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#MakeoverMonday

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Posts tagged #MakeoverMonday

A dot-and-segment chart showing 20 Mario game titles ranked by both estimated gross revenue (steel blue dot) and units sold (burgundy dot). Titles are sorted by revenue rank, from best to worst. For most top titles, the two dots sit close together, indicating the metrics agree. Three titles stand out with long burgundy segments extending to the right: Super Mario All-Stars, Super Mario Galaxy 2, and Super Mario World 2: Yoshi's Island — all ranked much lower in revenue than their unit sales would suggest. Annotations explain that re-releases and budget pricing drove high unit counts without proportional revenue.

A dot-and-segment chart showing 20 Mario game titles ranked by both estimated gross revenue (steel blue dot) and units sold (burgundy dot). Titles are sorted by revenue rank, from best to worst. For most top titles, the two dots sit close together, indicating the metrics agree. Three titles stand out with long burgundy segments extending to the right: Super Mario All-Stars, Super Mario Galaxy 2, and Super Mario World 2: Yoshi's Island — all ranked much lower in revenue than their unit sales would suggest. Annotations explain that re-releases and budget pricing drove high unit counts without proportional revenue.

📊 #MakeoverMonday – 2026 W10 | Mario Game Sales
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🔗: stevenponce.netlify.app/data_visuali...
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#rstats | #DataFam | #dataviz | #ggplot2

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A two-panel horizontal chart showing Trump's approval ratings across 13 demographic groups. The left panel displays the net change in percentage points from Late February 2025 to February 2026, with margin of error bars (±8.6 pp). Groups with statistically significant declines are shown in blue; those within the margin of error — Age 65+, Democrats, Age 50-64, and Republicans — are shown in gray. The largest declines occurred among Age 35-49 and Latino Americans (−19 pp each), followed by Independents (−15 pp, highlighted in orange). The right panel shows February 2026 approval ratings in the same row order, revealing that steep declines do not always correspond to low current approval: Republicans dropped only −8 pp but retain 82% approval, while Independents fell sharply to just 26%. Both panels use the same row ordering — steepest decline at top — enabling direct cross-panel comparison. Source: CNN/SSRS poll, February 17–20, 2026 (n=2,496; MoE ±8.6 pp).

A two-panel horizontal chart showing Trump's approval ratings across 13 demographic groups. The left panel displays the net change in percentage points from Late February 2025 to February 2026, with margin of error bars (±8.6 pp). Groups with statistically significant declines are shown in blue; those within the margin of error — Age 65+, Democrats, Age 50-64, and Republicans — are shown in gray. The largest declines occurred among Age 35-49 and Latino Americans (−19 pp each), followed by Independents (−15 pp, highlighted in orange). The right panel shows February 2026 approval ratings in the same row order, revealing that steep declines do not always correspond to low current approval: Republicans dropped only −8 pp but retain 82% approval, while Independents fell sharply to just 26%. Both panels use the same row ordering — steepest decline at top — enabling direct cross-panel comparison. Source: CNN/SSRS poll, February 17–20, 2026 (n=2,496; MoE ±8.6 pp).

📊 #MakeoverMonday – 2026 W09 | Trump's Approval Ratings
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🔗: stevenponce.netlify.app/data_visuali...
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#rstats | #DataFam | #dataviz | #ggplot2

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Horizontal lollipop chart showing total venture funding for 14 AI startup categories from February 2025 to February 2026, grouped by layer: Foundation, Horizontal AI, Vertical AI, and Emerging & Frontier. Foundation Models & LLMs dominate at $80B — more than all other 13 categories combined — averaging ~$5,333M per startup, 28 times the average of all other categories. AI Agents & Copilots is a distant second at $13B. Most categories received under $10B.

Horizontal lollipop chart showing total venture funding for 14 AI startup categories from February 2025 to February 2026, grouped by layer: Foundation, Horizontal AI, Vertical AI, and Emerging & Frontier. Foundation Models & LLMs dominate at $80B — more than all other 13 categories combined — averaging ~$5,333M per startup, 28 times the average of all other categories. AI Agents & Copilots is a distant second at $13B. Most categories received under $10B.

