Example: Trends in Gender

We are now equipped with enough coding skills to examine features and trends in subgroups of the U.S. population. In this example, we will look at the distribution of males and females across age groups. We will continue using the us_pop table from the previous section.

us_pop

SEX AGE 2010 2014
0 0 3951330 3949775
0 1 3957888 3949776
0 2 4090862 3959664
0 3 4111920 4007079
0 4 4077551 4005716
0 5 4064653 4006900
0 6 4073013 4135930
0 7 4043046 4155326
0 8 4025604 4120903
0 9 4125415 4108349

... (296 rows omitted)

As we know from having examined this dataset earlier, a description of the table appears online. Here is a reminder of what the table contains.

Each row represents an age group. The SEX column contains numeric codes: 0 stands for the total, 1 for male, and 2 for female. The AGE column contains ages in completed years, but the special value 999 represents the entire population regardless of age. The rest of the columns contain estimates of the US population.

Understanding AGE = 100

As a preliminary, let’s interpret data in the final age category in the table, where AGE is 100. The code below extracts the rows for the combined group of men and women (SEX code 0) for the highest ages.

us_pop.where('SEX', are.equal_to(0)).where('AGE', are.between(97, 101))

SEX AGE 2010 2014
0 97 68893 83089
0 98 47037 59726
0 99 32178 41468
0 100 54410 71626

Not surprisingly, the numbers of people are smaller at higher ages – for example, there are fewer 99-year-olds than 98-year-olds.

It does come as a surprise, though, that the numbers for AGE 100 are quite a bit larger than those for age 99. A closer examination of the documentation shows that it’s because the Census Bureau used 100 as the code for everyone aged 100 or more.

The row with AGE 100 doesn’t just represent 100-year-olds – it also includes those who are older than 100. That is why the numbers in that row are larger than in the row for the 99-year-olds.

Overall Proportions of Males and Females

We will now begin looking at gender ratios in 2014. First, let’s look at all the age groups together. Remember that this means looking at the rows where the “age” is coded 999. The table all_ages contains this information. There are three rows: one for the total of both genders, one for males (SEX code 1), and one for females (SEX code 2).

us_pop_2014 = us_pop.drop('2010')
all_ages = us_pop_2014.where('AGE', are.equal_to(999))
all_ages

SEX AGE 2014
0 999 318907401
1 999 156955337
2 999 161952064

Row 0 of all_ages contains the total U.S. population in each of the two years. The United States had just under 319 million in 2014.

Row 1 contains the counts for males and Row 2 for females. Compare these two rows to see that in 2014, there were more females than males in the United States.

The population counts in Row 1 and Row 2 add up to the total population in Row 0.

For comparability with other quantities, we will need to convert these counts to percents out of the total population. Let’s access the total for 2014 and name it. Then, we’ll show a population table with a proportion column. Consistent with our earlier observation that there were more females than males, about 50.8% of the population in 2014 was female and about 49.2% male in each of the two years.

pop_2014 = all_ages.column('2014').item(0)
all_ages.with_column(
    'Proportion', all_ages.column('2014')/pop_2014
).set_format('Proportion', PercentFormatter)

SEX AGE 2014 Proportion
0 999 318907401 100.00%
1 999 156955337 49.22%
2 999 161952064 50.78%

Proportions of Boys and Girls among Infants

When we look at infants, however, the opposite is true. Let’s define infants to be babies who have not yet completed one year, represented in the row corresponding to AGE 0. Here are their numbers in the population. You can see that male infants outnumbered female infants.

infants = us_pop_2014.where('AGE', are.equal_to(0))
infants

SEX AGE 2014
0 0 3949775
1 0 2020326
2 0 1929449

As before, we can convert these counts to percents out of the total numbers of infants. The resulting table shows that in 2014, just over 51% of infants in the U.S. were male.

infants_2014 = infants.column('2014').item(0)
infants.with_column(
    'Proportion', infants.column('2014')/infants_2014
).set_format('Proportion', PercentFormatter)

SEX AGE 2014 Proportion
0 0 3949775 100.00%
1 0 2020326 51.15%
2 0 1929449 48.85%

In fact, it has long been observed that the proportion of boys among newborns is slightly more than 1/2. The reason for this is not thoroughly understood, and scientists are still working on it.

