Demografy is a privacy by design customer demographics prediction AI platform.
Core features: - Demographic segmentation - Demographic analytics - API integration - Data export
Key advantages: - 100% coverage of lists - Accuracy estimate before purchase - GDPR-compliance as no sensitive data is required. Demografy can work with only first names or masked last names
Use cases: - Actionable analytics about your customers to get demographic insights - Appending missing demographic data to your records for customer segmentation and targeted marketing campaigns - Enhanced personalization knowing you customer better
Unlike traditional solutions, you don’t need to know and disclose your customer or prospect addresses, emails or other sensitive information. You can provide even masked last names keeping personal data in-house. This makes Demografy privacy by design and enables you to get 100% coverage of your audience since all you need to know is names.
https://www.caliper.com/license/maptitude-license-agreement.htmhttps://www.caliper.com/license/maptitude-license-agreement.htm
Geodemographic Segmentation Data from Caliper Corporation contain demographic data in a way that is easy to visualize and interpret. We provide 8 segments and 32 subsegments for exploring the demographic makeup of neighborhoods across the country.
GapMaps GIS Data sourced from Applied Geographic Solutions includes over 40k Demographic variables across topics including estimates & projections on population, demographics, neighborhood segmentation, consumer spending, crime index & environmental risk available at census block level.
According to a survey conducted by CSP Magazine in 2019, ** percent of urban consumers stated that they are visiting convenience stores more often than they were two years ago, versus only ** percent of rural consumers and ** percent of suburban customers.
Open Government Licence 3.0http://www.nationalarchives.gov.uk/doc/open-government-licence/version/3/
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This profile is designed to accompany the Joint Strategic Needs Assessment (JSNA) chapter on Demographics, which looks at segmenting the borough’s population by their most significant health and social care need. This supplement looks at adults (aged 18 and over) instead of the overall population, because the health and social care need segments covered in this section are more common in adults.
GapMaps Panorama Segmentation Data from Applied Geographic Solutions (AGS) is built on over three decades of experience in the creation and use of geodemographic segmentation systems in the United States and Canada. Building on and integrating the existing suite of AGS modeling and analytical tools, GapMaps Panorama Segmentation Data creates actionable perspective on an increasingly complex and rapidly churning demographic landscape.
GapMaps Segmentation Data consists of sixty eight segments currently paired with the industry leading GfK MRI survey, providing the essential linkage between neighborhood demographics and consumer preferences and attitudes.
The segments include: 01 One Percenters 02 Peak Performers 03 Second City Moguls 04 Sprawl Success 05 Transitioning Affluent Families 06 Best of Both Worlds 07 Upscale Diversity 08 Living the Dream 09 Successful Urban Refugees 10 Emerging Leaders 11 Affluent Newcomers 12 Mainstream Established Suburbs 13 Cowboy Country 14 American Playgrounds 15 Comfortable Retirement 16 Spacious Suburbs 17 New American Dreams 18 Small Town Middle Managers 19 Outer Suburban Affluence 20 Rugged Individualists 21 New Suburban Style 22 Up and Coming Suburban Diversity 23 Enduring Heartland 24 Isolated Hispanic Neighborhoods 25 Hipsters and Geeks 26 High Density Diversity 27 Young Coastal Technocrats 28 Asian-Hispanic Fusion 29 Big Apple Dreamers 30 True Grit 31 Working Hispania 32 Struggling Singles 33 Nor'Easters 34 Midwestern Comforts 35 Generational Dreams 36 Olde New England 37 Faded Industrial Dreams 38 Failing Prospects 39 Second City Beginnings 40 Beltway Commuters 41 Garden Variety Suburbia 42 Rising Fortunes 43 Classic Interstate Suburbia 44 Pacific Second City 45 Northern Blues 46 Recessive Singles 47 Simply Southern 48 Tex-Mex 49 Sierra Siesta 50 Great Plains, Great Struggles 51 Boots and Brews 52 Great Open Country 53 Classic Dixie 54 Off the Beaten Path 55 Hollows and Hills 56 Gospel and Guns 57 Cap and Gown 58 Marking Time 59 Hispanic Working Poor 60 Bordertown Blues 61 Communal Living 62 Living Here in Allentown 63 Southern Small City Blues 64 Struggling Southerners 65 Forgotten Towns 66 Post Industrial Trauma 67 Starting Out 68 Rust Belt Poverty
With Versium REACH Demographic Append you will have access to many different attributes for enriching your data.