📊 #MakeoverMonday – 2026 W08 | Periodic Table of AI
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🔗: stevenponce.netlify.app/data_visuali...
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#rstats | #DataFam | #dataviz | #ggplot2

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A combined dashboard showing global declines in wildlife populations from the Living Planet Index (1970–2020). A horizontal bar chart ranks eight categories by the percentage of population lost, from Latin America & the Caribbean (95% lost) to Europe & Central Asia (35% lost), with a dashed line marking the 73% global average. Below, line charts show the global trend declining from 100% to 27%, with ecosystem breakdowns revealing freshwater species (15% remaining) declined far more steeply than terrestrial (31%) or marine (44%) systems.

A combined dashboard showing global declines in wildlife populations from the Living Planet Index (1970–2020). A horizontal bar chart ranks eight categories by the percentage of population lost, from Latin America & the Caribbean (95% lost) to Europe & Central Asia (35% lost), with a dashed line marking the 73% global average. Below, line charts show the global trend declining from 100% to 27%, with ecosystem breakdowns revealing freshwater species (15% remaining) declined far more steeply than terrestrial (31%) or marine (44%) systems.

📊 #MakeoverMonday – 2026 W07 | Living Planet Index
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🔗: stevenponce.netlify.app/data_visuali...
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#rstats | #DataFam | #dataviz | #ggplot2

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Diverging bar chart of Big Mac Index changes vs US dollar, 2000-2025. Top 15 currency shifts from Israel (-78pp) to Poland (+33pp). Twelve currencies weakened (orange), three strengthened (blue). Arrows indicate direction: more expensive (left) vs cheaper (right).

Diverging bar chart of Big Mac Index changes vs US dollar, 2000-2025. Top 15 currency shifts from Israel (-78pp) to Poland (+33pp). Twelve currencies weakened (orange), three strengthened (blue). Arrows indicate direction: more expensive (left) vs cheaper (right).

📊 #MakeoverMonday – 2026 W06 | Global Big Mac Index
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🔗: stevenponce.netlify.app/data_visuali...
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#rstats | #DataFam | #dataviz | #ggplot2

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A 2d art rendition of Wizard Vandar, a character from the upcoming game DOOMTRAIN. Describes in a text box: Wizard Vandar - Great. DemonCrop is forcing face scan verification... Just another step towards capitalism ruining all the realms.

A 2d art rendition of Wizard Vandar, a character from the upcoming game DOOMTRAIN. Describes in a text box: Wizard Vandar - Great. DemonCrop is forcing face scan verification... Just another step towards capitalism ruining all the realms.

Wishlist DOOMTRAIN! store.steampowered.com/app/3741180/...

Vandar got a #makeovermonday vibe from @mbirdini!

Pizza Club defends the rights of human artists and believes genAI is harmful to human livelihoods. NO #aiart!

#antiai #citybuilder #pcgaming #indiegame

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A two-panel line chart showing the relationship between gold prices and real interest rates from 2003 to 2025. The top panel shows gold prices, indexed to 2003 at 100, rising from 100 to approximately 850 over the period. The bottom panel shows the 10-year real interest rate fluctuating between -1 percent and 3 percent. Three periods of negative real rates are highlighted with shaded bands: 2008 during the financial crisis, 2011 to 2013 following the debt ceiling crisis, and 2020 to 2022 during the pandemic response. Each shaded period corresponds to significant increases in the gold price, illustrating that gold tends to rally when real interest rates fall below zero. Annotations mark the 2008 Financial Crisis, 2020 Pandemic Response, and 2024 Rally Resumes. The chart shows an inverse relationship between real interest rates and gold prices.

A two-panel line chart showing the relationship between gold prices and real interest rates from 2003 to 2025. The top panel shows gold prices, indexed to 2003 at 100, rising from 100 to approximately 850 over the period. The bottom panel shows the 10-year real interest rate fluctuating between -1 percent and 3 percent. Three periods of negative real rates are highlighted with shaded bands: 2008 during the financial crisis, 2011 to 2013 following the debt ceiling crisis, and 2020 to 2022 during the pandemic response. Each shaded period corresponds to significant increases in the gold price, illustrating that gold tends to rally when real interest rates fall below zero. Annotations mark the 2008 Financial Crisis, 2020 Pandemic Response, and 2024 Rally Resumes. The chart shows an inverse relationship between real interest rates and gold prices.

📊 #MakeoverMonday – 2026 W05 | Gold Prices
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🔗: stevenponce.netlify.app/data_visuali...
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#rstats | #DataFam | #dataviz | #ggplot2

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Three-panel dashboard showing America's most in-demand jobs. The left panel displays "49 out of 50 states have Registered Nurse as #1." The right panel shows #2 job distribution: Retail Sales (31 states), Trucking (10 states, amber), Physician (6 states), Software (2 states, purple), and RN (1 state). Bottom panel compares Software vs. Trucking states across three metrics: prevalence (2 vs. 10 states), average wage ($125k vs. $51k), and total employment (82,260 vs. 346,870 workers). Purple and amber highlight the Software-Trucking divide; other categories are shown in gray.

