saturn

/home/coolhand/html/datavis/data_trove/demographic/veterans/military_firearm_merged_analysis.csv 54 rows sample n=54 seed 42 2026-06-22T00:01:25+00:00

Overview

Source/home/coolhand/html/datavis/data_trove/demographic/veterans/military_firearm_merged_analysis.csv
Total rows54
Profiled sample54
Columns23
Generated2026-06-22T00:01:25+00:00
Show data table
Per-column null rate across the corpus.
columnkindnull %
NAMEcategorical1.9%
statecategorical0.0%
veteran_populationnumeric1.9%
total_populationnumeric1.9%
veteran_percentagenumeric1.9%
active_duty_personnelnumeric0.0%
ownership_percentagenumeric0.0%
ffl_countnumeric0.0%
veteran_suicide_ratenumeric0.0%
civilian_suicide_ratenumeric0.0%
veteran_risk_rationumeric0.0%
ptsd_prevalence_pctnumeric46.3%
va_users_with_ptsd_pctnumeric46.3%
spouse_unemployment_ratenumeric64.8%
spouse_labor_force_participationnumeric64.8%
va_utilization_pctnumeric0.0%
installationcategorical77.8%
countycategorical77.8%
annual_economic_impact_millionsnumeric77.8%
total_personnelnumeric77.8%
direct_jobsnumeric77.8%
ffl_per_100knumeric1.9%
active_duty_per_100knumeric1.9%

Insights opt-in

Model-generated narrative. These are opinions, not facts — the stats below are what saturn measured. Generated by: anthropic:default.

Dataset medium anthropic:default

This is a 54-row, state-level dataset merging U.S. military and veteran demographics with firearm licensing, suicide rates, and installation-level economic data. The most striking signal is the veteran suicide rate (mean 35.6, range 24.9–52.3), which is roughly double the civilian suicide rate (mean 17.2, range 7.7–28.9), and the veteran_risk_ratio column directly quantifies this gap (mean 2.2x) across states. A second area worth scrutiny is the extreme right-skew in active_duty_per_100k (median 92, max 5,544) and ffl_per_100k (median 12, max 342), suggesting a handful of states—likely those hosting large installations—are pulling these distributions hard; about 22% of rows also carry heavy null rates on installation-level columns (county, installation, economic impact), meaning the installation-linked data covers only ~12 records. Analysts should examine how firearm density and military concentration interact with veteran mental health outcomes across states.

spouse_unemployment_rate medium anthropic:default

This column records the unemployment rate of a respondent's spouse, expressed as a percentage. It is missing for 64.81% of records — almost certainly because many respondents have no spouse — making the high null rate structurally expected rather than a data quality failure. Among the 19 non-null observations, values cluster tightly between 7.35 and 16.28 with a mean of ~10.46 and median of ~10.34, suggesting a near-symmetric distribution (skew 0.77, kurtosis 0.08); one outlier at 16.28 sits just beyond the upper fence. Only 15 unique values across 19 observations hints the rate may be recorded at a coarse or categorical granularity.

active_duty_per_100k high anthropic:default

This column represents active-duty military personnel per 100,000 residents, almost certainly measured at the U.S. state/territory level (n=54 aligns with states plus D.C. and territories). The distribution is severely right-skewed (skew=2.91, kurtosis=7.22): the median is only 92.5 yet the mean is 610.7 and the max reaches 5,544, driven by 9 outliers (17% of rows) — almost certainly states with large military installations such as Hawaii, Alaska, Virginia, or small-population territories. The IQR of 301 versus a std of 1,389 further confirms extreme concentration at low values with a long heavy tail.

ffl_per_100k high anthropic:default

This column represents the number of Federal Firearms Licensees (FFLs) per 100,000 residents, almost certainly measured at the U.S. state (or territory) level given n=54. The distribution is severely right-skewed (skew=2.47, kurtosis=5.08): the median is only 12.37 but the mean is pulled to 49.44 by extreme outliers, with a maximum of 341.66 — over 27× the median. Eight observations (15.1%) are flagged as outliers, likely small-population states or territories where per-capita rates explode due to a low denominator.

