/usr/share/gretl/data/data7-24.gdt is in gretl-data 1.9.14-2.
This file is owned by root:root, with mode 0o644.
The actual contents of the file can be viewed below.
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60 61 62 63 64 65 66 67 68 69 70 71 72 73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118 119 120 121 122 123 124 125 126 127 128 129 130 131 132 133 134 135 136 137 138 139 140 141 142 143 144 145 146 147 148 149 150 151 152 153 154 155 156 157 158 159 160 161 162 163 164 165 166 167 168 169 170 171 172 173 174 175 176 177 178 179 180 181 182 183 184 185 186 187 188 189 190 191 192 193 194 195 196 197 198 199 200 201 202 203 204 205 206 207 208 209 210 211 212 213 214 215 216 217 218 219 220 221 222 223 224 225 226 227 228 229 230 231 232 233 234 235 236 237 238 239 240 241 242 243 244 245 246 247 248 249 250 251 252 253 254 255 256 257 258 259 260 261 262 263 264 | <?xml version="1.0"?>
<!DOCTYPE gretldata SYSTEM "gretldata.dtd">
<gretldata name="data7-24" frequency="1" startobs="1" endobs="224" type="cross-section">
<description>
DATA7-24
Data on the sale price and characteristics of homes in the Dove Canyon
and Coto de Caza areas of Orange County, California, compiled by Jody
Schimmel. Dove Canyon is a neighborhod built around a golf course
with single family tract homes with relatively small lots. Coto de
Caza is a more upscale area. It is more rural with large custom
homes, some with horse corrals.
salepric = sale price in thousands of dollars
sqft = living area in square feet
bedrms = number of bed rooms
baths = number of baths
garage = number of car spaces
age = age of house in years
city = 1 for Coto de Caza and 0 for Dove Canyon
</description>
<variables count="7">
<variable name="salepric"
label="sale price in thousands of dollars"/>
<variable name="sqft"
label="living area in square feet"/>
<variable name="bedrms"
label="number of bedrooms"/>
<variable name="baths"
label="number of baths"/>
<variable name="garage"
label="number of car spaces"/>
<variable name="age"
label="age of house in years"/>
<variable name="city"
label="1 for Coto de Caza and 0 for Dove Canyon"/>
</variables>
<observations count="224" labels="false">
<obs>350.000 2583 4 4.00 3 5 0 </obs>
<obs>360.000 3308 4 3.00 3 3 0 </obs>
<obs>365.000 2926 5 3.00 3 2 0 </obs>
<obs>372.000 3050 4 4.00 3 8 0 </obs>
<obs>373.000 3528 4 3.50 3 3 0 </obs>
<obs>373.000 2830 4 2.75 3 4 0 </obs>
<obs>375.000 3521 4 4.50 3 7 0 </obs>
<obs>349.000 3003 5 3.50 3 4 0 </obs>
<obs>380.000 3230 4 3.50 3 8 0 </obs>
<obs>380.000 3230 4 3.50 3 7 0 </obs>
<obs>380.000 3230 4 3.50 3 7 0 </obs>
<obs>380.000 2900 4 3.00 3 7 0 </obs>
<obs>380.000 3080 5 4.00 3 3 0 </obs>