Female:Male Gender Ratio at Each Age

We have seen that while there are more baby boys than baby girls, there are more females than males overall. So it’s clear that the split between genders must vary across age groups.

To study this variation, we will separate out the data for the females and the males, and eliminate the row where all the ages are aggregated and AGE is coded as 999.

The tables females and males contain the data for each the two genders.

females_all_rows = us_pop_2014.where('SEX', are.equal_to(2))
females = females_all_rows.where('AGE', are.not_equal_to(999))
females

SEX AGE 2014
2 0 1929449
2 1 1931375
2 2 1935991
2 3 1957483
2 4 1961199
2 5 1962561
2 6 2024870
2 7 2032494
2 8 2015285
2 9 2010659

... (91 rows omitted)

males_all_rows = us_pop_2014.where('SEX', are.equal_to(1))
males = males_all_rows.where('AGE', are.not_equal_to(999))
males

SEX AGE 2014
1 0 2020326
1 1 2018401
1 2 2023673
1 3 2049596
1 4 2044517
1 5 2044339
1 6 2111060
1 7 2122832
1 8 2105618
1 9 2097690

... (91 rows omitted)

The plan now is to compare the number of women and the number of men at each age, for each of the two years. Array and Table methods give us straightforward ways to do this. Both of these tables have one row for each age.

males.column('AGE')

array([  0,   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])
females.column('AGE')

array([  0,   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])

For any given age, we can get the Female:Male gender ratio by dividing the number of females by the number of males. To do this in one step, we can use column to extract the array of female counts and the corresponding array of male counts, and then simply divide one array by the other. Elementwise division will create an array of gender ratios for all the years.

ratios = Table().with_columns(
    'AGE', females.column('AGE'),
    '2014 F:M RATIO', females.column('2014')/males.column('2014')
)
ratios

AGE 2014 F:M RATIO
0 0.955019
1 0.956884
2 0.956672
3 0.955058
4 0.959248
5 0.959998
6 0.959172
7 0.957445
8 0.957099
9 0.958511

... (91 rows omitted)

You can see from the display that the ratios are all around 0.96 for children aged nine or younger. When the Female:Male ratio is less than 1, there are fewer females than males. Thus what we are seeing is that there were fewer girls than boys in each of the age groups 0, 1, 2, and so on through 9. Moreover, in each of these age groups, there were about 96 girls for every 100 boys.

So how can the overall proportion of females in the population be higher than the males?

Something extraordinary happens when we examine the other end of the age range. Here are the Female:Male ratios for people aged more than 75.

ratios.where('AGE', are.above(75)).show()

AGE 2014 F:M RATIO
76 1.23487
77 1.25797
78 1.28244
79 1.31627
80 1.34138
81 1.37967
82 1.41932
83 1.46552
84 1.52048
85 1.5756
86 1.65096
87 1.72172
88 1.81223
89 1.91837
90 2.01263
91 2.09488
92 2.2299
93 2.33359
94 2.52285
95 2.67253
96 2.87998
97 3.09104
98 3.41826
99 3.63278
100 4.25966

Not only are all of these ratios greater than 1, signifying more women than men in all of these age groups, many of them are considerably greater than 1.

  • At ages 89 and 90 the ratios are close to 2, meaning that there were about twice as many women as men at those ages in 2014.
  • At ages 98 and 99, there were about 3.5 to 4 times as many women as men.

If you are wondering how many people there were at these advanced ages, you can use Python to find out:

males.where('AGE', are.between(98, 100))

SEX AGE 2014
1 98 13518
1 99 8951
females.where('AGE', are.between(98, 100))

SEX AGE 2014
2 98 46208
2 99 32517

The graph below shows the gender ratios plotted against age. The blue curve shows the 2014 ratio by age.

The ratios are almost 1 (signifying close to equal numbers of males and females) for ages 0 through 60, but they start shooting up dramatically (more females than males) starting at about age 65.

That females outnumber males in the U.S. is partly due to the marked gender imbalance in favor of women among senior citizens.

ratios.plot('AGE')

png