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1 | 1 |
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| 2 | +@testset "Robust Hat Matrix based Robust Regression" verbose = true begin |
2 | 3 |
|
3 | | -@testset "Robust Hat Matrix based Robust Regression" begin |
4 | | - # Create simple data |
5 | | - rng = MersenneTwister(12345) |
6 | | - n = 50 |
7 | | - x = collect(1:n) |
8 | | - e = randn(rng, n) .* 2.0 |
9 | | - y = 5 .+ 5 .* x .+ e |
| 4 | + @testset "Random data" begin |
| 5 | + # Create simple data |
| 6 | + rng = MersenneTwister(12345) |
| 7 | + n = 50 |
| 8 | + x = collect(1:n) |
| 9 | + e = randn(rng, n) .* 2.0 |
| 10 | + y = 5 .+ 5 .* x .+ e |
10 | 11 |
|
11 | | - # Contaminate some values |
12 | | - y[n] = y[n] * 2.0 |
13 | | - y[n-1] = y[n-1] * 2.0 |
14 | | - y[n-2] = y[n-2] * 2.0 |
15 | | - y[n-3] = y[n-3] * 2.0 |
16 | | - y[n-4] = y[n-4] * 2.0 |
| 12 | + # Contaminate some values |
| 13 | + y[n] = y[n] * 2.0 |
| 14 | + y[n-1] = y[n-1] * 2.0 |
| 15 | + y[n-2] = y[n-2] * 2.0 |
| 16 | + y[n-3] = y[n-3] * 2.0 |
| 17 | + y[n-4] = y[n-4] * 2.0 |
17 | 18 |
|
18 | | - df = DataFrame(x=x, y=y) |
| 19 | + df = DataFrame(x=x, y=y) |
19 | 20 |
|
20 | | - reg = createRegressionSetting(@formula(y ~ x), df) |
21 | | - result = robhatreg(reg) |
| 21 | + reg = createRegressionSetting(@formula(y ~ x), df) |
| 22 | + result = robhatreg(reg) |
22 | 23 |
|
23 | | - betas = result["betas"] |
| 24 | + betas = result["betas"] |
24 | 25 |
|
25 | | - atol = 1.0 |
| 26 | + atol = 1.0 |
26 | 27 |
|
27 | | - @test isapprox(betas[1], 5.0, atol=atol) |
28 | | - @test isapprox(betas[2], 5.0, atol=atol) |
29 | | -end |
| 28 | + @test isapprox(betas[1], 5.0, atol=atol) |
| 29 | + @test isapprox(betas[2], 5.0, atol=atol) |
| 30 | + end |
| 31 | + |
| 32 | + @testset "Phone data" begin |
| 33 | + df = phones |
| 34 | + reg = createRegressionSetting(@formula(calls ~ year), df) |
| 35 | + result = robhatreg(reg) |
| 36 | + |
| 37 | + betas = result["betas"] |
| 38 | + |
| 39 | + atol = 0.001 |
30 | 40 |
|
| 41 | + @test isapprox(betas[1], -54.967349441923226, atol=atol) |
| 42 | + @test isapprox(betas[2], 1.1406353489513064, atol=atol) |
| 43 | + end |
31 | 44 |
|
| 45 | + @testset "Large Data" begin |
| 46 | + X = randn(10000, 10) |
| 47 | + y = randn(10000) |
32 | 48 |
|
| 49 | + result = robhatreg(X, y) |
33 | 50 |
|
| 51 | + betas = result["betas"] |
| 52 | + |
| 53 | + atol = 0.1 |
| 54 | + |
| 55 | + for i in 1:10 |
| 56 | + @test isapprox(betas[i], 0.0, atol=atol) |
| 57 | + end |
| 58 | + end |
| 59 | + |
| 60 | + @testset "Single Y outlier" begin |
| 61 | + @testset "LAD - Algorithm - Exact" begin |
| 62 | + df2 = DataFrame( |
| 63 | + x=[1, 2, 3, 4, 5, 6, 7, 8, 9, 10], |
| 64 | + y=[2, 4, 6, 8, 10, 12, 14, 16, 18, 1000], |
| 65 | + ) |
| 66 | + reg2 = createRegressionSetting(@formula(y ~ x), df2) |
| 67 | + result2 = lad(reg2) |
| 68 | + betas2 = result2["betas"] |
| 69 | + @test betas2[1] == 0.0 |
| 70 | + @test betas2[2] == 2.0 |
| 71 | + end |
| 72 | + end |
| 73 | +end |
34 | 74 |
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