Three-panel dashboard showing America's most in-demand jobs. The left panel displays "49 out of 50 states have Registered Nurse as #1." The right panel shows #2 job distribution: Retail Sales (31 states), Trucking (10 states, amber), Physician (6 states), Software (2 states, purple), and RN (1 state). Bottom panel compares Software vs. Trucking states across three metrics: prevalence (2 vs. 10 states), average wage ($125k vs. $51k), and total employment (82,260 vs. 346,870 workers). Purple and amber highlight the Software-Trucking divide; other categories are shown in gray.

📊 #MakeoverMonday – 2026 W04 | Most Posted US Jobs by State
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🔗: stevenponce.netlify.app/data_visuali...
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#rstats | #DataFam | #dataviz | #ggplot2

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A two-panel visualization showing the growth of women+ conductors on Broadway. The left panel displays a cumulative area chart from 1954 to present, showing slow early growth that accelerates sharply after 2000, reaching approximately 100 unique conductors by 2024, with an annotation noting the 50th conductor was reached in 2000. The right panel shows horizontal stacked bar charts comparing role distribution across four eras: Pre-1980 was split between Leadership (49%) and Support (46%); 1980-1999 was dominated by Support roles (84%); 2000-2019 showed more balance with Support (50%), Leadership (26%), and Supplemental (23%); and 2020+ shows the most diverse mix with Supplemental (41%), Support (34%), and Leadership (25%). Sample sizes range from 39 positions pre-1980 to 102 in 2000-2019.

A two-panel visualization showing the growth of women+ conductors on Broadway. The left panel displays a cumulative area chart from 1954 to present, showing slow early growth that accelerates sharply after 2000, reaching approximately 100 unique conductors by 2024, with an annotation noting the 50th conductor was reached in 2000. The right panel shows horizontal stacked bar charts comparing role distribution across four eras: Pre-1980 was split between Leadership (49%) and Support (46%); 1980-1999 was dominated by Support roles (84%); 2000-2019 showed more balance with Support (50%), Leadership (26%), and Supplemental (23%); and 2020+ shows the most diverse mix with Supplemental (41%), Support (34%), and Leadership (25%). Sample sizes range from 39 positions pre-1980 to 102 in 2000-2019.

📊 #MakeoverMonday – 2026 W03 | Women+ Conductors on Broadway
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🔗: stevenponce.netlify.app/data_visuali...
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#rstats | #DataFam | #dataviz | #ggplot2

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Two-panel visualization comparing housing bubble risk trajectories for 9 global cities from 2020 to 2025. Left panel: Slope chart showing dramatic divergence—Toronto, Hong Kong, and Munich fell from 1.8 to below 1.0 (teal lines), while Miami rose from 0.5 to 1.7 (grey lines). Right panel: Scatter plot of current risk score versus 5-year change, with point size reflecting magnitude of change. Cooling markets cluster in the lower-left quadrant; Hong Kong shows the most significant decline (-1.3 points).

Two-panel visualization comparing housing bubble risk trajectories for 9 global cities from 2020 to 2025. Left panel: Slope chart showing dramatic divergence—Toronto, Hong Kong, and Munich fell from 1.8 to below 1.0 (teal lines), while Miami rose from 0.5 to 1.7 (grey lines). Right panel: Scatter plot of current risk score versus 5-year change, with point size reflecting magnitude of change. Cooling markets cluster in the lower-left quadrant; Hong Kong shows the most significant decline (-1.3 points).

📊 #MakeoverMonday – 2026 W02 | The Biggest Housing Bubble Risks Globally
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🔗: stevenponce.netlify.app/data_visuali...
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#rstats | #DataFam | #dataviz | #ggplot2

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Here's my #MakeoverMonday entry for this week, about the world's tallest rollercoasters. This was all done in #Excel

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Listening to #TheAshes while finishing off my first #MakeoverMonday. This week it's the relationship between crime and deprivation in London. Done with #PowerBI.