Basic, Household and Financial, Lifestyle and Interests, Political and Donor.
Here is a list of what sorts of attributes are available for each output type listed above:
Basic:
- Senior in Household
- Young Adult in Household
- Small Office or Home Office
- Online Purchasing Indicator
- Language
- Marital Status
- Working Woman in Household
- Single Parent
- Online Education
- Occupation
- Gender
- DOB (MM/YY)
- Age Range
- Religion
- Ethnic Group
- Presence of Children
- Education Level
- Number of Children
Household, Financial and Auto: - Household Income - Dwelling Type - Credit Card Holder Bank - Upscale Card Holder - Estimated Net Worth - Length of Residence - Credit Rating - Home Own or Rent - Home Value - Home Year Built - Number of Credit Lines - Auto Year - Auto Make - Auto Model - Home Purchase Date - Refinance Date - Refinance Amount - Loan to Value - Refinance Loan Type - Home Purchase Price - Mortgage Purchase Amount - Mortgage Purchase Loan Type - Mortgage Purchase Date - 2nd Most Recent Mortgage Amount - 2nd Most Recent Mortgage Loan Type - 2nd Most Recent Mortgage Date - 2nd Most Recent Mortgage Interest Rate Type - Refinance Rate Type - Mortgage Purchase Interest Rate Type - Home Pool
Lifestyle and Interests:
- Mail Order Buyer
- Pets
- Magazines
- Reading
- Current Affairs and Politics
- Dieting and Weight Loss
- Travel
- Music
- Consumer Electronics
- Arts
- Antiques
- Home Improvement
- Gardening
- Cooking
- Exercise
- Sports
- Outdoors
- Womens Apparel
- Mens Apparel
- Investing
- Health and Beauty
- Decorating and Furnishing
Political and Donor: - Donor Environmental - Donor Animal Welfare - Donor Arts and Culture - Donor Childrens Causes - Donor Environmental or Wildlife - Donor Health - Donor International Aid - Donor Political - Donor Conservative Politics - Donor Liberal Politics - Donor Religious - Donor Veterans - Donor Unspecified - Donor Community - Party Affiliation
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This factsheet breaks down Camden’s population by looking at health conditions, and then by their age, sex, ethnicity, and deprivation. Understanding the size and characteristics of each segment helps us plan healthcare resources and service delivery effectively for each group, as well as the population in general.
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For secondary analysis of C3RO data. These CSV files were generated for each disease site separately which can then be used to regression modeling. More information on this data can be found in the accompanying preprint: https://www.medrxiv.org/content/10.1101/2023.08.30.23294786v2.Original C3RO data can be found here: https://figshare.com/articles/dataset/Large-scale_crowdsourced_radiotherapy_segmentations_across_a_variety_of_cancer_sites/21074182.Version history:v2: Jan 7, 2023. Included additional column for HD95 binary data.
This forms part of Camden’s Joint Strategic Needs Assessment, focussing on the demographics of our population. This data shows breakdowns of Camden’s population by health conditions, age and sex, and by Camden ward, as supplementary information of the 2015 Camden population segmentation profile (https://opendata.camden.gov.uk/Health/Camden-Demographics-Population-Segmentation-2015/v6fr-wght). It provides the number of people, percentage of the whole population (prevalence) and Camden average for each breakdown. It only focuses on the population aged 18 and over and doesn’t show breakdowns for those diagnosed with learning disability or those aged under 65 who are diagnosed with dementia due to small numbers.
This map shows the dominant lifestyle segment in an area in 2012, based on Esri's Tapestry Segmentation system. The map displays the dominant segment's LifeMode summary group color. The "dominant" segment is most useful at at tract and block group levels.