veteran_percentage high anthropic:default

This column represents veteran percentage, likely a share (%) of veterans within some geographic or demographic unit across 54 records. The distribution is severely right-skewed (skew=6.03, kurtosis=37.997) with a median of 4.85% but a mean of 14.09%, driven by 9 outliers (17% of rows) including a maximum of 277.05 — a value that cannot represent a valid percentage and almost certainly reflects a data quality issue such as a raw count, a decimal-point error, or a different unit entirely. The std of 38.90 dwarfs the IQR of 5.89, confirming extreme contamination from these outliers.

county high anthropic:default

This column represents a US county name associated with each record, likely geographic metadata for a location or address field. The most striking issue is a 77.78% null rate — only 12 of 54 rows have a value at all, rendering the column nearly empty. Among the 12 non-null values, cardinality is 10 with a near-uniform distribution (entropy ratio 0.979), meaning almost every populated entry is a distinct county, with only San Diego and Cumberland appearing twice.

installation high anthropic:default

This column records U.S. military installation names (bases and airfields) associated with records in the dataset. The most striking issue is that 77.78% of the 54 rows are null, leaving only 12 non-null values — each appearing exactly once, yielding a perfectly uniform distribution (entropy_ratio = 1.0) with no dominant installation. The long-tail alert is somewhat misleading given the uniformity; the real concern is the extreme missingness, which severely limits analytical utility.

active_duty_personnel high anthropic:default

This column represents the count of active duty military personnel per record (likely per country or military branch), with 54 observations and no nulls. The distribution is heavily right-skewed (skew=1.59) with a median of 11,584 but a mean of 34,003, driven by a long upper tail stretching to 162,362. Eight records (14.8% of the dataset) are flagged as outliers, indicating a small number of entities with disproportionately large forces. The IQR of 38,504 vs. a std of 46,995 confirms the spread is dominated by extreme high-end values.

ffl_count medium anthropic:default

This column represents a count of Federal Firearms Licensees (FFL) — likely per geographic unit such as state or county — across 54 observations with no nulls. The distribution is right-skewed (skew = 1.66) with a wide IQR of 2496.5 and a standard deviation (2772.66) nearly equal to the mean (3073.11), signaling high dispersion. Five outliers (≈9.3% of rows) pull the tail toward the maximum of 10904, while the minimum is 220 and median only 2096.5, confirming a long upper tail. The kurtosis of 2.0 is moderate, suggesting the outliers are notable but not extreme relative to a normal distribution.

ownership_percentage high anthropic:default

This column represents ownership percentage stakes, likely equity shareholdings in companies or assets, ranging from 14.7% to 66.3% across 54 records with no nulls. The distribution is moderately left-skewed (skew = -0.69) with values tightly clustered between Q1 40.05% and Q3 51.4%, suggesting most holdings hover around majority or near-majority control thresholds. Notably, 5 outliers (~9.3% of rows) pull the lower tail, and the max of 66.3% implies no full buyouts are present. The near-platykurtic shape (kurtosis ≈ 0) indicates an unusually flat, spread-out distribution rather than a peaked one.

ptsd_prevalence_pct medium anthropic:default

This column captures PTSD prevalence as a percentage, likely drawn from epidemiological or clinical survey data across 54 records. The most striking issue is a 46.3% null rate — nearly half the rows are missing, which severely limits usability and warrants investigation into whether missingness is systematic (e.g., tied to a subgroup or data source). Among the 29 non-null values, the distribution is fairly compact (min 6.3, max 12.3, IQR 3.0) with a near-flat kurtosis of −1.05, suggesting a roughly uniform spread rather than a peaked central cluster. Only 25 unique values across 29 non-null rows implies some repeated percentage figures, possibly due to rounding or grouped reporting.

va_users_with_ptsd_pct medium anthropic:default

This column represents the percentage of VA users diagnosed with PTSD, likely aggregated at a state or facility level given n=54 (matching U.S. states/territories). The most surprising signal is the 46.3% null rate — nearly half the rows are missing, which severely limits usability and warrants investigation into whether missingness is systematic (e.g., certain facility types or regions not reporting). Among observed values, the distribution is fairly uniform (kurtosis –1.13, near-zero skew of 0.32) ranging from 7.9% to 18.5% with no outliers, suggesting genuine geographic variation rather than data error.

