f"Approximations {hatb} have error {hatb-b} with min. error " + f"E^2 = {e}") + +print("\nSection 3.3: #33") +p = (1,5,13,17) +for arow, brow in zip(A, b): + print(f"{arow[0]}t + {arow[1]}t = {brow}") +x, e, rank, s = np.linalg.lstsq(A, p, rcond=None) +print(f"We get exact solution p = {x[0]}t + {x[1]} with error {e}.") + +print("\nSection 3.3: #34") +e = np.array(b) - np.array(p) +print(f"A^Te = {np.matmul(np.transpose(A), e)}, so e " + "is orthogonal to every column of A.") +print(f"The error ||e|| is {np.sqrt(np.dot(e,e))}.") + +print("\nSection 3.3: #35") +def buildcoeff(coeff): + return ' + '.join(f"{c}*x_{i}" for i,c in enumerate(coeff)) + +A = np.transpose((t*t, t, np.ones(t.shape))) +eq = np.matmul( np.transpose(A), b ) +for coeff, of in zip(np.matmul(np.transpose(A), A), eq): + print(f"{buildcoeff(coeff)} = {of}") + +print("\nSection 3.3: #36") +A = np.transpose((t*t*t, t*t, t, np.ones(t.shape))) +x, e, rank, s = np.linalg.lstsq(A, b, rcond=None) +p = np.matmul(A,x) +print(f"p = b = {p}") +print(f"e = p-b = 0 = {p-b}") + +print("\nSection 3.3: #37") +st = sum(t)/len(t) +sb = sum(b)/len(b) +A = np.transpose((t, np.ones(t.shape))) +x, e, rank, s = np.linalg.lstsq(A, b, rcond=None) +print(f"hat b = {sb} = {np.dot((st, 1), x)} = C(hat t) + D") + +print("This is true because the first equation in A^TAp = A^Tb is " +"(1,1,1,1)Ap = (1,1,1,1)b, so (1,1,1,1)Ap = (1,1,1,1) (Ct + D) = C(hat " +"t) + D") + +print("\nSection 5.2: #29") +A = ((.6, .4), (.4, .6)) +Aw,Av = np.linalg.eig(A) +if all(l < 1 for l in Aw): + print("A^k converges.") +else: + print("B^k doesn't converge to zero") +B = ((.6, .9), (.1, .6)) +Bw,Bv = np.linalg.eig(B) +if all(l < 1 for l in Bw): + print("B^k converges.") +else: + print("B^k doesn't converge to zero.") + +print("\nSection 5.2: #30") +if any(l > 1 for l in Aw): + print("A^k diverges") +else: + l = [0 if l < 1 else 1 for l in Aw] #Lambda has diagonal = l, 0 else + print(f"A^k converges to\n{np.matmul( np.matmul(Av, np.diag(l)), np.linalg.inv(Av) )}") + +print("\nSection 5.2: #31") +for u in ((3, 1), (3, -1), (6,0)): + L = np.diag(Aw**10) + lim = np.matmul(np.matmul( np.matmul(Av, L), np.linalg.inv(Av) ), u) + print(f"Limit of u0 = {u}: {lim}") + +print("\nSection 5.2: #45") +A = np.array( ((.6, .2),(.4,.8)) ) +Alim = np.array( ((1/3, 1/3),(2/3, 2/3)) ) + +Aw,Av = np.linalg.eig(A) +Alimw,Alimv = np.linalg.eig(Alim) + +print(f"These matrices have the same eigenvectors\n{Aw}\nand\n{Alimw},") +print("The limit of eigenvalues of A^k is A^\infty, so A^100 is close " + "(exponents quickly approach their asymptotes).\n" + f"Eigenvalues of A are {Av}, and of A^\infty are {Alimv}") + +print("Section 5.3: #3") +f = np.array(((1,1), (1,0))) +k = f +for i in range(1,5): + print(f"F^{i} =\n{k}") + k = np.matmul(k, f) + +n = 20 +fn = round(((1+np.sqrt(5))/2)**n/np.sqrt(5)) +print(fn) + +print("\nSection 5.3: #7") + +l = (2, 1) +for x in range(9): + l = (l[1], l[0] + l[1]) +print(f"Exactly, {l[1]}") + +l1 = (1+np.sqrt(5))/2 +print(f"Approximately, L_{10} = {round(l1**10)}") + +print("Section 5.3: #16") +A = np.array( ((0, -1), (1, 0)) ) +stdeig = np.linalg.eig(A) +print(stdeig) +I = np.eye(A.shape[0]) +est = ( I+A, np.linalg.inv(I-A), np.matmul( np.linalg.inv(I - A/2), + I+A/2 ) ) +names = ( "Forward", "Backward", "Centered" ) +for f,name in zip(est, names): + w,v = np.linalg.eig(f) + print(f"{name} approximation has eigenvalues {w}.") + if all(np.isclose(abs(e), 1) for e in w): + print(f"{name} stays on the circle because all the eigenvalues " + "have magnitude 1.") + +print("\nSection 5.3: #29") + +B = ((3, 2), (-5, -3)) +C = ((5, 7), (-3, -4)) + +w,v = np.linalg.eig(B) +print(f"B ({B}) has eigenvalues\n{w}, and B^4 has eigenvalues\n{w**4} =" + " (1, 1), meaning that it is the identity.") +w,v = np.linalg.eig(C) +print(f"C ({C}) has eigenvalues\n{w}, and C^3 has eigenvalues\n{w**3} =" + " (-1, -1), meaning that it is the skew identity -I.") + +print("\nSection 5.4: #28") +for x in range(1000): +# my'' + by' + ky = 0 +# u = (y,y')^T +# u' = (y',y'')^T +# my'' = - (by' + ky) +# y' = y + m,b,k = (np.random.rand(), np.random.rand(), np.random.rand()) + A = (( 0, 1), + (-b,-k)) + M = (( 1, 0), + ( 0, m)) + # Mu' = Au => u' = Bu + B = np.matmul( np.linalg.inv(M), A ) + w,v = np.linalg.eig(B) + +print("\nChecking that roots of characteristic polynomial = eigenvalues") +lamda = sympy.symbols('lamda') +for x in range(50): + npmat = np.random.rand(10, 10) + npmat += np.transpose(npmat) # make it symmetric for ease of proof + mat = sympy.Matrix(npmat) + + poly = mat.charpoly(lamda) + + w,v = np.linalg.eig(npmat) + roots = sorted(np.array(poly.nroots(), dtype='float64')) + w = sorted(w) + if not np.allclose(w, roots, atol=.001): + print("This property doesn't hold for all matrices") + +# Power method for eigenvalues and characteristic polynomials (see doc) + +print("\nPower Method for estimating the dominant eigen{vector,value}") +matrix = np.random.rand(20, 20) +w,v = np.linalg.eig(matrix) +truedominant = max(*w) + +# a random vector will almost never be in the span of a subset of +# eigenvectors, so we will use np.random.rand +vec = np.random.rand(20) +for x in range(50): # 50 iterations of the power method + vec = vec / np.linalg.norm(vec) + prev = vec + vec = matrix @ vec + val = np.linalg.norm(vec) / np.linalg.norm(prev) +print(f"power method gives a dominant value {val}, compared to true {truedominant}") |