Cool Link: 1950 Census




Cool link 1950 Census

In today’s edition of the series, we have a Cool Link for the 1950 Census. 1950 census data was already available on different websites, but it was general population and demographic data only. The National Archives and Record Administration, or NARA, has now released complete records. Many of these records were unavailable to the general public prior to this release because the data fell under what’s called the “72 Year Rule”, in which the US government will not release any personally identifiable information until 72 years has passed after the date of data collection. With the 1950 Census, that time has come.

1950 Census Records

You can search the records by place, record type or even by a person’s name. This is great not only for historic population and demographic data, but also for genealogical research into family histories.

Continue your search with tons of local population and demographic data.

Politics and Covid-19




Politics and Covid-19 Ohio

I largely avoid politics here because it’s a much more subjective topic that is far less data-focused in nature than what I try to provide here, so the most political I’ve gotten was to provide past election results and county voting trends with no political commentary. This post will attempt to maintain that line between data and opinion, but I understand that the topic of politics and Covid-19 is already a very controversial mix, and simply sticking to the data won’t necessarily be perceived as unbiased by all who read this. With that in mind, I can only say that this post is based on existing, straightforward data, and I have made no attempts to add any personal biases to the results one way or another.
With all that said, I was curious whether there was any correlation between voting patterns and Covid cases/deaths locally, specifically with Ohio’s 88 counties. There has been some suggestion in the media that Red- or Republican-voting places- have generally had worse outcomes than Blue- or Democratic-voting counties. So we will look at the following factors to see if that holds true locally:
1. Total Cases
2. Total Cases Per Capita
3. Total Deaths
4. Total Deaths Per Capita

But we first must establish what the Red vs. Blue counties are. Ohio doesn’t register voters by party affiliation, so instead, I used county voting results for the past 6 presidential elections, or since 2000. Based on the % of voters voting for either Republican or Democrat, I created 5 different levels of political bias.
Deep Blue: Counties where Democratic voters beat Republican voters by 25 points or more.
Light Blue: Counties where Democratic voters beat Republican voters by 5-24 points.
Neutral: Counties where Democratic/Republican voter advantage falls under 5 points.
Light Red: Counties where Republican voters beat Democratic voters by 5-24 points.
Deep Red: Counties where Republican voters beat Democratic voters by 25 points or more.
The point system is taken from the average of the past 6 elections, so keep in mind that some counties may be more Red or Blue currently than the average suggests.

So based on that criteria, which Ohio counties are Red vs. Blue vs. Neutral? Well, Ohio’s overwhelming rural counties are mostly in the Deep Red category (39 of 88), followed by Light Red (34 of 88), Neutral (7 of 88), Light Blue (7 of 88) and just 1 Deep Blue county in the state. The map below breaks the counties down and gives the average voting bias across the last 6 elections.

