Announcement

Collapse
No announcement yet.
X
  • Filter
  • Time
  • Show
Clear All
new posts

  • Combine bar graphs by age group and a line graph over time

    Dear Statalist forum members,

    I need some advice on how to combine bar graphs by group and line graph over time. I want to plot the evolution of the overall rate over time using a line graph, but for some years like 2000, 2010, 2019, I want to plot bar graphs by groups. I draw the figure I want to produce and my dataset looks like this. Can somebody help? Thanks in advance!

    Click image for larger version

Name:	Screen Shot 2021-10-19 at 10.26.39.png
Views:	1
Size:	139.7 KB
ID:	1632418


    Code:
    input year    str10 category    str10 group    data
    2000    "Age"    "0-14"    11.5
    2000    "Age"    "15-19"    501.7
    2000    "Age"    "20-24"    592.2
    2000    "Age"    "25-29"    292.1
    2000    "Age"    "30-34"    156.1
    2000    "Age"    "35-39"    100.4
    2000    "Age"    "40-44"    60.6
    2000    "Age"    "45-54"    27.4
    2000    "Age"    "55-64"    9.5
    2000    "Age"    "65+"    2.6
    2000    "Age"    "Unknown"    
    2000    "Overall"    "Overall"    128.6
    2001    "Age"    "0-14"    11.3
    2001    "Age"    "15-19"    491.9
    2001    "Age"    "20-24"    582.6
    2001    "Age"    "25-29"    294.7
    2001    "Age"    "30-34"    156.2
    2001    "Age"    "35-39"    97.3
    2001    "Age"    "40-44"    59.2
    2001    "Age"    "45-54"    26.4
    2001    "Age"    "55-64"    8.9
    2001    "Age"    "65+"    2.4
    2001    "Age"    "Unknown"    
    2001    "Overall"    "Overall"    126.9
    2002    "Age"    "0-14"    10.3
    2002    "Age"    "15-19"    466.6
    2002    "Age"    "20-24"    549.5
    2002    "Age"    "25-29"    292.8
    2002    "Age"    "30-34"    153.9
    2002    "Age"    "35-39"    97.8
    2002    "Age"    "40-44"    59.9
    2002    "Age"    "45-54"    27.2
    2002    "Age"    "55-64"    8.5
    2002    "Age"    "65+"    2.2
    2002    "Age"    "Unknown"    
    2002    "Overall"    "Overall"    122.3
    2003    "Age"    "0-14"    9.1
    2003    "Age"    "15-19"    435
    2003    "Age"    "20-24"    513
    2003    "Age"    "25-29"    281.5
    2003    "Age"    "30-34"    147.7
    2003    "Age"    "35-39"    94.5
    2003    "Age"    "40-44"    59.6
    2003    "Age"    "45-54"    26.9
    2003    "Age"    "55-64"    8.3
    2003    "Age"    "65+"    2.1
    2003    "Age"    "Unknown"    
    2003    "Overall"    "Overall"    115.5
    2004    "Age"    "0-14"    8.1
    2004    "Age"    "15-19"    416.6
    2004    "Age"    "20-24"    488.8
    2004    "Age"    "25-29"    282.2
    2004    "Age"    "30-34"    149.3
    2004    "Age"    "35-39"    94.4
    2004    "Age"    "40-44"    60.9
    2004    "Age"    "45-54"    29
    2004    "Age"    "55-64"    9.1
    2004    "Age"    "65+"    2
    2004    "Age"    "Unknown"    
    2004    "Overall"    "Overall"    112.7
    2005    "Age"    "0-14"    7.8
    2005    "Age"    "15-19"    426.4
    2005    "Age"    "20-24"    500.2
    2005    "Age"    "25-29"    287.1
    2005    "Age"    "30-34"    150.9
    2005    "Age"    "35-39"    95.5
    2005    "Age"    "40-44"    63
