sum计算统计量(detail查看百分位数和阶段最值等)

  • Skewness:偏度(偏态系数),小于0表示左偏,即数据位于均值左边的比较少,大于0相反。绝对值越大,偏离程度越大。
  • Kurtosis:峰度(峰态系数),反映分布形态的陡峭程度,峰度越大,数据分布峰部形状越尖。

gen生成新变量

  • 必须赋值!!

replace更改变量值

list

preserve—restore

  • preserve后可修改数据
  • restore后恢复原数据
  • 相当于备份?
. sysuse auto, clear
(1978 automobile data). sum price, detailPrice
-------------------------------------------------------------Percentiles      Smallest1%         3291           32915%         3748           3299
10%         3895           3667       Obs                  74
25%         4195           3748       Sum of wgt.          7450%       5006.5                      Mean           6165.257Largest       Std. dev.      2949.496
75%         6342          13466
90%        11385          13594       Variance        8699526
95%        13466          14500       Skewness       1.653434
99%        15906          15906       Kurtosis       4.819188. sum priceVariable |        Obs        Mean    Std. dev.       Min        Max
-------------+---------------------------------------------------------price |         74    6165.257    2949.496       3291      15906. sysuse auto, clear
(1978 automobile data). by foreign: sum price weight-------------------------------------------------------------------------------
-> foreign = DomesticVariable |        Obs        Mean    Std. dev.       Min        Max
-------------+---------------------------------------------------------price |         52    6072.423    3097.104       3291      15906weight |         52    3317.115    695.3637       1800       4840-------------------------------------------------------------------------------
-> foreign = ForeignVariable |        Obs        Mean    Std. dev.       Min        Max
-------------+---------------------------------------------------------price |         22    6384.682    2621.915       3748      12990weight |         22    2315.909    433.0035       1760       3420. by foreign: sum price weight length if price > 5000, detail-------------------------------------------------------------------------------
-> foreign = DomesticPrice
-------------------------------------------------------------Percentiles      Smallest1%         5104           51045%         5172           5172
10%         5189           5189       Obs                  23
25%         5705           5222       Sum of wgt.          2350%         6342                      Mean           8359.609Largest       Std. dev.      3491.661
75%        11385          13466
90%        13594          13594       Variance       1.22e+07
95%        14500          14500       Skewness       .8240605
99%        15906          15906       Kurtosis       2.252418Weight (lbs.)
-------------------------------------------------------------Percentiles      Smallest1%         2520           25205%         3210           3210
10%         3220           3220       Obs                  23
25%         3600           3280       Sum of wgt.          2350%         3830                      Mean           3817.826Largest       Std. dev.      511.5392
75%         4080           4290
90%         4330           4330       Variance       261672.3
95%         4720           4720       Skewness      -.2778813
99%         4840           4840       Kurtosis       3.574592Length (in.)
-------------------------------------------------------------Percentiles      Smallest1%          182            1825%          198            198
10%          200            200       Obs                  23
25%          201            200       Sum of wgt.          2350%          212                      Mean           210.8261Largest       Std. dev.      11.75373
75%          220            221
90%          222            222       Variance       138.1502
95%          230            230       Skewness      -.2226277
99%          233            233       Kurtosis       2.991821-------------------------------------------------------------------------------
-> foreign = ForeignPrice
-------------------------------------------------------------Percentiles      Smallest1%         5079           50795%         5079           5397
10%         5397           5719       Obs                  14
25%         5799           5799       Sum of wgt.          1450%       6572.5                      Mean               7639Largest       Std. dev.      2523.636
75%         9690           9690
90%        11995           9735       Variance        6368737
95%        12990          11995       Skewness       1.000074
99%        12990          12990       Kurtosis       2.710336Weight (lbs.)
-------------------------------------------------------------Percentiles      Smallest1%         1990           19905%         1990           2040
10%         2040           2070       Obs                  14
25%         2160           2160       Sum of wgt.          1450%         2390                      Mean           2503.571Largest       Std. dev.      432.4458
75%         2750           2750
90%         3170           2830       Variance       187009.3
95%         3420           3170       Skewness       .7238332
99%         3420           3420       Kurtosis       2.585679Length (in.)