Now we need to take those established voting biases and compare them to how the counties performed during Covid-19.
Case Numbers Through 3/31/2022
Total All Red Counties: 1,230,285
Total All Neutral Counties: 498,375
Total All Blue Counties: 944,141
Average Total Cases by County Group
Deep Red Counties: 15,138.8
Light Red Counties: 18,819.8
Neutral Counties: 71,196.4
Light Blue Counties: 96,563.6
Deep Blue County: 268,196
On first glance, it would seem that Red counties did much better on average despite having more cases overall, but the problem is that those counties have much lower populations and literally cannot have the same average totals of more populated ones. That’s why we instead have to look at per-capita cases.
Total Cases Per 100K People
All Red Counties: 23.9
All Neutral Counties: 22.8
All Blue Counties: 21.9
Deep Red Only: 23.7
Light Red Only: 24.0
Neutral Only: 22.8
Light Blue Only: 22.0
Deep Blue Only: 21.7
With per-capita, the story is exactly the opposite, with Red counties having more cases by population. If you’re wondering why the Deep Red counties had a slightly lower per-capita rate than Light Red, the answer is Holmes County. Perhaps due to its heavy Amish population that tends to avoid modern medicine and technology- and largely keep to themselves in the process- reported per-capita cases there were the lowest in the state by far, and single-handedly lowered the entire Deep Red county grouping below Light Red counties. Regardless, the outcome was still the same- Red did worse.
Top 10 Highest Per-Capita Case Rate
1. Marion: 30.5
2. Lawrence, Scioto: 30.0
3. Pickaway: 29.9
4. Muskingum: 29.3
5. Jackson: 27.4
6. Fayette: 27.3
7. Guernsey: 26.9
8. Allen, Defiance, Pike: 26.8
9. Union: 26.4
10. Clark, Erie: 26.1
Top 10 Lowest Per-Capita Case Rate
1. Holmes: 11.6
2. Geauga: 17.1
3. Carroll: 19.5
4. Wayne: 20.0
5. Meigs: 20.1
6. Ashtabula: 20.3
7. Washington: 20.6
8. Summit: 20.7
9. Ottawa: 20.9
10. Trumbull: 21
Of course, one of the caveats with this data is that many, many cases went unreported, and those cases were more likely to be in rural areas with lower access to testing and medical facilities. There’s also the issue that Covid doesn’t always present with symptoms. So, it’s possible that the per-capita discrepancy was even larger.
Deaths, however, are more concrete. Not all of them have been counted either, obviously, but it’s a lot harder to hide a death than it is a symptomless case.
Total Deaths Through 3/31/2022
All Red Counties: 18,295
All Neutral Counties: 7,219
All Blue Counties: 12,523
Average Total Deaths by County Group
Deep Red: 227.6
Light Red: 277.0
Neutral: 1,031.3
Light Blue: 1,253.3
Deep Blue: 3,750.0
Again, on the surface, the average looks bad for Blue counties despite having the lower overall total, but the truth again rests with the per-capita figures.
Total Deaths Per Capita by County Group
Deep Red: 394.4
Light Red: 390.4
Neutral: 345.4
Light Blue: 328.6
Deep Blue: 304.0
On a per-capita basis, Blue counties lost 76 fewer people per 100K than did Red counties. That’s a lot of lives.

So what can be concluded from all this? The first is that the results in Ohio were not isolated. Across almost all states, Blue-leaning states had better outcomes per-capita than Red. Speculation as to why that is runs the gamut, from better overall local policies to differing views on science to even education levels and access to harmful media sources that disseminate misinformation. Whatever the case may be, the United States has lost more people than any other nation in the world, at now over 1 million. It is by far the worst pandemic and the worst natural disaster in American history. With so much bad news these days, we can only hope that something valuable has been learned in all this terrible mess.

Cool Link: The Columbus Bhutanese Community

The Columbus Bhutanese Community

In the last few decades, the Columbus Bhutanese community has grown into one of the largest in the world outside of Bhutan, itself. Many of these immigrants were resettled in other parts of Canada and the US, but an increasing number of them have made their way to Columbus and Central Ohio. According to the Bhutanese Community of Central Ohio, the area’s Bhutanese population now numbers upwards of 27,000, and projected to surpass 30,000 over the next few years.

This community has already made a local impact, opening new restaurants, shops and cultural and religious centers across the city and region.



2019 Ohio County Population Estimates

2019 Ohio county population estimates

The US Census has begun releasing 2019 population data, which will be the final data before we get the official, decennial census statistics for 2020. With Covid-19 ravaging the world and United States at the moment, it remains to be seen what effects it might have on the census counts, or if the official census may even end up delayed. While we wait for those issues to resolve, here are the 2019 Ohio county population estimates.