    2005    "Age"    "45-54"    29.8
    2005    "Age"    "55-64"    9.1
    2005    "Age"    "65+"    2.1
    2005    "Age"    "Unknown"    
    2005    "Overall"    "Overall"    114.9
    2006    "Age"    "0-14"    7.7
    2006    "Age"    "15-19"    447.9
    2006    "Age"    "20-24"    519.8
    2006    "Age"    "25-29"    300.8
    2006    "Age"    "30-34"    160.8
    2006    "Age"    "35-39"    98.4
    2006    "Age"    "40-44"    65
    2006    "Age"    "45-54"    32.1
    2006    "Age"    "55-64"    9.9
    2006    "Age"    "65+"    2.1
    2006    "Age"    "Unknown"    
    2006    "Overall"    "Overall"    120.1
    2007    "Age"    "0-14"    7.2
    2007    "Age"    "15-19"    453.7
    2007    "Age"    "20-24"    522.2
    2007    "Age"    "25-29"    291.6
    2007    "Age"    "30-34"    156.6
    2007    "Age"    "35-39"    90.9
    2007    "Age"    "40-44"    60.3
    2007    "Age"    "45-54"    30.5
    2007    "Age"    "55-64"    9.7
    2007    "Age"    "65+"    1.9
    2007    "Age"    "Unknown"    
    2007    "Overall"    "Overall"    118.1
    2008    "Age"    "0-14"    6.7
    2008    "Age"    "15-19"    446.7
    2008    "Age"    "20-24"    506.7
    2008    "Age"    "25-29"    264.7
    2008    "Age"    "30-34"    141.9
    2008    "Age"    "35-39"    78.8
    2008    "Age"    "40-44"    51.7
    2008    "Age"    "45-54"    25.3
    2008    "Age"    "55-64"    7.8
    2008    "Age"    "65+"    1.7
    2008    "Age"    "Unknown"    
    2008    "Overall"    "Overall"    110.7
    2009    "Age"    "0-14"    5.3
    2009    "Age"    "15-19"    402.1
    2009    "Age"    "20-24"    464.2
    2009    "Age"    "25-29"    230.4
    2009    "Age"    "30-34"    124.4
    2009    "Age"    "35-39"    68.3
    2009    "Age"    "40-44"    43
    2009    "Age"    "45-54"    21
    2009    "Age"    "55-64"    6.4
    2009    "Age"    "65+"    1.4
    2009    "Age"    "Unknown"    
    2009    "Overall"    "Overall"    98.2
    2010    "Age"    "0-14"    5.4
    2010    "Age"    "15-19"    401.5
    2010    "Age"    "20-24"    486.7
    2010    "Age"    "25-29"    240.7
    2010    "Age"    "30-34"    126.6
    2010    "Age"    "35-39"    68.6
    2010    "Age"    "40-44"    44.3
    2010    "Age"    "45-54"    21.2
    2010    "Age"    "55-64"    6
    2010    "Age"    "65+"    1.3
    2010    "Age"    "Unknown"    
    2010    "Overall"    "Overall"    100
    2011    "Age"    "0-14"    5.7
    2011    "Age"    "15-19"    406.9
    2011    "Age"    "20-24"    504.2
    2011    "Age"    "25-29"    250.2
    2011    "Age"    "30-34"    132.4
    2011    "Age"    "35-39"    72
    2011    "Age"    "40-44"    46
    2011    "Age"    "45-54"    23.4
    2011    "Age"    "55-64"    7.2
    2011    "Age"    "65+"    1.4
    2011    "Age"    "Unknown"    
    2011    "Overall"    "Overall"    103.3
    2012    "Age"    "0-14"    5.6
    2012    "Age"    "15-19"    381.6
    2012    "Age"    "20-24"    510.2
    2012    "Age"    "25-29"    273.3
    2012    "Age"    "30-34"    150.3
    2012    "Age"    "35-39"    83.1
    2012    "Age"    "40-44"    52.2
    2012    "Age"    "45-54"    28
    2012    "Age"    "55-64"    8.4
    2012    "Age"    "65+"    1.5