-------------------------------------------------------------Percentiles      Smallest1%          155            1555%          155            156
10%          156            170       Obs                  14
25%          170            170       Sum of wgt.          1450%          174                      Mean           175.2143Largest       Std. dev.      11.51707
75%          184            184
90%          192            189       Variance       132.6429
95%          193            192       Skewness       -.106999
99%          193            193       Kurtosis       2.478998. sum foreignVariable |        Obs        Mean    Std. dev.       Min        Max
-------------+---------------------------------------------------------foreign |         74    .2972973    .4601885          0          1. sum foreign, detailCar origin
-------------------------------------------------------------Percentiles      Smallest1%            0              05%            0              0
10%            0              0       Obs                  74
25%            0              0       Sum of wgt.          7450%            0                      Mean           .2972973Largest       Std. dev.      .4601885
75%            1              1
90%            1              1       Variance       .2117734
95%            1              1       Skewness       .8869686
99%            1              1       Kurtosis       1.786713. generate price2 = price + 15. list price price2+-----------------+|  price   price2 ||-----------------|1. |  4,099     4114 |2. |  4,749     4764 |3. |  3,799     3814 |4. |  4,816     4831 |5. |  7,827     7842 ||-----------------|6. |  5,788     5803 |7. |  4,453     4468 |8. |  5,189     5204 |9. | 10,372    10387 |10. |  4,082     4097 ||-----------------|11. | 11,385    11400 |12. | 14,500    14515 |13. | 15,906    15921 |14. |  3,299     3314 |15. |  5,705     5720 ||-----------------|16. |  4,504     4519 |17. |  5,104     5119 |18. |  3,667     3682 |19. |  3,955     3970 |20. |  3,984     3999 ||-----------------|21. |  4,010     4025 |22. |  5,886     5901 |23. |  6,342     6357 |24. |  4,389     4404 |25. |  4,187     4202 ||-----------------|26. | 11,497    11512 |27. | 13,594    13609 |28. | 13,466    13481 |29. |  3,829     3844 |30. |  5,379     5394 ||-----------------|31. |  6,165     6180 |32. |  4,516     4531 |33. |  6,303     6318 |34. |  3,291     3306 |35. |  8,814     8829 ||-----------------|36. |  5,172     5187 |37. |  4,733     4748 |38. |  4,890     4905 |39. |  4,181     4196 |40. |  4,195     4210 ||-----------------|41. | 10,371    10386 |42. |  4,647     4662 |43. |  4,425     4440 |44. |  4,482     4497 |45. |  6,486     6501 ||-----------------|46. |  4,060     4075 |47. |  5,798     5813 |48. |  4,934     4949 |49. |  5,222     5237 |50. |  4,723     4738 ||-----------------|51. |  4,424     4439 |52. |  4,172     4187 |53. |  9,690     9705 |54. |  6,295     6310 |55. |  9,735     9750 ||-----------------|56. |  6,229     6244 |57. |  4,589     4604 |58. |  5,079     5094 |59. |  8,129     8144 |60. |  4,296     4311 ||-----------------|61. |  5,799     5814 |62. |  4,499     4514 |63. |  3,995     4010 |64. | 12,990    13005 |65. |  3,895     3910 ||-----------------|66. |  3,798     3813 |67. |  5,899     5914 |68. |  3,748     3763 |69. |  5,719     5734 |70. |  7,140     7155 ||-----------------|71. |  5,397     5412 |72. |  4,697     4712 |73. |  6,850     6865 |74. | 11,995    12010 |+-----------------+. replace price2 = price2 - 15