spouse_labor_force_participation medium anthropic:default

This column represents the labor force participation rate (likely as a percentage) of spouses in a surveyed population. The most striking feature is a null rate of 64.81% — nearly two-thirds of the 54 rows are missing, triggering an alert and severely limiting usability. Among the 19 non-null observations, values are tightly clustered between 66.8 and 73.4 with a mean of ~69.7 and IQR of only 2.2, suggesting very low variance and minimal outlier risk within the observed subset.

annual_economic_impact_millions medium anthropic:default

This column records estimated annual economic impact in millions of currency units, but 77.78% of the 54 rows are null — meaning only 12 rows carry a value, and those 12 values collapse to just 12 unique entries (effectively no repeats among non-null rows). The non-null values span 15,000 to 41,000 with a mean of ~23,833 and an IQR of 10,250, indicating a wide but plausibly real spread across large-scale economic entities; skew is moderate (0.87) and no outliers are flagged. The extreme null rate is the dominant concern and strongly suggests this field is sparsely populated by design or data collection failure, not random missingness.

direct_jobs medium anthropic:default

This column records the count of direct jobs associated with each record — likely a project, investment, or contract — with values ranging from 8,500 to 25,000 and a mean of ~14,292. The most striking signal is an extremely high null rate of 77.78%, meaning only 12 of 54 rows carry a value, which severely limits its usability. Among the non-null values, only 12 distinct figures exist across those 12 populated rows (effectively all unique), suggesting manual entry or discrete reporting tiers rather than continuous measurement. Distribution is mildly right-skewed (skew 0.81) with no outliers detected.

total_personnel medium anthropic:default

This column represents total personnel counts, likely headcount figures for organizations, units, or facilities. The most striking issue is a null rate of 77.78% — only 12 of 54 rows have a value — making it severely under-populated and potentially unreliable for modelling. Among the 12 non-null values, only 12 unique values exist (suggesting no repeated counts), ranging from 27,000 to 82,000 with a mean of ~46,083 and mild positive skew (0.855). The distribution is platykurtic (kurtosis ≈ 0.006) and has no outliers, so the non-null values themselves are internally well-behaved.

state high anthropic:default

This column contains U.S. state names, with 50 unique values across only 54 rows — nearly one entry per state, suggesting near-complete national coverage. California appears 3 times (top_rate 5.6%) and North Carolina and Texas appear twice each, while the remaining 47 states appear exactly once. The entropy ratio of 0.991 confirms an almost flat distribution, and the long_tail alert is technically triggered but is largely an artifact of the tiny dataset size rather than meaningful concentration.

NAME high anthropic:default

This column contains U.S. state names, functioning as a geographic label or identifier in a small dataset of 54 rows. With 49 unique values and an entropy ratio of 0.991, cardinality is near-maximal — almost every row has a distinct state name. The top value 'California' appears only 3 times (5.66%), and the long-tail alert confirms that most values appear just once, suggesting this may be a nearly one-per-state lookup table with a handful of duplicates.

civilian_suicide_rate high anthropic:default

This column represents a civilian suicide rate (likely per 100,000 population) across 54 records, with no nulls and no zeros. The distribution is notably well-behaved: near-zero skew (0.17), platykurtic shape (kurtosis −1.09), and no detected outliers, suggesting values spread broadly but uniformly between 7.7 and 28.9. The mean (17.22) and median (17.1) are nearly identical, and the IQR of 9.8 covers a substantial range, indicating genuine cross-unit variation rather than clustering.

va_utilization_pct high anthropic:default

This column represents a utilization percentage for VA (likely Veterans Affairs) resources or capacity, expressed as a numeric rate across 54 records. The distribution is notably uniform and platykurtic (kurtosis ≈ −1.05), meaning values are spread broadly and flatly across the range 13.8–42.3 with no outliers and near-zero skew (0.165). The mean (27.04) and median (26.2) are tightly aligned, and the IQR of 12.48 spans a moderate but consistent band, suggesting this metric reflects genuine variation across units or time periods rather than a concentrated signal.