    2012    "Age"    "Unknown"    
    2012    "Overall"    "Overall"    106.7
    2013    "Age"    "0-14"    4.7
    2013    "Age"    "15-19"    340.4
    2013    "Age"    "20-24"    495.5
    2013    "Age"    "25-29"    287.9
    2013    "Age"    "30-34"    160.2
    2013    "Age"    "35-39"    92
    2013    "Age"    "40-44"    56.7
    2013    "Age"    "45-54"    31.6
    2013    "Age"    "55-64"    9.7
    2013    "Age"    "65+"    1.8
    2013    "Age"    "Unknown"    
    2013    "Overall"    "Overall"    105.4
    2014    "Age"    "0-14"    4.4
    2014    "Age"    "15-19"    325.2
    2014    "Age"    "20-24"    508
    2014    "Age"    "25-29"    317
    2014    "Age"    "30-34"    178.6
    2014    "Age"    "35-39"    104.7
    2014    "Age"    "40-44"    61.8
    2014    "Age"    "45-54"    35.4
    2014    "Age"    "55-64"    11.4
    2014    "Age"    "65+"    2
    2014    "Age"    "Unknown"    
    2014    "Overall"    "Overall"    110
    2015    "Age"    "0-14"    4.2
    2015    "Age"    "15-19"    341.5
    2015    "Age"    "20-24"    549.6
    2015    "Age"    "25-29"    369.8
    2015    "Age"    "30-34"    211.2
    2015    "Age"    "35-39"    128.7
    2015    "Age"    "40-44"    74.7
    2015    "Age"    "45-54"    43.7
    2015    "Age"    "55-64"    14.8
    2015    "Age"    "65+"    2.5
    2015    "Age"    "Unknown"    
    2015    "Overall"    "Overall"    123.3
    2016    "Age"    "0-14"    4.5
    2016    "Age"    "15-19"    379.4
    2016    "Age"    "20-24"    618.2
    2016    "Age"    "25-29"    442
    2016    "Age"    "30-34"    264.2
    2016    "Age"    "35-39"    163.9
    2016    "Age"    "40-44"    97.1
    2016    "Age"    "45-54"    56.5
    2016    "Age"    "55-64"    19.7
    2016    "Age"    "65+"    3.2
    2016    "Age"    "Unknown"    
    2016    "Overall"    "Overall"    145.1
    2017    "Age"    "0-14"    5
    2017    "Age"    "15-19"    439
    2017    "Age"    "20-24"    707.1
    2017    "Age"    "25-29"    522.4
    2017    "Age"    "30-34"    326.4
    2017    "Age"    "35-39"    206.8
    2017    "Age"    "40-44"    123.1
    2017    "Age"    "45-54"    69.7
    2017    "Age"    "55-64"    26
    2017    "Age"    "65+"    4.1
    2017    "Age"    "Unknown"    
    2017    "Overall"    "Overall"    171
    2018    "Age"    "0-14"    5
    2018    "Age"    "15-19"    433.8
    2018    "Age"    "20-24"    723.2
    2018    "Age"    "25-29"    550.3
    2018    "Age"    "30-34"    364.3
    2018    "Age"    "35-39"    224.8
    2018    "Age"    "40-44"    136.9
    2018    "Age"    "45-54"    75.2
    2018    "Age"    "55-64"    28.6
    2018    "Age"    "65+"    4.5
    2018    "Age"    "Unknown"    
    2018    "Overall"    "Overall"    178.6
    2019    "Age"    "0-14"    4.9
    2019    "Age"    "15-19"    443.5
    2019    "Age"    "20-24"    750.2
    2019    "Age"    "25-29"    577.3
    2019    "Age"    "30-34"    392.3
    2019    "Age"    "35-39"    246.5
    2019    "Age"    "40-44"    152.4
    2019    "Age"    "45-54"    81.5
    2019    "Age"    "55-64"    32.1
    2019    "Age"    "65+"    5
    2019    "Age"    "Unknown"    
    2019    "Overall"    "Overall"    187.8
    end