(74 real changes made). list price price2+-----------------+|  price   price2 ||-----------------|1. |  4,099     4099 |2. |  4,749     4749 |3. |  3,799     3799 |4. |  4,816     4816 |5. |  7,827     7827 ||-----------------|6. |  5,788     5788 |7. |  4,453     4453 |8. |  5,189     5189 |9. | 10,372    10372 |10. |  4,082     4082 ||-----------------|11. | 11,385    11385 |12. | 14,500    14500 |13. | 15,906    15906 |14. |  3,299     3299 |15. |  5,705     5705 ||-----------------|16. |  4,504     4504 |17. |  5,104     5104 |18. |  3,667     3667 |19. |  3,955     3955 |20. |  3,984     3984 ||-----------------|21. |  4,010     4010 |22. |  5,886     5886 |23. |  6,342     6342 |24. |  4,389     4389 |25. |  4,187     4187 ||-----------------|26. | 11,497    11497 |27. | 13,594    13594 |28. | 13,466    13466 |29. |  3,829     3829 |30. |  5,379     5379 ||-----------------|31. |  6,165     6165 |32. |  4,516     4516 |33. |  6,303     6303 |34. |  3,291     3291 |35. |  8,814     8814 ||-----------------|36. |  5,172     5172 |37. |  4,733     4733 |38. |  4,890     4890 |39. |  4,181     4181 |40. |  4,195     4195 ||-----------------|41. | 10,371    10371 |42. |  4,647     4647 |43. |  4,425     4425 |44. |  4,482     4482 |45. |  6,486     6486 ||-----------------|46. |  4,060     4060 |47. |  5,798     5798 |48. |  4,934     4934 |49. |  5,222     5222 |50. |  4,723     4723 ||-----------------|51. |  4,424     4424 |52. |  4,172     4172 |53. |  9,690     9690 |54. |  6,295     6295 |55. |  9,735     9735 ||-----------------|56. |  6,229     6229 |57. |  4,589     4589 |58. |  5,079     5079 |59. |  8,129     8129 |60. |  4,296     4296 ||-----------------|61. |  5,799     5799 |62. |  4,499     4499 |63. |  3,995     3995 |64. | 12,990    12990 |65. |  3,895     3895 ||-----------------|66. |  3,798     3798 |67. |  5,899     5899 |68. |  3,748     3748 |69. |  5,719     5719 |70. |  7,140     7140 ||-----------------|71. |  5,397     5397 |72. |  4,697     4697 |73. |  6,850     6850 |74. | 11,995    11995 |+-----------------+. gen v1 = price^2. list price v1+-------------------+|  price         v1 ||-------------------|1. |  4,099   1.68e+07 |2. |  4,749   2.26e+07 |3. |  3,799   1.44e+07 |4. |  4,816   2.32e+07 |5. |  7,827   6.13e+07 ||-------------------|6. |  5,788   3.35e+07 |7. |  4,453   1.98e+07 |8. |  5,189   2.69e+07 |9. | 10,372   1.08e+08 |10. |  4,082   1.67e+07 ||-------------------|11. | 11,385   1.30e+08 |12. | 14,500   2.10e+08 |13. | 15,906   2.53e+08 |14. |  3,299   1.09e+07 |15. |  5,705   3.25e+07 ||-------------------|16. |  4,504   2.03e+07 |17. |  5,104   2.61e+07 |18. |  3,667   1.34e+07 |19. |  3,955   1.56e+07 |20. |  3,984   1.59e+07 ||-------------------|21. |  4,010   1.61e+07 |22. |  5,886   3.46e+07 |23. |  6,342   4.02e+07 |24. |  4,389   1.93e+07 |25. |  4,187   1.75e+07 ||-------------------|26. | 11,497   1.32e+08 |27. | 13,594   1.85e+08 |28. | 13,466   1.81e+08 |29. |  3,829   1.47e+07 |30. |  5,379   2.89e+07 ||-------------------|31. |  6,165   3.80e+07 |32. |  4,516   2.04e+07 |33. |  6,303   3.97e+07 |34. |  3,291   1.08e+07 |35. |  8,814   7.77e+07 ||-------------------|36. |  5,172   2.67e+07 |37. |  4,733   2.24e+07 |38. |  4,890   2.39e+07 |39. |  4,181   1.75e+07 |40. |  4,195   1.76e+07 ||-------------------|41. | 10,371   1.08e+08 |42. |  4,647   2.16e+07 |43. |  4,425   1.96e+07 |44. |  4,482   2.01e+07 |45. |  6,486   4.21e+07 ||-------------------|46. |  4,060   1.65e+07 |47. |  5,798   3.36e+07 |48. |  4,934   2.43e+07 |49. |  5,222   2.73e+07 |50. |  4,723   2.23e+07 ||-------------------|51. |  4,424   1.96e+07 |52. |  4,172   1.74e+07 |53. |  9,690   9.39e+07 |54. |  6,295   3.96e+07 |55. |  9,735   9.48e+07 ||-------------------|56. |  6,229   3.88e+07 |57. |  4,589   2.11e+07 |58. |  5,079   2.58e+07 |59. |  8,129   6.61e+07 |60. |  4,296   1.85e+07 ||-------------------|61. |  5,799   3.36e+07 |62. |  4,499   2.02e+07 |63. |  3,995   1.60e+07 |64. | 12,990   1.69e+08 |65. |  3,895   1.52e+07 ||-------------------|66. |  3,798   1.44e+07 |67. |  5,899   3.48e+07 |68. |  3,748   1.40e+07 |69. |  5,719   3.27e+07 |70. |  7,140   5.10e+07 ||-------------------|71. |  5,397   2.91e+07 |72. |  4,697   2.21e+07 |73. |  6,850   4.69e+07 |74. | 11,995   1.44e+08 |+-------------------+. gen v2 = price^3. gen v3 = price^0.5. list v1-v3+--------------------------------+|       v1         v2         v3 ||--------------------------------|1. | 1.68e+07   6.89e+10   64.02343 |2. | 2.26e+07   1.07e+11   68.91299 |3. | 1.44e+07   5.48e+10   61.63603 |4. | 2.32e+07   1.12e+11   69.39741 |5. | 6.13e+07   4.79e+11   88.47034 ||--------------------------------|6. | 3.35e+07   1.94e+11    76.0789 |7. | 1.98e+07   8.83e+10    66.7308 |8. | 2.69e+07   1.40e+11   72.03471 |9. | 1.08e+08   1.12e+12    101.843 |10. | 1.67e+07   6.80e+10   63.89053 ||--------------------------------|11. | 1.30e+08   1.48e+12   106.7005 |12. | 2.10e+08   3.05e+12   120.4159 |13. | 2.53e+08   4.02e+12    126.119 |14. | 1.09e+07   3.59e+10   57.43692 |15. | 3.25e+07   1.86e+11   75.53145 ||--------------------------------|16. | 2.03e+07   9.14e+10   67.11185 |17. | 2.61e+07   1.33e+11   71.44228 |18. | 1.34e+07   4.93e+10   60.55576 |19. | 1.56e+07   6.19e+10   62.88879 |20. | 1.59e+07   6.32e+10   63.11893 ||--------------------------------|21. | 1.61e+07   6.45e+10   63.32456 |22. | 3.46e+07   2.04e+11   76.72027 |23. | 4.02e+07   2.55e+11   79.63667 |24. | 1.93e+07   8.45e+10   66.24953 |25. | 1.75e+07   7.34e+10   64.70703 ||--------------------------------|26. | 1.32e+08   1.52e+12   107.2241 |27. | 1.85e+08   2.51e+12   116.5933 |28. | 1.81e+08   2.44e+12   116.0431 |29. | 1.47e+07   5.61e+10   61.87891 |30. | 2.89e+07   1.56e+11   73.34167 ||--------------------------------|31. | 3.80e+07   2.34e+11   78.51752 |32. | 2.04e+07   9.21e+10   67.20119 |33. | 3.97e+07   2.50e+11   79.39143 |34. | 1.08e+07   3.56e+10   57.36724 |35. | 7.77e+07   6.85e+11    93.8829 ||--------------------------------|36. | 2.67e+07   1.38e+11   71.91662 |37. | 2.24e+07   1.06e+11    68.7968 |38. | 2.39e+07   1.17e+11   69.92854 |39. | 1.75e+07   7.31e+10   64.66065 |40. | 1.76e+07   7.38e+10   64.76882 ||--------------------------------|41. | 1.08e+08   1.12e+12   101.8381 |42. | 2.16e+07   1.00e+11   68.16891 |43. | 1.96e+07   8.66e+10   66.52068 |44. | 2.01e+07   9.00e+10   66.94774 |45. | 4.21e+07   2.73e+11   80.53571 ||--------------------------------|46. | 1.65e+07   6.69e+10   63.71813 |47. | 3.36e+07   1.95e+11    76.1446 |48. | 2.43e+07   1.20e+11   70.24244 |49. | 2.73e+07   1.42e+11    72.2634 |50. | 2.23e+07   1.05e+11   68.72408 ||--------------------------------|51. | 1.96e+07   8.66e+10   66.51315 |52. | 1.74e+07   7.26e+10   64.59102 |53. | 9.39e+07   9.10e+11    98.4378 |54. | 3.96e+07   2.49e+11   79.34103 |55. | 9.48e+07   9.23e+11   98.66611 ||--------------------------------|56. | 3.88e+07   2.42e+11   78.92401 |57. | 2.11e+07   9.66e+10   67.74216 |58. | 2.58e+07   1.31e+11   71.26711 |59. | 6.61e+07   5.37e+11   90.16096 |60. | 1.85e+07   7.93e+10   65.54388 ||--------------------------------|61. | 3.36e+07   1.95e+11   76.15117 |62. | 2.02e+07   9.11e+10   67.07458 |63. | 1.60e+07   6.38e+10   63.20601 |64. | 1.69e+08   2.19e+12   113.9737 |65. | 1.52e+07   5.91e+10   62.40993 ||--------------------------------|66. | 1.44e+07   5.48e+10   61.62791 |67. | 3.48e+07   2.05e+11   76.80495 |68. | 1.40e+07   5.27e+10   61.22091 |69. | 3.27e+07   1.87e+11   75.62407 |70. | 5.10e+07   3.64e+11   84.49852 ||--------------------------------|71. | 2.91e+07   1.57e+11   73.46428 |72. | 2.21e+07   1.04e+11   68.53466 |73. | 4.69e+07   3.21e+11   82.76472 |74. | 1.44e+08   1.73e+12   109.5217 |+--------------------------------+. sum v1-v3Variable |        Obs        Mean    Std. dev.       Min        Max
-------------+---------------------------------------------------------v1 |         74    4.66e+07    5.14e+07   1.08e+07   2.53e+08v2 |         74    4.35e+11    7.63e+11   3.56e+10   4.02e+12v3 |         74    76.75214    16.67704   57.36724    126.119. sum v1-v3, detailv1
-------------------------------------------------------------Percentiles      Smallest1%     1.08e+07       1.08e+075%     1.40e+07       1.09e+07
10%     1.52e+07       1.34e+07       Obs                  74
25%     1.76e+07       1.40e+07       Sum of wgt.          7450%     2.51e+07                      Mean           4.66e+07Largest       Std. dev.      5.14e+07
75%     4.02e+07       1.81e+08
90%     1.30e+08       1.85e+08       Variance       2.65e+15
95%     1.81e+08       2.10e+08       Skewness       2.224265
99%     2.53e+08       2.53e+08       Kurtosis       7.346822v2
-------------------------------------------------------------Percentiles      Smallest1%     3.56e+10       3.56e+105%     5.27e+10       3.59e+10
10%     5.91e+10       4.93e+10       Obs                  74
25%     7.38e+10       5.27e+10       Sum of wgt.          7450%     1.26e+11                      Mean           4.35e+11Largest       Std. dev.      7.63e+11
75%     2.55e+11       2.44e+12
90%     1.48e+12       2.51e+12       Variance       5.82e+23
95%     2.44e+12       3.05e+12       Skewness       2.797291
99%     4.02e+12       4.02e+12       Kurtosis       10.81449v3
-------------------------------------------------------------Percentiles      Smallest1%     57.36724       57.367245%     61.22091       57.43692
10%     62.40993       60.55576       Obs                  74
25%     64.76882       61.22091       Sum of wgt.          7450%     70.75477                      Mean           76.75214Largest       Std. dev.      16.67704
75%     79.63667       116.0431
90%     106.7005       116.5933       Variance       278.1238
95%     116.0431       120.4159       Skewness       1.361583
99%      126.119        126.119       Kurtosis       3.885685. by foreign: list v1-v3-------------------------------------------------------------------------------
-> foreign = Domestic+--------------------------------+|       v1         v2         v3 ||--------------------------------|1. | 1.68e+07   6.89e+10   64.02343 |2. | 2.26e+07   1.07e+11   68.91299 |3. | 1.44e+07   5.48e+10   61.63603 |4. | 2.32e+07   1.12e+11   69.39741 |5. | 6.13e+07   4.79e+11   88.47034 ||--------------------------------|6. | 3.35e+07   1.94e+11    76.0789 |7. | 1.98e+07   8.83e+10    66.7308 |8. | 2.69e+07   1.40e+11   72.03471 |9. | 1.08e+08   1.12e+12    101.843 |10. | 1.67e+07   6.80e+10   63.89053 ||--------------------------------|11. | 1.30e+08   1.48e+12   106.7005 |12. | 2.10e+08   3.05e+12   120.4159 |13. | 2.53e+08   4.02e+12    126.119 |14. | 1.09e+07   3.59e+10   57.43692 |15. | 3.25e+07   1.86e+11   75.53145 ||--------------------------------|16. | 2.03e+07   9.14e+10   67.11185 |17. | 2.61e+07   1.33e+11   71.44228 |18. | 1.34e+07   4.93e+10   60.55576 |19. | 1.56e+07   6.19e+10   62.88879 |20. | 1.59e+07   6.32e+10   63.11893 ||--------------------------------|21. | 1.61e+07   6.45e+10   63.32456 |22. | 3.46e+07   2.04e+11   76.72027 |23. | 4.02e+07   2.55e+11   79.63667 |24. | 1.93e+07   8.45e+10   66.24953 |25. | 1.75e+07   7.34e+10   64.70703 ||--------------------------------|26. | 1.32e+08   1.52e+12   107.2241 |27. | 1.85e+08   2.51e+12   116.5933 |28. | 1.81e+08   2.44e+12   116.0431 |29. | 1.47e+07   5.61e+10   61.87891 |30. | 2.89e+07   1.56e+11   73.34167 ||--------------------------------|31. | 3.80e+07   2.34e+11   78.51752 |32. | 2.04e+07   9.21e+10   67.20119 |33. | 3.97e+07   2.50e+11   79.39143 |34. | 1.08e+07   3.56e+10   57.36724 |35. | 7.77e+07   6.85e+11    93.8829 ||--------------------------------|36. | 2.67e+07   1.38e+11   71.91662 |37. | 2.24e+07   1.06e+11    68.7968 |38. | 2.39e+07   1.17e+11   69.92854 |39. | 1.75e+07   7.31e+10   64.66065 |40. | 1.76e+07   7.38e+10   64.76882 ||--------------------------------|41. | 1.08e+08   1.12e+12   101.8381 |42. | 2.16e+07   1.00e+11   68.16891 |43. | 1.96e+07   8.66e+10   66.52068 |44. | 2.01e+07   9.00e+10   66.94774 |45. | 4.21e+07   2.73e+11   80.53571 ||--------------------------------|46. | 1.65e+07   6.69e+10   63.71813 |47. | 3.36e+07   1.95e+11    76.1446 |48. | 2.43e+07   1.20e+11   70.24244 |49. | 2.73e+07   1.42e+11    72.2634 |50. | 2.23e+07   1.05e+11   68.72408 ||--------------------------------|51. | 1.96e+07   8.66e+10   66.51315 |52. | 1.74e+07   7.26e+10   64.59102 |+--------------------------------+-------------------------------------------------------------------------------
-> foreign = Foreign+--------------------------------+|       v1         v2         v3 ||--------------------------------|1. | 9.39e+07   9.10e+11    98.4378 |2. | 3.96e+07   2.49e+11   79.34103 |3. | 9.48e+07   9.23e+11   98.66611 |4. | 3.88e+07   2.42e+11   78.92401 |5. | 2.11e+07   9.66e+10   67.74216 ||--------------------------------|6. | 2.58e+07   1.31e+11   71.26711 |7. | 6.61e+07   5.37e+11   90.16096 |8. | 1.85e+07   7.93e+10   65.54388 |9. | 3.36e+07   1.95e+11   76.15117 |10. | 2.02e+07   9.11e+10   67.07458 ||--------------------------------|11. | 1.60e+07   6.38e+10   63.20601 |12. | 1.69e+08   2.19e+12   113.9737 |13. | 1.52e+07   5.91e+10   62.40993 |14. | 1.44e+07   5.48e+10   61.62791 |15. | 3.48e+07   2.05e+11   76.80495 ||--------------------------------|16. | 1.40e+07   5.27e+10   61.22091 |17. | 3.27e+07   1.87e+11   75.62407 |18. | 5.10e+07   3.64e+11   84.49852 |19. | 2.91e+07   1.57e+11   73.46428 |20. | 2.21e+07   1.04e+11   68.53466 ||--------------------------------|21. | 4.69e+07   3.21e+11   82.76472 |22. | 1.44e+08   1.73e+12   109.5217 |+--------------------------------+. sysuse auto, clear
(1978 automobile data). edit. edit price weight. preserve. gen price2 = price + 15. gen weight1 = weight / 5. save auto1.dta
file auto1.dta saved. restore. sysuse auto, clear
(1978 automobile data). list price2
variable price2 not found
r(111);. clear. input
nothing to input
r(104);. input x yx          y1. 1 22. 3 43. 4 54. end. save mydata, replace
(file mydata.dta not found)
file mydata.dta saved. sysuse mydata.dta, clear. input str10 name agename        age1. Mike 222. Bruce 213. end

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