veteran_risk_ratio high anthropic:default

This column represents a risk ratio specifically for a veteran population, with all 54 rows populated and no outliers detected. Values range from 1.8 to 3.23, with a mean of ~2.20 and median of 2.025, indicating veterans in this dataset are consistently at elevated risk (all values above 1.0 by a wide margin). The distribution is moderately right-skewed (skew ≈ 0.95) with a relatively tight IQR of 0.59, suggesting most observations cluster in the 1.85–2.44 range but a tail of higher-risk cases pulls the mean upward. The near-platykurtic shape (kurtosis ≈ -0.31) and 41 unique values out of 54 rows suggest this is a continuous derived metric rather than a categorised score.

veteran_suicide_rate high anthropic:default

This column contains veteran suicide rates, likely per 100,000 veterans, covering 54 observations (probably U.S. states plus a few territories or summary rows, given n=54 and 50 unique values). Values range from 24.9 to 52.3 with a mean of 35.6 and median of 34.65, indicating a relatively symmetric but mildly right-skewed distribution (skew=0.498). Noteworthy is the wide spread—an IQR of ~10.85 and max nearly double the min—highlighting substantial geographic disparity in veteran suicide rates, yet no statistical outliers were flagged.

total_population high anthropic:default

This column represents total population counts, almost certainly at a regional or state/province level given the value range (min 548,984 to max 39,227,468) and the small row count of 54 rows — consistent with US states or similar administrative units. The distribution is notably flat and near-uniform: kurtosis of -1.24 indicates lighter tails than normal, skew is near zero (0.093), and the IQR of 22,033,717 spans more than half the full range, confirming wide spread without outliers. There are 5 duplicate values among 54 rows (49 unique) and a 1.85% null rate (roughly 1 missing record) worth investigating.

veteran_population high anthropic:default

This column represents veteran population counts, likely at the U.S. state or territory level given the 54 rows and the plausible range of 61,090 to 1,786,891. The distribution is remarkably symmetric (skew ≈ 0.009) and platykurtic (kurtosis ≈ −1.35), meaning values are broadly spread across the range with no sharp central peak and no outliers detected. The IQR of 988,439 relative to a mean of ~820,444 indicates substantial spread across geographies, consistent with large population differences between small and large states.

Numeric correlation

Show data table
Pearson correlation across 12 numeric columns (values clipped to 2 decimals).
veteran_populationtotal_populationveteran_percentageactive_duty_personnelownership_percentageffl_countveteran_suicide_ratecivilian_suicide_rateveteran_risk_ratioptsd_prevalence_pctva_users_with_ptsd_pctspouse_unemployment_rate
veteran_population+1.00+0.37+0.36-0.79+0.28-0.73+0.30+0.34-0.48-0.26-0.23-0.35
total_population+0.37+1.00-0.40-0.62+0.80-0.63+0.74+0.74-0.75+0.51+0.52+0.38
veteran_percentage+0.36-0.40+1.00-0.31-0.17-0.36-0.21-0.21+0.15-0.20-0.21-0.35
active_duty_personnel-0.79-0.62-0.31+1.00-0.53+0.96-0.60-0.61+0.70-0.28-0.29-0.03
ownership_percentage+0.28+0.80-0.17-0.53+1.00-0.60+0.87+0.87-0.89+0.66+0.67+0.53
ffl_count-0.73-0.63-0.36+0.96-0.60+1.00-0.60-0.61+0.68-0.35-0.37-0.16
veteran_suicide_rate+0.30+0.74-0.21-0.60+0.87-0.60+1.00+1.00-0.95+0.56+0.58+0.67
civilian_suicide_rate+0.34+0.74-0.21-0.61+0.87-0.61+1.00+1.00-0.97+0.54+0.56+0.63
veteran_risk_ratio-0.48-0.75+0.15+0.70-0.89+0.68-0.95-0.97+1.00-0.54-0.57-0.48
ptsd_prevalence_pct-0.26+0.51-0.20-0.28+0.66-0.35+0.56+0.54-0.54+1.00+1.00+0.60
va_users_with_ptsd_pct-0.23+0.52-0.21-0.29+0.67-0.37+0.58+0.56-0.57+1.00+1.00+0.60
spouse_unemployment_rate-0.35+0.38-0.35-0.03+0.53-0.16+0.67+0.63-0.48+0.60+0.60+1.00

