A continuación se muestran el peso y la presión arterial sistólica de 26 hombres seleccionados al azar, de entre 25 y 30 años:
| Sujeto | Peso (libras) | Presión sistólica (mm Hg) |
|---|---|---|
| 1 | 165 | 130 |
| 2 | 167 | 133 |
| 3 | 180 | 144 |
| 4 | 155 | 128 |
| 5 | 212 | 159 |
| 6 | 175 | 138 |
| 7 | 190 | 150 |
| 8 | 210 | 160 |
| 9 | 200 | 156 |
| 10 | 149 | 125 |
| 11 | 158 | 133 |
| 12 | 169 | 135 |
| 13 | 169 | 141 |
| 14 | 172 | 138 |
| 15 | 159 | 128 |
| 16 | 168 | 132 |
| 17 | 174 | 143 |
| 18 | 183 | 145 |
| 19 | 215 | 162 |
| 20 | 195 | 156 |
| 21 | 180 | 145 |
| 22 | 143 | 124 |
| 23 | 240 | 170 |
| 24 | 235 | 165 |
| 25 | 192 | 156 |
| 26 | 187 | 144 |
Estime, de manera manual (Excel), mediante mínimos cuadrados, los
coeficientes de regresión del modelo.
Muestre cada uno de los pasos, cálculos y ecuaciones usadas para
encontrar los parámetros.
Use R - RStudio para realizar la estimación de los coeficientes de
regresión del modelo.
Es necesario en este punto mostrar el código usado y los resultados
obtenidos.
\[ y_i = \beta_0 + \beta_1 x_i + \varepsilon_i \]
\[ \beta_1 = \frac{n\sum x_i y_i - \sum x_i \sum y_i}{n\sum x_i^2 - (\sum x_i)^2} \]
\[ \beta_0 = \bar{y} - \beta_1 \bar{x} \]
\[ \hat{y} = \beta_0 + \beta_1 x \]
| Sujeto | Peso (libras) | Presión sistólica (mm Hg) | xi-xbarra | yi-ybarra | (xi-xbarra)(yi-ybarra) | (xi-xbarra)^2 | Ajustados | Residuales | xi*ei | ei*ajustado | ei^2 |
|---|---|---|---|---|---|---|---|---|---|---|---|
| 1 | 165 | 130 | -17.423077 | -13.846154 | 241.2426036 | 303.563609 | 134.79035 | -4.7909354 | -790.41524 | -645.69929 | 22.9478879 |
| 2 | 167 | 133 | -15.423077 | -10.846154 | 167.2810651 | 237.871032 | 135.82908 | -2.8290854 | -472.59472 | -384.38621 | 8.0083892 |
| 3 | 180 | 144 | -2.423077 | 0.15384615 | -0.37252747 | 5.872601 | 148.52674 | -4.5267369 | -436.81338 | -372.13502 | 20.501151 |
| 4 | 155 | 128 | -27.423077 | -15.846154 | 434.5509915 | 752.025148 | 129.59283 | -1.5928258 | -246.86862 | -206.41932 | 2.5371063 |
| 5 | 212 | 159 | 29.576923 | 15.153846 | 448.2014477 | 874.794379 | 154.78109 | 4.2189077 | 1246.77851 | 652.79855 | 17.798958 |
| 6 | 175 | 138 | -7.423077 | -5.8461538 | 43.384066 | 55.106532 | 141.54646 | -3.5464585 | -130.34674 | -100.24724 | 12.577326 |
| 7 | 190 | 150 | 7.5769231 | 6.1538462 | 46.6271298 | 57.407693 | 147.78490 | 2.2150971 | 167.94121 | 327.44421 | 4.9072594 |
| 8 | 200 | 156 | 17.576923 | 12.153846 | 213.6271298 | 308.948225 | 152.91817 | 3.0818253 | 62.60365 | 471.77484 | 9.4996462 |
| 9 | 156 | 132 | -26.423077 | -11.846154 | 312.6271298 | 698.096148 | 130.51109 | 1.4889127 | -41.44809 | 194.87038 | 2.2168466 |
| 10 | 160 | 133 | -22.423077 | -10.846154 | 243.6271298 | 502.794379 | 132.51309 | 0.4869127 | -10.90934 | 64.48348 | 0.2370868 |
| 11 | 169 | 133 | -13.423077 | -10.846154 | 145.6271298 | 180.187802 | 136.41290 | -3.4129044 | -229.22554 | -465.06344 | 11.656000 |
| 12 | 145 | 120 | -37.423077 | -23.846154 | 892.8702366 | 1400.512 | 123.68730 | -3.6872956 | 136.00867 | -455.78292 | 13.595225 |