  • #2
    Thanks for the data example which is helpful, although data should be system missing . not blank when missing.

    I have to say that I don't think your design works well for real!


    Here is some code that isn't quite what you ask for and then some code that does something different. I am ignoring the unequal bin widths for age and assuming that the last variable is scaled by population concerned.

    Code:
    clear
    input year    str10 gregory    str10 group    data
    2000    "Age"    "0-14"    11.5
    2000    "Age"    "15-19"    501.7
    2000    "Age"    "20-24"    592.2
    2000    "Age"    "25-29"    292.1
    2000    "Age"    "30-34"    156.1
    2000    "Age"    "35-39"    100.4
    2000    "Age"    "40-44"    60.6
    2000    "Age"    "45-54"    27.4
    2000    "Age"    "55-64"    9.5
    2000    "Age"    "65+"    2.6
    2000    "Age"    "Unknown"    .
    2000    "Overall"    "Overall"    128.6
    2001    "Age"    "0-14"    11.3
    2001    "Age"    "15-19"    491.9
    2001    "Age"    "20-24"    582.6
    2001    "Age"    "25-29"    294.7
    2001    "Age"    "30-34"    156.2
    2001    "Age"    "35-39"    97.3
    2001    "Age"    "40-44"    59.2
    2001    "Age"    "45-54"    26.4
    2001    "Age"    "55-64"    8.9
    2001    "Age"    "65+"    2.4
    2001    "Age"    "Unknown"    .
    2001    "Overall"    "Overall"    126.9
    2002    "Age"    "0-14"    10.3
    2002    "Age"    "15-19"    466.6
    2002    "Age"    "20-24"    549.5
    2002    "Age"    "25-29"    292.8
    2002    "Age"    "30-34"    153.9
    2002    "Age"    "35-39"    97.8
    2002    "Age"    "40-44"    59.9
    2002    "Age"    "45-54"    27.2
    2002    "Age"    "55-64"    8.5
    2002    "Age"    "65+"    2.2
    2002    "Age"    "Unknown"    .
    2002    "Overall"    "Overall"    122.3
    2003    "Age"    "0-14"    9.1
    2003    "Age"    "15-19"    435
    2003    "Age"    "20-24"    513
    2003    "Age"    "25-29"    281.5
    2003    "Age"    "30-34"    147.7
    2003    "Age"    "35-39"    94.5
    2003    "Age"    "40-44"    59.6
    2003    "Age"    "45-54"    26.9
    2003    "Age"    "55-64"    8.3
    2003    "Age"    "65+"    2.1
    2003    "Age"    "Unknown"    .
    2003    "Overall"    "Overall"    115.5
    2004    "Age"    "0-14"    8.1
    2004    "Age"    "15-19"    416.6
    2004    "Age"    "20-24"    488.8
    2004    "Age"    "25-29"    282.2
    2004    "Age"    "30-34"    149.3
    2004    "Age"    "35-39"    94.4
    2004    "Age"    "40-44"    60.9
    2004    "Age"    "45-54"    29
    2004    "Age"    "55-64"    9.1
    2004    "Age"    "65+"    2
    2004    "Age"    "Unknown"    .
    2004    "Overall"    "Overall"    112.7
    2005    "Age"    "0-14"    7.8
    2005    "Age"    "15-19"    426.4
    2005    "Age"    "20-24"    500.2
    2005    "Age"    "25-29"    287.1
    2005    "Age"    "30-34"    150.9
    2005    "Age"    "35-39"    95.5
    2005    "Age"    "40-44"    63
    2005    "Age"    "45-54"    29.8
    2005    "Age"    "55-64"    9.1
    2005    "Age"    "65+"    2.1
    2005    "Age"    "Unknown"    .
    2005    "Overall"    "Overall"    114.9
    2006    "Age"    "0-14"    7.7
    2006    "Age"    "15-19"    447.9
    2006    "Age"    "20-24"    519.8
    2006    "Age"    "25-29"    300.8
    2006    "Age"    "30-34"    160.8
    2006    "Age"    "35-39"    98.4
    2006    "Age"    "40-44"    65
    2006    "Age"    "45-54"    32.1
    2006    "Age"    "55-64"    9.9
    2006    "Age"    "65+"    2.1
    2006    "Age"    "Unknown"    .
    2006    "Overall"    "Overall"    120.1
    2007    "Age"    "0-14"    7.2
    2007    "Age"    "15-19"    453.7
    2007    "Age"    "20-24"    522.2
    2007    "Age"    "25-29"    291.6
    2007    "Age"    "30-34"    156.6
    2007    "Age"    "35-39"    90.9
    2007    "Age"    "40-44"    60.3
    2007    "Age"    "45-54"    30.5
    2007    "Age"    "55-64"    9.7
    2007    "Age"    "65+"    1.9
    2007    "Age"    "Unknown"    .
    2007    "Overall"    "Overall"    118.1
    2008    "Age"    "0-14"    6.7
    2008    "Age"    "15-19"    446.7
    2008    "Age"    "20-24"    506.7
    2008    "Age"    "25-29"    264.7
    2008    "Age"    "30-34"    141.9
    2008    "Age"    "35-39"    78.8
    2008    "Age"    "40-44"    51.7
    2008    "Age"    "45-54"    25.3
    2008    "Age"    "55-64"    7.8
    2008    "Age"    "65+"    1.7
    2008    "Age"    "Unknown"    .
    2008    "Overall"    "Overall"    110.7
    2009    "Age"    "0-14"    5.3
    2009    "Age"    "15-19"    402.1
    2009    "Age"    "20-24"    464.2
    2009    "Age"    "25-29"    230.4
    2009    "Age"    "30-34"    124.4