Total Ranked Population of Ohio’s Counties by Year
Census 2010—————————-July 1, 2018————————July 1, 2019
1. Cuyahoga: 1,280,122——–1. Franklin: 1,307,698———–1. Franklin: 1,316,756
2. Franklin: 1,163,414———–2. Cuyahoga: 1,241,718——–2. Cuyahoga: 1,235,072
3. Hamilton: 802,374————3. Hamilton: 815,445————-3. Hamilton: 817,473
4. Summit: 541,781————–4. Summit: 541,353————–4. Summit: 541,013
5. Montgomery: 535,153——-5. Montgomery: 531,600——–5. Montgomery: 531,687
6. Lucas: 441,815 —————6. Lucas: 429,612—————-6. Lucas: 428,348
7. Stark: 375,586—————–7. Butler: 382,000—————-7. Butler: 383,134
8. Butler: 368,130—————-8. Stark: 371,248—————–8. Stark: 370,606
9. Lorain: 301,356—————9. Lorain: 309,052—————-9. Lorain: 309,833
10. Mahoning: 238,823——–10. Warren: 231,945————-10. Warren: 234,602
11. Lake: 230,041—————11. Lake: 230,102—————–11. Lake: 230,149
12. Warren: 212,693————12. Mahoning: 229,216———12. Mahoning: 228,683
13. Trumbull: 210,312———-13. Clermont: 205,526———–13. Delaware: 209,177
14. Clermont: 197,363———-14. Delaware: 205,091———-14. Clermont: 206,428
15. Delaware: 174,214———15. Trumbull: 198,539————15. Trumbull: 197,974
16. Medina: 172,332————16. Medina: 178,978————–16. Medina: 179,746
17. Licking: 166,492————-17. Licking: 175,666————–17. Licking: 176,862
18. Greene: 161,573————18. Greene: 167,446————–18. Greene: 168,937
19. Portage: 161,419————19. Portage: 162,502————-19. Portage: 162,466
20. Fairfield: 146,156————20. Fairfield: 155,982————-20. Fairfield: 157,574
21. Clark: 138,333—————-21. Clark: 134,528—————-21. Clark: 134,083
22. Wood: 125,488—————22. Wood: 130,441—————-22. Wood: 130,817
23. Richland: 124,475———–23. Richland: 120,987————23. Richland: 121,154
24. Wayne: 114,520————-24. Wayne: 115,790—————-24. Wayne: 115,710
25. Columbiana: 107,841——25. Miami: 106,042—————–25. Miami: 106,987
26. Allen: 106,331—————26. Allen: 102,725——————26. Allen: 102,351
27. Miami: 102,506————–27. Columbiana: 102,473———27. Columbiana: 101,883
28. Ashtabula: 101,497———28. Ashtabula: 97,587————-28. Ashtabula: 97,241
29. Geauga: 93,389————-29. Geauga: 93,945—————-29. Geauga: 93,649
30. Tuscarawas: 92,582——–30. Tuscarawas: 92,079———-30. Tuscarawas: 91,987
31. Muskingum: 86,074———31. Muskingum: 86,131———–31. Muskingum: 86,215
32. Scioto: 79,499—————-32. Ross: 76,884——————-32. Ross: 76,666
33. Ross: 78,064——————33. Hancock: 75,920————–33. Hancock: 75,783
34. Erie: 77,079——————-34. Scioto: 75,480——————34. Scioto: 75,314
35. Hancock: 74,782————-35. Erie: 74,513———————35. Erie: 74,266
36. Belmont: 70,400————–36. Belmont: 67,533—————36. Belmont: 67,006
37. Jefferson: 69,709————37. Jefferson: 65,774—————37. Athens: 65,327
38. Marion: 66,501—————-38. Athens: 65,519—————–38. Jefferson: 65,325
39. Athens: 64,757—————-39. Marion: 65,427—————–39. Marion: 65,093
40. Lawrence: 62,450————-40. Knox: 61,900——————-40. Knox: 62,322
41. Washington: 61,778———-41. Washington: 60,111———–41. Washington: 59,911
42. Sandusky: 60,944————-42. Lawrence: 59,767————-42. Lawrence: 59,463
43. Knox: 60,921——————–43. Sandusky: 58,740————-43. Union: 58,988
44. Huron: 59,626——————-44. Huron: 58,364——————44. Sandusky: 58,518
45. Seneca: 56,745—————–45. Pickaway: 58,077————-45. Pickaway: 58,457
46. Pickaway: 55,698—————46. Union: 57,782——————46. Huron: 58,266
47. Ashland: 53,139—————–47. Seneca: 55,194—————-47. Seneca: 55,178
48. Darke: 53,139——————–48. Ashland: 53,706—————48. Ashland: 53,484
49. Union: 52,300——————–49. Darke: 51,299——————49. Darke: 51,113
50. Shelby: 49,423——————-50. Shelby: 48,622—————-50. Shelby: 48,590
51. Auglaize: 45,949—————–51. Auglaize: 45,736————-51. Logan: 45,672
52. Logan: 45,858——————–52. Logan: 45,332—————-52. Auglaize: 45,656
53. Brown: 44,846——————–53. Madison: 44,389————-53. Madison: 44,731
54. Crawford: 43,784—————-54. Holmes: 43,919—————54. Holmes: 43,960
55. Highland: 43,589—————-55. Brown: 43,570—————–55. Brown: 43,432
56. Madison: 43,435—————–56. Highland: 43,052————-56. Highland: 43,161
57. Fulton: 42,698——————–57. Fulton: 42,267—————–57. Fulton: 42,126
58. Holmes 42,366——————-58. Clinton: 42,085—————-58. Clinton: 41,968
59. Preble: 42,270——————–59. Crawford: 41,484————-59. Crawford: 41,494
60. Clinton: 42,040——————-60. Preble: 41,011—————–60. Mercer: 41,172
61. Ottawa: 41,428——————-61. Mercer: 40,952—————-61. Preble: 40,882
62. Mercer: 40,814——————-62. Ottawa: 40,769—————-62. Ottawa: 40,525
63. Champaign: 40,097————-63. Guernsey: 39,011————63. Champaign: 38,885
64. Guernsey: 40,087—————64. Champaign: 38,785———-64. Guernsey: 38,875
65. Defiance: 39,037—————-65. Defiance: 38,089————–65. Defiance: 38,087
66. Williams: 37,642—————–66. Williams: 36,739————–66. Williams: 36,692
67. Coshocton: 36,901————-67. Coshocton: 36,596———–67. Coshocton: 36,600
68. Perry: 36,058———————68. Perry: 36,039——————68. Perry: 36,134
69. Morrow: 34,827——————69. Morrow: 35,113—————-69. Morrow: 35,328
70. Putnam: 34,499——————70. Putnam: 33,802—————70. Putnam: 33,861
71. Jackson: 33,225——————71. Jackson: 32,366————–71. Jackson: 32,413
72. Hardin: 32,058——————–72. Hardin: 31,418—————-72. Hardin: 31,365
73. Gallia: 30.934———————73. Gallia: 29,945—————–73. Gallia: 29,898
74. Hocking: 29,380——————74. Fayette: 28,653—————74. Fayette: 28,525
75. Fayette: 29,030——————-75. Hocking: 28,357————–75. Van Wert: 28,275
76. Carroll: 28,836——————–76. Van Wert: 28,253————-76. Hocking: 28,264
77. Van Wert: 28,744—————–77. Pike: 27,932——————-77. Pike: 27,772
78. Pike: 28,709———————–78. Adams: 27,694—————-78. Adams: 27,698
79. Adams: 28,550——————-79. Henry: 27,092——————79. Henry: 27,006
80. Henry: 28,215———————80. Carroll: 27,082—————–80. Carroll: 26,914
81. Meigs: 23,770———————81. Meigs: 23,064—————–81. Meigs: 22,907
82. Wyandot: 22,615—————–82. Wyandot: 21,918————–82. Wyandot: 21,772
83. Paulding: 19,614—————–83. Paulding: 18,742————–83. Paulding: 18,672
84. Harrison: 15,864—————–84. Harrison: 15,167—————84. Harrison: 15,040
85. Morgan: 15,054——————85. Morgan: 14,581—————-85. Morgan: 14,508
86. Noble: 14,645———————86. Noble: 14,347——————86. Noble: 14,424
87. Monroe: 14,642——————-87. Monroe: 13,787—————87. Monroe: 13,654
88. Vinton: 13,435———————88. Vinton: 13,145—————-88. Vinton: 13,085