NAME categorical

46 singleton categories
rows54
null1 (1.9%)
unique49
top_valueCalifornia
top_rate0.057
cardinality49
entropy5.563
entropy_ratio0.991
Show data table
Top values for NAME (20 unique shown, of 49 total).
valuecountshare
California35.6%
North Carolina23.7%
Texas23.7%
Alabama11.9%
Alaska11.9%
Arizona11.9%
Arkansas11.9%
Colorado11.9%
Connecticut11.9%
Delaware11.9%
Florida11.9%
Georgia11.9%
Hawaii11.9%
Idaho11.9%
Illinois11.9%
Indiana11.9%
Iowa11.9%
Kansas11.9%
Kentucky11.9%
Louisiana11.9%
Top values (rank 1–20)
  1. California — 3
  2. North Carolina — 2
  3. Texas — 2
  4. Alabama — 1
  5. Alaska — 1
  6. Arizona — 1
  7. Arkansas — 1
  8. Colorado — 1
  9. Connecticut — 1
  10. Delaware — 1
  11. Florida — 1
  12. Georgia — 1
  13. Hawaii — 1
  14. Idaho — 1
  15. Illinois — 1
  16. Indiana — 1
  17. Iowa — 1
  18. Kansas — 1
  19. Kentucky — 1
  20. Louisiana — 1

state categorical

47 singleton categories
rows54
null0 (0.0%)
unique50
top_valueCalifornia
top_rate0.056
cardinality50
entropy5.593
entropy_ratio0.991
Show data table
Top values for state (20 unique shown, of 50 total).
valuecountshare
California35.6%
North Carolina23.7%
Texas23.7%
Alabama11.9%
Alaska11.9%
Arizona11.9%
Arkansas11.9%
Colorado11.9%
Connecticut11.9%
Delaware11.9%
Florida11.9%
Georgia11.9%
Hawaii11.9%
Idaho11.9%
Illinois11.9%
Indiana11.9%
Iowa11.9%
Kansas11.9%
Kentucky11.9%
Louisiana11.9%
Top values (rank 1–20)
  1. California — 3
  2. North Carolina — 2
  3. Texas — 2
  4. Alabama — 1
  5. Alaska — 1
  6. Arizona — 1
  7. Arkansas — 1
  8. Colorado — 1
  9. Connecticut — 1
  10. Delaware — 1
  11. Florida — 1
  12. Georgia — 1
  13. Hawaii — 1
  14. Idaho — 1
  15. Illinois — 1
  16. Indiana — 1
  17. Iowa — 1
  18. Kansas — 1
  19. Kentucky — 1
  20. Louisiana — 1

veteran_population numeric

rows54
null1 (1.9%)
unique49
min61,090
max1,786,891
mean820,444
median811,743
std529,006
q1279,178
q31,267,617
iqr988,439
skew9.01e-03
kurtosis-1.347
n_outliers0
outlier_rate0.000
zero_rate0.000
Show data table
Histogram bins for veteran_population (median: 811743.0).
bincount
6.109e+04 – 3.076e+0515
3.076e+05 – 5.542e+054
5.542e+05 – 8.007e+056
8.007e+05 – 1.047e+067
1.047e+06 – 1.294e+069
1.294e+06 – 1.54e+068
1.54e+06 – 1.787e+064

total_population numeric

rows54
null1 (1.9%)
unique49
min548,984
max39,227,468
mean18,699,090
median19,582,629
std12,467,076
q16,897,986
q328,931,703
iqr22,033,717
skew0.093
kurtosis-1.243
n_outliers0
outlier_rate0.000
zero_rate0.000
Show data table
Histogram bins for total_population (median: 19582629.0).
bincount
5.49e+05 – 6.074e+0613
6.074e+06 – 1.16e+075
1.16e+07 – 1.713e+074
1.713e+07 – 2.265e+0710
2.265e+07 – 2.818e+077
2.818e+07 – 3.37e+073
3.37e+07 – 3.923e+0711