    2009    "Age"    "35-39"    68.3
    2009    "Age"    "40-44"    43
    2009    "Age"    "45-54"    21
    2009    "Age"    "55-64"    6.4
    2009    "Age"    "65+"    1.4
    2009    "Age"    "Unknown"    .
    2009    "Overall"    "Overall"    98.2
    2010    "Age"    "0-14"    5.4
    2010    "Age"    "15-19"    401.5
    2010    "Age"    "20-24"    486.7
    2010    "Age"    "25-29"    240.7
    2010    "Age"    "30-34"    126.6
    2010    "Age"    "35-39"    68.6
    2010    "Age"    "40-44"    44.3
    2010    "Age"    "45-54"    21.2
    2010    "Age"    "55-64"    6
    2010    "Age"    "65+"    1.3
    2010    "Age"    "Unknown"    .
    2010    "Overall"    "Overall"    100
    2011    "Age"    "0-14"    5.7
    2011    "Age"    "15-19"    406.9
    2011    "Age"    "20-24"    504.2
    2011    "Age"    "25-29"    250.2
    2011    "Age"    "30-34"    132.4
    2011    "Age"    "35-39"    72
    2011    "Age"    "40-44"    46
    2011    "Age"    "45-54"    23.4
    2011    "Age"    "55-64"    7.2
    2011    "Age"    "65+"    1.4
    2011    "Age"    "Unknown"    .
    2011    "Overall"    "Overall"    103.3
    2012    "Age"    "0-14"    5.6
    2012    "Age"    "15-19"    381.6
    2012    "Age"    "20-24"    510.2
    2012    "Age"    "25-29"    273.3
    2012    "Age"    "30-34"    150.3
    2012    "Age"    "35-39"    83.1
    2012    "Age"    "40-44"    52.2
    2012    "Age"    "45-54"    28
    2012    "Age"    "55-64"    8.4
    2012    "Age"    "65+"    1.5
    2012    "Age"    "Unknown"    .
    2012    "Overall"    "Overall"    106.7
    2013    "Age"    "0-14"    4.7
    2013    "Age"    "15-19"    340.4
    2013    "Age"    "20-24"    495.5
    2013    "Age"    "25-29"    287.9
    2013    "Age"    "30-34"    160.2
    2013    "Age"    "35-39"    92
    2013    "Age"    "40-44"    56.7
    2013    "Age"    "45-54"    31.6
    2013    "Age"    "55-64"    9.7
    2013    "Age"    "65+"    1.8
    2013    "Age"    "Unknown"    .
    2013    "Overall"    "Overall"    105.4
    2014    "Age"    "0-14"    4.4
    2014    "Age"    "15-19"    325.2
    2014    "Age"    "20-24"    508
    2014    "Age"    "25-29"    317
    2014    "Age"    "30-34"    178.6
    2014    "Age"    "35-39"    104.7
    2014    "Age"    "40-44"    61.8
    2014    "Age"    "45-54"    35.4
    2014    "Age"    "55-64"    11.4
    2014    "Age"    "65+"    2
    2014    "Age"    "Unknown"  .  
    2014    "Overall"    "Overall"    110
    2015    "Age"    "0-14"    4.2
    2015    "Age"    "15-19"    341.5
    2015    "Age"    "20-24"    549.6
    2015    "Age"    "25-29"    369.8
    2015    "Age"    "30-34"    211.2
    2015    "Age"    "35-39"    128.7
    2015    "Age"    "40-44"    74.7
    2015    "Age"    "45-54"    43.7
    2015    "Age"    "55-64"    14.8
    2015    "Age"    "65+"    2.5
    2015    "Age"    "Unknown"    .
    2015    "Overall"    "Overall"    123.3
    2016    "Age"    "0-14"    4.5
    2016    "Age"    "15-19"    379.4
    2016    "Age"    "20-24"    618.2
    2016    "Age"    "25-29"    442
    2016    "Age"    "30-34"    264.2
    2016    "Age"    "35-39"    163.9
    2016    "Age"    "40-44"    97.1
    2016    "Age"    "45-54"    56.5
    2016    "Age"    "55-64"    19.7
    2016    "Age"    "65+"    3.2
    2016    "Age"    "Unknown"    .
    2016    "Overall"    "Overall"    145.1
    2017    "Age"    "0-14"    5
    2017    "Age"    "15-19"    439
    2017    "Age"    "20-24"    707.1
    2017    "Age"    "25-29"    522.4
    2017    "Age"    "30-34"    326.4
    2017    "Age"    "35-39"    206.8
    2017    "Age"    "40-44"    123.1
    2017    "Age"    "45-54"    69.7
    2017    "Age"    "55-64"    26
    2017    "Age"    "65+"    4.1
    2017    "Age"    "Unknown"    .
    2017    "Overall"    "Overall"    171
    2018    "Age"    "0-14"    5
    2018    "Age"    "15-19"    433.8
    2018    "Age"    "20-24"    723.2
    2018    "Age"    "25-29"    550.3
    2018    "Age"    "30-34"    364.3
    2018    "Age"    "35-39"    224.8
    2018    "Age"    "40-44"    136.9
    2018    "Age"    "45-54"    75.2
    2018    "Age"    "55-64"    28.6
    2018    "Age"    "65+"    4.5
    2018    "Age"    "Unknown"    .
    2018    "Overall"    "Overall"    178.6
    2019    "Age"    "0-14"    4.9
    2019    "Age"    "15-19"    443.5
    2019    "Age"    "20-24"    750.2
    2019    "Age"    "25-29"    577.3
    2019    "Age"    "30-34"    392.3
    2019    "Age"    "35-39"    246.5
    2019    "Age"    "40-44"    152.4
    2019    "Age"    "45-54"    81.5
    2019    "Age"    "55-64"    32.1
    2019    "Age"    "65+"    5
    2019    "Age"    "Unknown"    .
    2019    "Overall"    "Overall"    187.8
    end
    