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Area chart showing estimated crime rates per 10,000 residents across London’s income deprivation deciles, from most deprived (1) to least deprived (10). Crime rates are much higher in more deprived areas: the most deprived decile has about 1,656 crimes per 10,000 residents, which is roughly 134% higher than the least deprived decile at about 707. Rates peak around the second and third-most deprived deciles and then decline steadily toward the least deprived areas. Rates are based on equal-population estimates per decile and should be interpreted comparatively rather than as exact values.

Area chart showing estimated crime rates per 10,000 residents across London’s income deprivation deciles, from most deprived (1) to least deprived (10). Crime rates are much higher in more deprived areas: the most deprived decile has about 1,656 crimes per 10,000 residents, which is roughly 134% higher than the least deprived decile at about 707. Rates peak around the second and third-most deprived deciles and then decline steadily toward the least deprived areas. Rates are based on equal-population estimates per decile and should be interpreted comparatively rather than as exact values.

📊 #MakeoverMonday – 2025 W49 | London crimes by income deprivation decile
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🔗: stevenponce.netlify.app/data_visuali...
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#rstats | #DataFam | #dataviz | #ggplot2

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Two-panel chart showing AI model performance. The top panel displays performance cards for the six best models (Claude 4.1 Opus, Claude 4.5 Sonnet, Grok 4, Magistral Medium 7.2, GPT-5 high, and Kimi K2 0905) with their accuracy, hallucination rates, and combined scores. The bottom panel shows a scatterplot of all 18 models, with accuracy on the x-axis and hallucination rate on the y-axis, and the top 6 models labeled and highlighted. Proprietary models (blue) cluster in the high accuracy, low hallucination zone, while open-weight models (coral) show more varied performance.

Two-panel chart showing AI model performance. The top panel displays performance cards for the six best models (Claude 4.1 Opus, Claude 4.5 Sonnet, Grok 4, Magistral Medium 7.2, GPT-5 high, and Kimi K2 0905) with their accuracy, hallucination rates, and combined scores. The bottom panel shows a scatterplot of all 18 models, with accuracy on the x-axis and hallucination rate on the y-axis, and the top 6 models labeled and highlighted. Proprietary models (blue) cluster in the high accuracy, low hallucination zone, while open-weight models (coral) show more varied performance.

📊 #MakeoverMonday – 2025 W48 | Which AI Models Hallucinate the Most?
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🔗: stevenponce.netlify.app/data_visuali...
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#rstats | #DataFam | #dataviz | #ggplot2

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Two-panel chart examining cat resting behavior. Left panel: Scatter plot comparing 28 cats' resting time in summer (x-axis) versus winter (y-axis), ranging from 55-90%. Points cluster along the diagonal 'no change' line, mostly within 70-80%, indicating minimal seasonal variation. Blue points represent indoor cats, orange points represent indoor & outdoor cats. Right panel: Dot plots showing resting time by household environment. Cats in homes with children rest slightly less (~70%) than those without (~75%), while dog presence shows minimal difference. Individual cats are shown as points with mean ± SE bars overlaid.

Two-panel chart examining cat resting behavior. Left panel: Scatter plot comparing 28 cats' resting time in summer (x-axis) versus winter (y-axis), ranging from 55-90%. Points cluster along the diagonal 'no change' line, mostly within 70-80%, indicating minimal seasonal variation. Blue points represent indoor cats, orange points represent indoor & outdoor cats. Right panel: Dot plots showing resting time by household environment. Cats in homes with children rest slightly less (~70%) than those without (~75%), while dog presence shows minimal difference. Individual cats are shown as points with mean ± SE bars overlaid.

📊 #MakeoverMonday – 2025 W47 | Do cats really loaf all day?
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🔗: stevenponce.netlify.app/data_visuali...
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#rstats | #DataFam | #dataviz | #ggplot2

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Horizontal bar chart showing Kids' June 2025 Streaming Top 10 programs by total minutes viewed. Netflix dominates with four programs (shown in red): Ginny & Georgia leads at 1.43 billion minutes, followed by Squid Game (837M), Stranger Things (617M), and Alvin! and the Chipmunks (466M). Other platforms in gray include Disney+ (Bluey - 895M, Phineas and Ferb - 748M), Paramount+ (SpongeBob - 801M), Hulu (Gumball - 626M), Max/Netflix (Young Sheldon - 533M), and Peacock (Love Island USA - 473M). Notable: Several Teen/Mature-rated shows rank highly despite a 6-17 age demographic.