veteran_percentage numeric

skew=+6.03 17.0% rows beyond 1.5 IQR
rows54
null1 (1.9%)
unique49
min0.220
max277.050
mean14.085
median4.850
std38.896
q11.880
q37.770
iqr5.890
skew6.031
kurtosis37.997
n_outliers9
outlier_rate0.170
zero_rate0.000
Show data table
Histogram bins for veteran_percentage (median: 4.85).
bincount
0.22 – 39.7749
39.77 – 79.313
79.31 – 118.90
118.9 – 158.40
158.4 – 1980
198 – 237.50
237.5 – 277.11

active_duty_personnel numeric

14.8% rows beyond 1.5 IQR
rows54
null0 (0.0%)
unique50
min1,166
max162,362
mean34,003
median11,584
std46,995
q13,884
q342,389
iqr38,505
skew1.594
kurtosis1.291
n_outliers8
outlier_rate0.148
zero_rate0.000
Show data table
Histogram bins for active_duty_personnel (median: 11584.0).
bincount
1166 – 2.419e+0437
2.419e+04 – 4.722e+044
4.722e+04 – 7.025e+043
7.025e+04 – 9.328e+042
9.328e+04 – 1.163e+052
1.163e+05 – 1.393e+053
1.393e+05 – 1.624e+053

ownership_percentage numeric

9.3% rows beyond 1.5 IQR
rows54
null0 (0.0%)
unique48
min14.700
max66.300
mean43.578
median45.750
std13.038
q140.050
q351.400
iqr11.350
skew-0.689
kurtosis-2.08e-03
n_outliers5
outlier_rate0.093
zero_rate0.000
Show data table
Histogram bins for ownership_percentage (median: 45.75).
bincount
14.7 – 22.075
22.07 – 29.445
29.44 – 36.813
36.81 – 44.197
44.19 – 51.5620
51.56 – 58.9310
58.93 – 66.34

ffl_count numeric

9.3% rows beyond 1.5 IQR
rows54
null0 (0.0%)
unique50
min220.000
max10,904
mean3,073
median2,096
std2,773
q11,300
q33,796
iqr2,496
skew1.660
kurtosis2.002
n_outliers5
outlier_rate0.093
zero_rate0.000
Show data table
Histogram bins for ffl_count (median: 2096.5).
bincount
220 – 174621
1746 – 327315
3273 – 479911
4799 – 63251
6325 – 78511
7851 – 93780
9378 – 1.09e+045

veteran_suicide_rate numeric

rows54
null0 (0.0%)
unique50
min24.900
max52.300
mean35.635
median34.650
std7.393
q129.800
q340.650
iqr10.850
skew0.498
kurtosis-0.695
n_outliers0
outlier_rate0.000
zero_rate0.000
Show data table
Histogram bins for veteran_suicide_rate (median: 34.65).
bincount
24.9 – 28.8112
28.81 – 32.7310
32.73 – 36.6410
36.64 – 40.568
40.56 – 44.476
44.47 – 48.394
48.39 – 52.34

civilian_suicide_rate numeric

rows54
null0 (0.0%)
unique50
min7.700
max28.900
mean17.224
median17.100
std6.026
q112.200
q322.000
iqr9.800
skew0.174
kurtosis-1.092
n_outliers0
outlier_rate0.000
zero_rate0.000
Show data table
Histogram bins for civilian_suicide_rate (median: 17.1).
bincount
7.7 – 10.7310
10.73 – 13.769
13.76 – 16.797
16.79 – 19.819
19.81 – 22.847
22.84 – 25.877
25.87 – 28.95