| 13 | 163 | 133 | -19.423077 | -10.846154 | 210.6271298 | 377.287802 | 134.23290 | -1.2329044 | -41.29677 | -165.48278 | 1.5200542 |
| 14 | 176 | 145 | -6.423077 | 1.1538462 | -7.4178755 | 41.273302 | 142.18038 | 2.8196173 | -113.99222 | 400.86738 | 7.9482139 |
| 15 | 189 | 152 | 6.5769231 | 8.1538462 | 53.6271298 | 43.232225 | 147.66472 | 4.335278 | 185.10815 | 640.16428 | 18.794580 |
| 16 | 162 | 132 | -20.423077 | -11.846154 | 241.6271298 | 417.120532 | 133.79597 | -1.795971 | -366.51393 | -241.64635 | 3.2275157 |
| 17 | 183 | 146 | 0.5769231 | 2.1538462 | 1.2426036 | 0.332826 | 145.14601 | 0.8539885 | 105.67924 | 124.79406 | 0.7293291 |
| 18 | 174 | 138 | -8.423077 | -5.8461538 | 49.2750098 | 70.937302 | 141.26874 | -3.2687435 | -146.96583 | -462.30254 | 10.688672 |
| 19 | 195 | 152 | 12.576923 | 8.1538462 | 102.6271298 | 158.197909 | 150.38309 | 1.6169087 | 20.32913 | 243.87468 | 2.6134231 |
| 20 | 159 | 132 | -23.423077 | -11.846154 | 277.6271298 | 548.599225 | 131.12490 | 0.8750964 | -204.99481 | 114.79152 | 0.7657862 |
| 21 | 188 | 145 | 5.5769231 | 1.1538462 | 6.4346034 | 31.106094 | 147.14410 | -2.1440978 | 12.52059 | -314.95916 | 4.5951499 |
| 22 | 203 | 156 | 20.576923 | 12.153846 | 250.6271298 | 423.452694 | 154.60109 | 1.3989127 | 28.80577 | 216.37984 | 1.9579613 |
| 23 | 191 | 144 | 8.5769231 | 0.15384615 | 1.3200581 | 73.567302 | 148.82322 | -4.8232183 | -412.98627 | -717.97463 | 23.270444 |
| 24 | 200 | 152 | 17.576923 | 8.1538462 | 143.6271298 | 308.948225 | 152.91817 | -0.9181747 | -16.14308 | -84.77551 | 0.8430316 |
| 25 | 192 | 156 | 9.5769231 | 12.153846 | 116.3964477 | 91.717545 | 148.82322 | 7.1761779 | 137.18261 | 1067.98681 | 51.497805 |
| 26 | 187 | 144 | 4.5769231 | 0.15384615 | 0.70412422 | 20.948224 | 146.22504 | -2.2250396 | -416.08241 | -325.36561 | 4.9508743 |
| Total | 7958.692308 | 15312.3462 | 272.80218 |
x̄: 182.4231
ȳ: 143.8462
β₁ estimado: 0.5198
β₀ estimado: 49.0306
MSE o S²(eᵢ): 11.3668
S(eᵢ): 3.3715
Ecuación estimada: \[ \hat{y} = 0.5198x + 49.031 \]
Use R - RStudio para realizar la estimación de los coeficientes de
regresión del modelo.
Es necesario mostrar el código usado y los resultados obtenidos.
peso <- c(165, 167, 180, 155, 212, 175, 190, 210, 200, 149, 158, 169,
170, 172, 159, 168, 174, 183, 215, 195, 180, 143, 240, 235,
192, 187)
presion <- c(130, 133, 144, 128, 159, 138, 150, 160, 156, 125, 133, 135,
141, 138, 128, 132, 143, 145, 162, 156, 145, 124, 170, 165,
156, 144)##
## Call:
## lm(formula = presion ~ peso)
##
## Residuals:
## Min 1Q Median 3Q Max
## -6.1734 -2.1658 0.2126 2.1237 7.1762
##
## Coefficients:
## Estimate Std. Error t value Pr(>|t|)
## (Intercept) 49.03056 5.01402 9.779 7.60e-10 ***
## peso 0.51976 0.02725 19.077 5.22e-16 ***
## ---
## Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
##
## Residual standard error: 3.371 on 24 degrees of freedom
## Multiple R-squared: 0.9381, Adjusted R-squared: 0.9356
## F-statistic: 363.9 on 1 and 24 DF, p-value: 5.221e-16