And here are the Top 25 Fastest Growing Counties by Total Growth by Time Period
Census 2010-July 1, 2019————————–July 1, 2018-July 1, 2019
1. Franklin: 153,342————————————1. Franklin: 9,058
2. Delaware: 34,963————————————2. Delaware: 4,086
3. Warren: 21,909—————————————3. Warren: 2,657
4. Hamilton: 15,099————————————-4. Hamilton: 2,028
5. Butler: 15,004—————————————–5. Fairfield: 1,592
6. Fairfield: 11,418————————————–6. Greene: 1,491
7. Licking: 10,370—————————————7. Union: 1,206
8. Clermont: 9,065————————————–8. Licking: 1,196
9. Lorain: 8,477——————————————9. Butler: 1,134
10. Medina: 7,414————————————–10. Miami: 945
11. Greene: 7,364————————————–11. Clermont: 902
12. Union: 6,688—————————————-12. Lorain: 781
13. Wood: 5,329—————————————-13. Medina: 768
14. Miami: 4,481—————————————-14. Knox: 422
15. Pickaway: 2,759———————————–15. Pickaway: 380
16. Holmes: 1,594————————————–16. Wood: 376
17. Knox: 1,401——————————————17. Madison: 342
18. Madison: 1,296————————————–18. Logan: 340
19. Wayne: 1,190—————————————-19. Mercer: 220
20. Portage: 1,047—————————————20. Morrow: 215
21. Hancock: 1,001————————————–21. Richland: 167
22. Athens: 570——————————————22. Highland: 109
23. Morrow: 501——————————————23. Champaign: 100
24. Mercer: 358——————————————24. Perry: 95
25. Ashland: 345—————————————–25. Montgomery: 87