veteran_risk_ratio numeric

rows54
null0 (0.0%)
unique41
min1.800
max3.230
mean2.197
median2.025
std0.410
q11.850
q32.440
iqr0.590
skew0.946
kurtosis-0.314
n_outliers0
outlier_rate0.000
zero_rate0.000
Show data table
Histogram bins for veteran_risk_ratio (median: 2.025).
bincount
1.8 – 2.00425
2.004 – 2.2098
2.209 – 2.4137
2.413 – 2.6174
2.617 – 2.8213
2.821 – 3.0264
3.026 – 3.233

ptsd_prevalence_pct numeric

46.3% null
rows54
null25 (46.3%)
unique25
min6.300
max12.300
mean8.621
median8.300
std1.848
q17.100
q310.100
iqr3.000
skew0.430
kurtosis-1.049
n_outliers0
outlier_rate0.000
zero_rate0.000
Show data table
Histogram bins for ptsd_prevalence_pct (median: 8.3).
bincount
6.3 – 7.510
7.5 – 8.76
8.7 – 9.95
9.9 – 11.14
11.1 – 12.34

va_users_with_ptsd_pct numeric

46.3% null
rows54
null25 (46.3%)
unique25
min7.900
max18.500
mean12.255
median11.900
std3.315
q19.500
q314.800
iqr5.300
skew0.317
kurtosis-1.132
n_outliers0
outlier_rate0.000
zero_rate0.000
Show data table
Histogram bins for va_users_with_ptsd_pct (median: 11.9).
bincount
7.9 – 10.0210
10.02 – 12.145
12.14 – 14.265
14.26 – 16.385
16.38 – 18.54

spouse_unemployment_rate numeric

64.8% null 5.3% rows beyond 1.5 IQR
rows54
null35 (64.8%)
unique15
min7.350
max16.280
mean10.464
median10.340
std2.382
q18.590
q311.450
iqr2.860
skew0.774
kurtosis0.080
n_outliers1
outlier_rate0.053
zero_rate0.000
Show data table
Histogram bins for spouse_unemployment_rate (median: 10.34).
bincount
7.35 – 9.1366
9.136 – 10.927
10.92 – 12.712
12.71 – 14.493
14.49 – 16.281

spouse_labor_force_participation numeric

64.8% null
rows54
null35 (64.8%)
unique15
min66.800
max73.400
mean69.695
median69.800
std1.680
q168.350
q370.550
iqr2.200
skew0.366
kurtosis-0.394
n_outliers0
outlier_rate0.000
zero_rate0.000
Show data table
Histogram bins for spouse_labor_force_participation (median: 69.8).
bincount
66.8 – 68.124
68.12 – 69.444
69.44 – 70.766
70.76 – 72.083
72.08 – 73.42

va_utilization_pct numeric

rows54
null0 (0.0%)
unique50
min13.800
max42.300
mean27.037
median26.200
std7.952
q121.000
q333.475
iqr12.475
skew0.165
kurtosis-1.051
n_outliers0
outlier_rate0.000
zero_rate0.000
Show data table
Histogram bins for va_utilization_pct (median: 26.2).
bincount
13.8 – 17.878
17.87 – 21.949
21.94 – 26.0110
26.01 – 30.097
30.09 – 34.168
34.16 – 38.237
38.23 – 42.35

installation categorical

12 singleton categories 77.8% null
rows54
null42 (77.8%)
unique12
top_valueNaval Base San Diego, CA
top_rate0.083
cardinality12
entropy3.585
entropy_ratio1.000
Show data table
Top values for installation (12 unique shown, of 12 total).
valuecountshare
Naval Base San Diego, CA11.9%
Travis AFB, CA11.9%
Camp Pendleton, CA11.9%
Eglin AFB, FL11.9%
Fort Stewart, GA11.9%
Fort Campbell, KY11.9%
Fort Liberty, NC11.9%
Fort Bragg (Liberty), NC11.9%
Joint Base San Antonio, TX11.9%
Fort Cavazos, TX11.9%
Naval Station Norfolk, VA11.9%
Naval Base Kitsap, WA11.9%
Top values (rank 1–20)
  1. Naval Base San Diego, CA — 1
  2. Travis AFB, CA — 1
  3. Camp Pendleton, CA — 1
  4. Eglin AFB, FL — 1
  5. Fort Stewart, GA — 1
  6. Fort Campbell, KY — 1
  7. Fort Liberty, NC — 1
  8. Fort Bragg (Liberty), NC — 1
  9. Joint Base San Antonio, TX — 1
  10. Fort Cavazos, TX — 1
  11. Naval Station Norfolk, VA — 1
  12. Naval Base Kitsap, WA — 1