Horizontal bar chart showing Kids' June 2025 Streaming Top 10 programs by total minutes viewed. Netflix dominates with four programs (shown in red): Ginny & Georgia leads at 1.43 billion minutes, followed by Squid Game (837M), Stranger Things (617M), and Alvin! and the Chipmunks (466M). Other platforms in gray include Disney+ (Bluey - 895M, Phineas and Ferb - 748M), Paramount+ (SpongeBob - 801M), Hulu (Gumball - 626M), Max/Netflix (Young Sheldon - 533M), and Peacock (Love Island USA - 473M). Notable: Several Teen/Mature-rated shows rank highly despite a 6-17 age demographic.

📊 #MakeoverMonday – 2025 W46 | School’s out and the TV’s on: What kids in the U.S. watched in June
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🔗: stevenponce.netlify.app/data_visuali...
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#rstats | #DataFam | #dataviz | #ggplot2

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#datafam It has been a long time since I posted something but I'm back! For our own internal #ironviz competition I used the #MakeoverMonday dataset to visualize what % of Britons think kidult hobbies and practices are for children.

Check it out: shorturl.at/G5cfu!

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Four-panel dashboard showing US domestic terrorism trends from 1994-2024. Panel A shows total annual attacks increased 53% from early period to recent years. Panel B displays per capita rates (attacks per million people) increased 26%, demonstrating that population growth explains half the raw increase. Panel C presents smoothed trend lines by ideology, with right-wing attacks (orange line) rising from ~8 attacks in mid-2000s to ~25 in recent years, while jihadist (teal) and left-wing (light blue) attacks remain lower. Panel D shows right-wing share of total attacks, typically 60-90%, with a notable dip to ~50% in the late 2000s. Key finding: while raw attack counts rose substantially, population-adjusted rates show a more modest increase, and right-wing attacks consistently dominate throughout the entire period.

Four-panel dashboard showing US domestic terrorism trends from 1994-2024. Panel A shows total annual attacks increased 53% from early period to recent years. Panel B displays per capita rates (attacks per million people) increased 26%, demonstrating that population growth explains half the raw increase. Panel C presents smoothed trend lines by ideology, with right-wing attacks (orange line) rising from ~8 attacks in mid-2000s to ~25 in recent years, while jihadist (teal) and left-wing (light blue) attacks remain lower. Panel D shows right-wing share of total attacks, typically 60-90%, with a notable dip to ~50% in the late 2000s. Key finding: while raw attack counts rose substantially, population-adjusted rates show a more modest increase, and right-wing attacks consistently dominate throughout the entire period.

📊 #MakeoverMonday – 2025 W45 | Terrorism and Political Violence in the United States: What the Data Tells Us
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🔗: stevenponce.netlify.app/data_visuali...
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#rstats | #DataFam | #dataviz | #ggplot2

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Four-panel dashboard showing the number of living WWII veterans by state in 2025. Panel A: diverging bar chart of veterans per 100k vs US mean, with New Hampshire highest at +29.1. Panel B: lollipop chart of the top 20 states, all above the national average of 13.7 per 100k. Panel C: histogram showing right-skewed distribution, with most states under 1,000 veterans and the top 5 states holding 37% of the total. Panel D: box plots by region showing that the Northeast has the highest concentration per capita, while the South has the most states but lower median rates.

Four-panel dashboard showing the number of living WWII veterans by state in 2025. Panel A: diverging bar chart of veterans per 100k vs US mean, with New Hampshire highest at +29.1. Panel B: lollipop chart of the top 20 states, all above the national average of 13.7 per 100k. Panel C: histogram showing right-skewed distribution, with most states under 1,000 veterans and the top 5 states holding 37% of the total. Panel D: box plots by region showing that the Northeast has the highest concentration per capita, while the South has the most states but lower median rates.

📊 #MakeoverMonday – 2025 W44 | WWII Veteran Statistics
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🔗: stevenponce.netlify.app/data_visuali...
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#rstats | #DataFam | #dataviz | #ggplot2

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Bar chart showing percentage-point differences between Biden and Trump supporters on cultural issues. Blue bars extend to the right for Biden's advantages (legacy of slavery +52pp, openness +51pp, gender identity +50pp). Red bars extend left for Trump advantages (gun ownership -63pp, criminal justice -41pp, marriage priority -40pp).

Bar chart showing percentage-point differences between Biden and Trump supporters on cultural issues. Blue bars extend to the right for Biden's advantages (legacy of slavery +52pp, openness +51pp, gender identity +50pp). Red bars extend left for Trump advantages (gun ownership -63pp, criminal justice -41pp, marriage priority -40pp).

