Here is another example of a least-squares regression problem where we can benefit from mathematical programming techniques.
Data
Statistical problems typically start with a data set:
---- 79 PARAMETER data x y case1 20.202 85.162 case2 0.507 2.103 case3 26.961 55.969 case4 49.985 44.690 case5 15.129 86.515 case6 17.417 79.866 case7 33.064 56.328 case8 31.691 29.422 case9 32.209 64.021 case10 96.398 85.191 case11 99.360 68.235 case12 36.990 57.516 case13 37.289 25.884 case14 77.198 56.157 case15 39.668 58.398 case16 91.310 66.205 case17 11.958 93.742 case18 73.548 28.178 case19 5.542 5.788 case20 57.630 60.830 case21 5.141 53.988 case22 0.601 42.559 case23 40.123 61.928 case24 51.988 42.984 case25 62.888 58.308 case26 22.575 4.414 case27 39.612 67.282 case28 27.601 56.445 case29 15.237 0.218 case30 93.632 11.896 case31 42.266 60.515 case32 13.466 51.721 case33 38.606 65.392 case34 37.463 16.978 case35 26.848 74.588 case36 94.837 -0.803 case37 18.894 60.060 case38 29.751 14.005 case39 7.455 60.066 case40 40.135 62.898
The question is: how can we estimate the intercept and slope of these three lines?