county categorical

8 singleton categories 77.8% null
rows54
null42 (77.8%)
unique10
top_valueSan Diego
top_rate0.167
cardinality10
entropy3.252
entropy_ratio0.979
Show data table
Top values for county (10 unique shown, of 10 total).
valuecountshare
San Diego23.7%
Cumberland23.7%
Solano11.9%
Okaloosa11.9%
Liberty11.9%
Christian11.9%
Bexar11.9%
Bell11.9%
Norfolk11.9%
Kitsap11.9%
Top values (rank 1–20)
  1. San Diego — 2
  2. Cumberland — 2
  3. Solano — 1
  4. Okaloosa — 1
  5. Liberty — 1
  6. Christian — 1
  7. Bexar — 1
  8. Bell — 1
  9. Norfolk — 1
  10. Kitsap — 1

annual_economic_impact_millions numeric

77.8% null
rows54
null42 (77.8%)
unique12
min15,000
max41,000
mean23,833
median21,500
std8,178
q117,750
q328,000
iqr10,250
skew0.872
kurtosis-0.363
n_outliers0
outlier_rate0.000
zero_rate0.000
Show data table
Histogram bins for annual_economic_impact_millions (median: 21500.0).
bincount
1.5e+04 – 2.02e+045
2.02e+04 – 2.54e+043
2.54e+04 – 3.06e+041
3.06e+04 – 3.58e+042
3.58e+04 – 4.1e+041

total_personnel numeric

77.8% null
rows54
null42 (77.8%)
unique12
min27,000
max82,000
mean46,083
median43,500
std16,206
q134,250
q353,500
iqr19,250
skew0.855
kurtosis5.58e-03
n_outliers0
outlier_rate0.000
zero_rate0.000
Show data table
Histogram bins for total_personnel (median: 43500.0).
bincount
2.7e+04 – 3.8e+044
3.8e+04 – 4.9e+044
4.9e+04 – 6e+042
6e+04 – 7.1e+041
7.1e+04 – 8.2e+041

direct_jobs numeric

77.8% null
rows54
null42 (77.8%)
unique12
min8,500
max25,000
mean14,292
median13,500
std4,883
q110,750
q316,500
iqr5,750
skew0.815
kurtosis-0.067
n_outliers0
outlier_rate0.000
zero_rate0.000
Show data table
Histogram bins for direct_jobs (median: 13500.0).
bincount
8500 – 1.18e+044
1.18e+04 – 1.51e+044
1.51e+04 – 1.84e+042
1.84e+04 – 2.17e+041
2.17e+04 – 2.5e+041

ffl_per_100k numeric

skew=+2.47 15.1% rows beyond 1.5 IQR
rows54
null1 (1.9%)
unique49
min1.377
max341.656
mean49.445
median12.369
std87.370
q17.034
q331.087
iqr24.054
skew2.474
kurtosis5.076
n_outliers8
outlier_rate0.151
zero_rate0.000
Show data table
Histogram bins for ffl_per_100k (median: 12.368927310188392).
bincount
1.377 – 49.9941
49.99 – 98.64
98.6 – 147.22
147.2 – 195.81
195.8 – 244.42
244.4 – 2930
293 – 341.73

active_duty_per_100k numeric

skew=+2.91 17.0% rows beyond 1.5 IQR
rows54
null1 (1.9%)
unique49
min3.105
max5,544
mean610.726
median92.487
std1,389
q121.958
q3323.255
iqr301.297
skew2.911
kurtosis7.217
n_outliers9
outlier_rate0.170
zero_rate0.000
Show data table
Histogram bins for active_duty_per_100k (median: 92.48724939519369).
bincount
3.105 – 794.744
794.7 – 15863
1586 – 23782
2378 – 31700
3170 – 39610
3961 – 47531
4753 – 55443