    
    gen gr = real(substr(group, 1, 2))
    
    gen year2 = cond(gr == 15, year - 1, cond(gr == 20, year - 0.5, cond(gr == 25, year, cond(gr == 30, year + 0.5, cond(gr == 35, year +1, .)))))
    
    twoway bar data year2 if inlist(year, 2000, 2010, 2019), barw(0.5) bfcolor(blue*0.2) || connected data year if group == "Overall"  , legend(off) name(G1, replace)
    
    encode group if !inlist(group, "Unknown", "Overall") , gen(group2)
    // tabplot is from Stata Journal
    tabplot group2 year [iw=data] if inlist(year, 2000, 2005, 2010, 2015, 2019), horizontal yreverse barw(1) xsize(7) bfcolor(green*0.2) showval(offset(0.26) format(%2.0f))  note("") ytitle(Age group) xtitle("") xsc(r(0.8, .)) name(G2, replace)
    Guess: the data are social not medical. My own age group is so low!
    Click image for larger version

Name:	agegroup1.png
Views:	1
Size:	21.2 KB
ID:	1632436

    Click image for larger version

Name:	agegroup2.png
Views:	1
Size:	24.8 KB
ID:	1632437

    Last edited by Nick Cox; 19 Oct 2021, 12:08.

    Comment


    • #3
      I've found Nick's fabplot (Stata Journal) to be helpful in instances like these. Something along the lines of

      Code:
      encode group, gen(grp)
      fabplot connected data grp if group != "Overall", by(year, compact rows(3)) xlab(1(1)10,  angle(v) valuelabel) select(year >= 2005)
      where you can adjust your preferred years in the select() option.

      Cox, Nicholas J. "Speaking Stata: Front-and-back plots to ease spaghetti and paella problems." The Stata Journal 21, no. 2 (2021): 539-554.
      https://journals.sagepub.com/doi/pdf...6867X211025838

      Comment


      • #4
        Thank you so much, Nick and Justin. Your comments are very helpful!

        Comment


        • #5
          Justin Niakamal had a nice idea. Here are some further tweaks. This assumes the data example and code in #2 have been run and that fabplot has been installed.

          Code:
          fabplot line data group2 , by(year, compact rows(3)) xlab(1(1)10,  angle(v) valuelabel) select(inlist(year, 2000, 2005, 2010, 2015, 2019)) ysc(log) yla(1 10 100 1000) xtitle(Age group) front(connected) name(G3, replace)
          Making the default plot line reduces background noise while keeping the front series connected maintains the emphasis. Logarithmic scale is an option, although not necessarily better here.
          Click image for larger version

Name:	agegroup3.png
Views:	1
Size:	100.7 KB
ID:	1632516



          Comment


          • #6
            Thank you again Nick Cox

            Comment

            Working...
            X