<obs>370.000 3080 4 4.00 3 3 0 </obs>
<obs>380.000 3525 5 3.50 3 4 0 </obs>
<obs>385.000 3050 4 4.00 3 7 0 </obs>
<obs>385.000 3050 4 4.00 3 8 0 </obs>
<obs>389.000 3528 4 3.50 3 4 0 </obs>
<obs>390.000 2680 4 3.00 3 3 0 </obs>
<obs>390.000 3500 4 3.50 3 8 0 </obs>
<obs>390.000 3521 4 4.50 3 7 0 </obs>
<obs>390.000 2700 4 3.00 3 2 0 </obs>
<obs>392.000 2662 4 3.00 3 4 0 </obs>
<obs>392.000 3371 5 4.50 3 3 0 </obs>
<obs>392.000 3371 5 4.50 3 4 0 </obs>
<obs>393.000 3371 4 4.50 3 3 0 </obs>
<obs>395.000 2900 5 3.00 3 4 0 </obs>
<obs>395.000 3275 4 3.50 3 8 0 </obs>
<obs>399.000 3080 5 4.00 3 2 0 </obs>
<obs>400.000 3155 4 4.50 3 3 0 </obs>
<obs>400.000 3155 4 4.50 3 3 0 </obs>
<obs>400.000 3308 4 3.50 3 7 0 </obs>
<obs>399.900 3371 4 4.50 3 2 0 </obs>
<obs>400.000 3050 4 4.00 3 7 0 </obs>
<obs>401.000 2789 4 3.50 3 4 0 </obs>
<obs>402.500 3275 4 3.50 3 7 0 </obs>
<obs>405.000 3180 4 4.00 3 8 0 </obs>
<obs>405.000 3512 4 3.50 3 8 0 </obs>
<obs>407.000 3275 4 3.50 3 6 0 </obs>
<obs>410.000 3512 4 3.50 3 8 0 </obs>
<obs>410.000 2789 4 3.50 3 4 0 </obs>
<obs>412.000 3371 4 4.50 3 3 0 </obs>
<obs>412.000 3275 4 4.50 3 6 0 </obs>
<obs>415.984 3155 4 3.50 3 3 0 </obs>
<obs>416.000 3757 5 4.50 3 2 0 </obs>
<obs>418.000 3275 4 3.00 3 7 0 </obs>
<obs>419.950 3879 5 3.50 3 2 0 </obs>
<obs>425.000 3275 4 4.50 3 5 0 </obs>
<obs>425.000 3515 4 3.50 3 2 0 </obs>
<obs>426.000 3700 4 4.50 3 5 0 </obs>
<obs>430.000 3110 4 3.50 3 9 0 </obs>
<obs>430.000 3770 4 2.75 3 9 0 </obs>
<obs>432.000 3512 4 3.50 3 7 0 </obs>
<obs>432.000 3371 5 4.50 3 2 0 </obs>
<obs>434.000 3367 4 4.50 3 8 0 </obs>
<obs>435.000 3700 4 3.50 3 5 0 </obs>
<obs>439.402 3515 4 3.50 3 2 0 </obs>
<obs>440.000 3770 4 4.50 3 7 0 </obs>
<obs>440.000 3413 5 3.50 3 2 0 </obs>
<obs>565.000 3500 5 3.50 3 3 0 </obs>
<obs>605.000 3757 5 4.50 3 2 0 </obs>
<obs>609.900 3757 4 3.00 3 7 0 </obs>
<obs>620.000 3879 5 4.50 3 3 0 </obs>
<obs>653.000 4035 6 4.50 3 2 0 </obs>
<obs>670.000 4035 5 4.50 3 2 0 </obs>
<obs>440.000 3525 5 3.50 3 4 0 </obs>
<obs>445.000 3308 4 3.50 3 6 0 </obs>
<obs>459.900 3528 4 3.50 3 4 0 </obs>
<obs>449.960 3515 4 4.50 3 2 0 </obs>
<obs>450.000 3371 4 4.50 3 4 0 </obs>
<obs>450.000 3528 4 3.50 3 4 0 </obs>
<obs>459.500 3757 5 3.00 3 2 0 </obs>
<obs>460.000 2600 2 2.50 2 3 0 </obs>
<obs>549.950 2879 5 4.50 3 3 0 </obs>
<obs>460.000 4000 4 4.00 3 5 0 </obs>
<obs>462.000 3757 5 3.00 3 2 0 </obs>
<obs>449.900 3500 5 4.50 4 3 0 </obs>
<obs>464.820 3515 4 4.50 3 2 0 </obs>
<obs>464.900 3308 4 3.50 3 6 0 </obs>
<obs>465.000 3100 4 4.00 3 8 0 </obs>
<obs>457.325 3879 5 4.50 3 2 0 </obs>
<obs>449.950 3515 4 4.50 3 3 0 </obs>
<obs>475.000 3929 4 3.50 3 5 0 </obs>
<obs>475.000 4000 4 4.00 3 6 0 </obs>