Top 25 Slowest Growing Counties by Total Growth by Time Period
Census 2010-July 1, 2019——————————-July 1, 2018-July 1, 2019
1. Cuyahoga: -45,050————————————1. Cuyahoga: -6,646
2. Lucas: -13,467——————————————2. Lucas: -1,264
3. Trumbull: -12,338—————————————3. Stark: -642
4. Mahoning: -10,140————————————-4. Columbiana: -590
5. Columbiana: -5,958————————————5. Trumbull: -565
6. Stark: -4,980———————————————6. Mahoning: -533
7. Jefferson: -4,384—————————————-7. Belmont: -527
8. Ashtabula: -4,256—————————————8. Jefferson: -449
9. Clark: -4,250———————————————9. Clark: -445
10. Scioto: -4,185——————————————10. Allen: -374
11. Allen: -3,980——————————————–11. Ashtabula: -346
12. Montgomery: -3,466———————————-12. Summit: -340
13. Belmont: -3,394—————————————-13. Marion: -334
14. Richland: -3,321—————————————-14. Lawrence: -304
15. Lawrence: -2,987————————————–15. Geauga: -296
16. Erie: -2,813———————————————-16. Erie: -247
17. Sandusky: -2,426————————————–17. Ottawa: -244
18. Crawford: -2,290—————————————18. Ashland: -222
19. Carroll: -1,922——————————————-19. Sandusky: -222
20. Washington: -1,867————————————20. Ross: -218
21. Darke: -1,846——————————————–21. Washington: -200
22. Seneca: -1,567——————————————22. Athens: -192
23. Brown: -1,414——————————————–23. Darke: -186
24. Marion: -1,408——————————————-24. Carroll: -168
25. Ross: -1,398———————————————25. Scioto: -166

Franklin County continues to vastly outpace all other 87 in the state.




Cool Link: Metro Transportation Climate Impact Index

transportation climate impact index

The Transportation Climate Impact Indexmeasures how the 100 largest US metros rank in terms of climate impact from everything from walkability to vehicles miles.

Ohio cities don’t rank highly, unfortunately. Columbus clocks in at #85, with its worst ranking coming from how much its residents drive. Columbus’ bus system only goes so far, and without any other form of transit, much of the area is completely car-dependent.

Streetlight, which makes the rankings for the transportation climate impact index, gives an explanation on the methodology here: https://www.streetlightdata.com/2020-climate-index-methodology/