📊 #MakeoverMonday – 2025 W42 | Cultural Issues and the 2024 Election
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🔗: stevenponce.netlify.app/data_visuali...
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#rstats | #DataFam | #dataviz | #ggplot2

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Data visualization with three panels analyzing the UCI Drug Consumption dataset (N=1,884). Panel 1: Line chart showing cannabis usage peaks at 80% for ages 18-24, declining with age. Panel 2: Stacked bar charts revealing polydrug patterns, with 18-24 males showing the highest 4+ drug use. Panel 3: Bar chart demonstrating conscientiousness as a protective factor, with a 10.4 percentage point reduction in heavy use between very low and very high conscientiousness groups among high-risk individuals.

Data visualization with three panels analyzing the UCI Drug Consumption dataset (N=1,884). Panel 1: Line chart showing cannabis usage peaks at 80% for ages 18-24, declining with age. Panel 2: Stacked bar charts revealing polydrug patterns, with 18-24 males showing the highest 4+ drug use. Panel 3: Bar chart demonstrating conscientiousness as a protective factor, with a 10.4 percentage point reduction in heavy use between very low and very high conscientiousness groups among high-risk individuals.

📊 #MakeoverMonday – 2025 W41 | Drug Consumptions (UCI)
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🔗: stevenponce.netlify.app/data_visuali...
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#rstats | #DataFam | #dataviz | #ggplot2

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Two-panel chart comparing recession impacts on prime-age labor force participation (ages 25-54). The left panel shows that the 2020 recession had the steepest drop at -3.3 percentage points, compared to -1.7pp in 2001 and -1.6pp in 2008. The right panel displays recovery trajectories over 60 months: 2020 recovered fastest, exceeding pre-recession levels by +0.6pp; 2008 never recovered, remaining -1.7pp below; 2001 shows a gradual decline to -1.1pp below baseline.

Two-panel chart comparing recession impacts on prime-age labor force participation (ages 25-54). The left panel shows that the 2020 recession had the steepest drop at -3.3 percentage points, compared to -1.7pp in 2001 and -1.6pp in 2008. The right panel displays recovery trajectories over 60 months: 2020 recovered fastest, exceeding pre-recession levels by +0.6pp; 2008 never recovered, remaining -1.7pp below; 2001 shows a gradual decline to -1.1pp below baseline.

📊 #MakeoverMonday – 2025 W40 | Better things come to those who wait
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🔗: stevenponce.netlify.app/data_visuali...
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#rstats | #DataFam | #dataviz | #ggplot2

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Two-panel chart showing UK household spending inequality by income in 2024. The left panel displays spending gaps between the poorest and wealthiest households across 11 categories, with housing showing the most significant gap at 19.6 percentage points. The right panel shows distribution patterns across all five income quintiles using ridge plots. Housing costs disproportionately burden poor households, while transport spending favors wealthy households.

Two-panel chart showing UK household spending inequality by income in 2024. The left panel displays spending gaps between the poorest and wealthiest households across 11 categories, with housing showing the most significant gap at 19.6 percentage points. The right panel shows distribution patterns across all five income quintiles using ridge plots. Housing costs disproportionately burden poor households, while transport spending favors wealthy households.

📊 #MakeoverMonday – 2025 W39 | Family spending in the UK
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🔗: stevenponce.netlify.app/data_visuali...
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#rstats | #DataFam | #dataviz | #ggplot2

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Diverging bar chart showing generational differences in viewing activities as childish. Comic Books have the largest gap at +28 percentage points, with older adults more likely to see it as childish. Most activities follow this pattern, but Star Wars (-3 pts) and Disney Films (-6 pts) diverge in the opposite direction, with younger people more likely to view them as childish than older adults.

Diverging bar chart showing generational differences in viewing activities as childish. Comic Books have the largest gap at +28 percentage points, with older adults more likely to see it as childish. Most activities follow this pattern, but Star Wars (-3 pts) and Disney Films (-6 pts) diverge in the opposite direction, with younger people more likely to view them as childish than older adults.

📊 #MakeoverMonday – 2025 W38 | Which ‘kidult’ hobbies do Britons think are for children?
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🔗: stevenponce.netlify.app/data_visuali...
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#rstats | #DataFam | #dataviz | #ggplot2

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Makeover Monday—If you could transform one part of your life today, what would it be? Travel goals, mindset shift, new routine? Share below. #makeovermonday #lifegoals #travelinspiration #mytravelscout

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