<obs>419.950 3879 5 4.50 3 2 0 </obs>
<obs>479.950 4136 5 4.50 3 2 0 </obs>
<obs>480.000 3512 4 4.50 3 9 0 </obs>
<obs>482.750 3879 5 4.50 3 2 0 </obs>
<obs>489.950 3879 5 4.50 3 2 0 </obs>
<obs>490.000 4035 6 4.50 3 2 0 </obs>
<obs>495.000 3500 5 4.50 4 4 0 </obs>
<obs>497.500 3770 4 3.50 3 8 0 </obs>
<obs>499.900 4035 6 4.50 3 2 0 </obs>
<obs>500.000 3800 4 3.50 3 8 0 </obs>
<obs>510.000 4035 6 4.50 3 2 0 </obs>
<obs>510.000 3500 4 4.50 4 4 0 </obs>
<obs>514.900 4018 4 3.50 3 8 0 </obs>
<obs>514.900 3308 4 3.50 3 8 0 </obs>
<obs>527.500 3757 5 3.00 3 2 0 </obs>
<obs>535.000 4035 6 4.50 3 2 0 </obs>
<obs>535.000 3879 5 4.50 3 3 0 </obs>
<obs>539.000 3854 4 4.50 3 3 0 </obs>
<obs>539.000 3500 5 4.50 3 4 0 </obs>
<obs>547.000 4035 6 4.50 3 2 0 </obs>
<obs>552.000 4136 5 4.50 3 3 0 </obs>
<obs>556.700 3700 5 4.50 4 3 0 </obs>
<obs>480.000 2865 4 2.50 3 11 1 </obs>
<obs>485.000 3384 5 4.00 3 5 1 </obs>
<obs>485.000 3568 5 4.50 3 8 1 </obs>
<obs>487.000 3384 5 4.50 3 4 1 </obs>
<obs>490.000 3305 5 4.50 3 9 1 </obs>
<obs>492.000 3227 4 3.50 3 4 1 </obs>
<obs>495.000 3295 4 4.00 3 8 1 </obs>
<obs>504.000 3259 4 3.50 3 5 1 </obs>
<obs>505.000 3668 4 3.50 3 7 1 </obs>
<obs>517.000 3685 4 4.50 3 9 1 </obs>
<obs>520.000 3350 5 2.75 3 3 1 </obs>
<obs>525.000 2800 4 2.50 3 11 1 </obs>
<obs>526.000 3170 4 3.00 3 8 1 </obs>
<obs>529.000 3300 4 3.00 3 9 1 </obs>
<obs>530.000 3475 4 3.50 3 11 1 </obs>
<obs>530.000 3380 5 4.50 3 9 1 </obs>
<obs>531.050 3620 5 4.50 3 1 1 </obs>
<obs>532.500 3305 5 4.50 3 9 1 </obs>
<obs>535.000 3475 4 2.50 2 19 1 </obs>
<obs>535.000 3305 5 4.50 3 8 1 </obs>
<obs>535.000 3900 4 3.50 3 8 1 </obs>
<obs>540.000 4389 5 4.50 3 8 1 </obs>
<obs>540.000 3305 5 4.00 3 9 1 </obs>
<obs>545.000 3500 4 3.50 3 11 1 </obs>
<obs>547.500 3369 4 3.50 3 10 1 </obs>
<obs>571.000 3485 4 3.50 3 11 1 </obs>
<obs>550.000 3920 5 3.50 3 6 1 </obs>
<obs>555.000 3475 4 3.50 3 10 1 </obs>
<obs>555.000 3781 4 3.50 3 8 1 </obs>
<obs>560.000 2735 4 2.75 3 11 1 </obs>
<obs>560.000 3390 4 4.50 3 8 1 </obs>
<obs>560.000 3700 4 4.50 3 9 1 </obs>
<obs>562.000 3668 5 4.50 3 7 1 </obs>
<obs>565.000 4089 5 3.50 2 8 1 </obs>
<obs>565.000 4170 5 4.50 3 1 1 </obs>
<obs>570.000 2812 4 3.00 3 10 1 </obs>
<obs>570.000 4010 4 4.50 3 9 1 </obs>
<obs>570.000 3379 4 4.50 3 9 1 </obs>
<obs>575.000 3920 5 4.50 3 5 1 </obs>
<obs>575.000 3865 4 4.50 3 12 1 </obs>
<obs>575.000 4579 5 3.50 3 8 1 </obs>
<obs>580.000 3968 4 4.50 4 2 1 </obs>
<obs>580.000 3750 4 3.00 4 8 1 </obs>
<obs>583.000 4000 5 3.50 3 8 1 </obs>
<obs>585.000 3457 4 3.00 3 9 1 </obs>
<obs>589.000 3400 5 4.50 3 9 1 </obs>
<obs>590.000 3427 4 3.50 3 2 1 </obs>
<obs>591.000 4500 4 3.50 3 8 1 </obs>
<obs>597.500 3970 4 4.50 3 9 1 </obs>
<obs>600.000 4818 5 4.00 3 10 1 </obs>
<obs>600.000 4600 6 5.00 3 6 1 </obs>
<obs>600.000 3685 4 4.50 3 8 1 </obs>
<obs>600.000 3457 4 3.50 3 11 1 </obs>
<obs>610.000 3700 4 3.50 3 8 1 </obs>
<obs>620.000 4100 5 4.00 3 1 1 </obs>
<obs>625.000 4300 4 3.50 3 2 1 </obs>
<obs>625.000 3820 5 4.50 3 5 1 </obs>
<obs>627.500 4160 4 4.50 3 1 1 </obs>
<obs>629.900 3712 6 5.50 3 1 1 </obs>
<obs>640.000 4200 5 4.50 3 7 1 </obs>
<obs>645.000 4000 4 3.50 3 7 1 </obs>
<obs>651.000 4500 5 3.50 3 9 1 </obs>
<obs>657.000 3818 4 4.00 3 13 1 </obs>
<obs>663.000 3885 3 4.50 4 2 1 </obs>
<obs>675.000 3968 4 4.50 3 2 1 </obs>
<obs>690.000 4839 5 3.50 3 9 1 </obs>
<obs>695.000 3637 5 4.50 3 2 1 </obs>
<obs>700.000 4335 4 4.50 3 2 1 </obs>
<obs>700.000 4300 4 3.50 3 3 1 </obs>
<obs>710.000 4870 5 4.50 3 7 1 </obs>
<obs>712.950 4459 5 4.50 4 0 1 </obs>
<obs>720.000 3741 4 3.50 3 10 1 </obs>
<obs>730.000 4400 5 4.50 3 8 1 </obs>
<obs>730.000 4500 5 4.50 3 2 1 </obs>
<obs>740.000 4579 5 3.50 3 8 1 </obs>
<obs>749.000 3450 4 3.50 3 8 1 </obs>
<obs>750.000 4402 4 4.50 3 9 1 </obs>
<obs>750.000 4350 4 3.50 3 6 1 </obs>
<obs>760.000 4400 5 4.00 3 8 1 </obs>
<obs>765.000 4600 5 4.00 3 2 1 </obs>
<obs>774.950 4024 4 3.50 4 0 1 </obs>
<obs>780.000 3900 5 4.50 3 2 1 </obs>
<obs>795.000 3900 4 4.50 3 4 1 </obs>
<obs>814.000 4000 5 4.50 3 7 1 </obs>
<obs>842.000 4569 5 4.50 3 7 1 </obs>
<obs>880.000 4581 4 4.50 3 2 1 </obs>
<obs>885.000 5000 5 5.50 3 6 1 </obs>
<obs>920.000 5000 5 4.50 5 8 1 </obs>
<obs>925.000 4650 4 5.50 4 2 1 </obs>
<obs>925.000 4300 5 3.50 3 9 1 </obs>
<obs>925.000 4400 5 4.00 3 7 1 </obs>
<obs>944.000 4387 5 4.50 4 1 1 </obs>
<obs>981.000 4970 5 4.50 4 1 1 </obs>
<obs>985.000 5126 4 3.50 3 9 1 </obs>
<obs>994.000 5076 5 4.50 4 1 1 </obs>
<obs>2600.000 8685 6 5.00 5 16 1 </obs>
<obs>2900.000 11000 5 7.50 3 9 1 </obs>
<obs>1010.000 5517 5 5.50 4 1 1 </obs>
<obs>1100.000 5500 5 5.00 3 2 1 </obs>
<obs>1100.000 4900 4 4.50 3 2 1 </obs>
<obs>1112.000 5800 5 4.50 3 2 1 </obs>
<obs>1120.000 8300 6 5.50 3 7 1 </obs>
<obs>1135.000 5506 6 5.50 4 1 1 </obs>
<obs>1235.000 6000 6 5.50 5 5 1 </obs>
<obs>1350.000 5475 5 5.50 4 2 1 </obs>
<obs>1380.000 6649 7 5.50 3 5 1 </obs>
<obs>1395.000 5400 3 4.50 4 9 1 </obs>
<obs>1400.000 10000 6 8.00 4 3 1 </obs>
<obs>1400.000 5862 5 6.50 4 2 1 </obs>
<obs>1425.000 7000 6 4.50 3 9 1 </obs>
<obs>1475.000 6338 6 6.50 4 8 1 </obs>
<obs>1520.000 6593 6 7.50 5 2 1 </obs>
<obs>1600.000 7000 6 7.50 5 5 1 </obs>
<obs>1625.000 8300 6 6.50 4 8 1 </obs>
<obs>1750.000 7338 6 7.50 4 1 1 </obs>
<obs>1775.000 9500 6 5.50 4 8 1 </obs>
<obs>1800.000 7948 7 7.40 5 1 1 </obs>
<obs>2500.500 9000 7 7.50 7 11 1 </obs>
</observations>
</gretldata>
|