Tapestry Segmentation, Esri's geodemographic market segmentation system, classifies U.S. neighborhoods into 65 segments based on their socioeconomic and demographic composition. For a broader view of markets, segments are grouped into 12 LifeMode Summary Groups that reflect lifestyles/life stages and 11 Urbanization Summary Groups that show levels of affluence and population density.
The geography depicts States at greater than 50m scale, Counties at 7.5m to 50m scale, Census Tracts at 200k to 7.5m scale, and Census Block Groups at less than 200k scale.
Scale Range: 1:591,657,528 down to 1:72,224
For more information on this map, including our terms of use, visit us online at http://goto.arcgisonline.com/maps/Demographics/USA_Tapestry
Open Government Licence 3.0http://www.nationalarchives.gov.uk/doc/open-government-licence/version/3/
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This note provides only a brief overview of the main points of the PSM and it should be read in conjunction with the PRISM Demand Model User Manual and with other PRISM technical documents, such as the model validation and forecasting reports, published by TfWM, which can be accessed at the following website:https://www.tfwm.org.uk/strategy/data-insight/transport-modelling/about-prism/prism-reports and the technical reports which cover the fundamentals of the model's structure, which can be found by searching for PRISM 2011 on RAND's website, such as with the following link:https://www.rand.org/search.html?query=PRISM%202011
Link to landing page referenced by identifier. Service Protocol: Link to landing page referenced by identifier. Link Function: information-- dc:identifier.
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This forms part of Camden’s Joint Strategic Needs Assessment, focussing on the demographics of our population. This data shows breakdowns of Camden’s population by health conditions, age and sex, and by Camden ward, as supplementary information of the 2015 Camden population segmentation profile (https://opendata.camden.gov.uk/Health/Camden-Demographics-Population-Segmentation-2015/v6fr-wght). It provides the number of people, percentage of the whole population (prevalence) and Camden average for each breakdown. It only focuses on the population aged 18 and over and doesn’t show breakdowns for those diagnosed with learning disability or those aged under 65 who are diagnosed with dementia due to small numbers.
https://www.statsndata.org/how-to-orderhttps://www.statsndata.org/how-to-order
The Aging Population Services market has emerged as a critical sector in response to the growing global demographic shift towards an older population. As life expectancy increases and birth rates decline, an estimated 1.4 billion people worldwide will be aged 60 and over by 2030. This demographic change is exerting
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Pandemics such as Covid-19 pose tremendous public health communication challenges in promoting protective behaviours, vaccination, and educating the public about risks. Segmenting audiences based on attitudes and behaviours is a means to increase the precision and potential effectiveness of such communication. The present study reports on such an audience segmentation effort for the population of England, sponsored by the United Kingdom Health Security Agency (UKHSA) and involving a collaboration of market research and academic experts. A cross-sectional online survey was conducted between 4 and 24 January 2022 with 5525 respondents (5178 used in our analyses) in England using market research opt-in panel. An additional 105 telephone interviews were conducted to sample persons without online or smartphone access. Respondents were quota sampled to be demographically representative. The primary analytic technique was k means cluster analysis, supplemented with other techniques including multi-dimensional scaling and use of respondent ‐ as well as sample-standardized data when necessary to address differences in response set for some groups of respondents. Identified segments were profiled against demographic, behavioural self-report, attitudinal, and communication channel variables, with differences by segment tested for statistical significance. Seven segments were identified, including distinctly different groups of persons who tended toward a high level of compliance and several that were relatively low in compliance. The segments were characterized by distinctive patterns of demographics, attitudes, behaviours, trust in information sources, and communication channels preferred. Segments were further validated by comparing the segmentation variable versus a set of demographic variables as predictors of reported protective behaviours in the past two weeks and of vaccine refusal; the demographics together had about one-quarter the effect size of the single seven-level segment variable. With respect to managerial implications, different communication strategies for each segment are suggested for each segment, illustrating advantages of rich segmentation descriptions for understanding public health communication audiences. Strengths and weaknesses of the methods used are discussed, to help guide future efforts.
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The datasets contain RGB photos of Scots pine seedlings of three populations from two different ecotypes originating in the Czech Republic:Plasy - lowland ecotype,Trebon - lowland ecotype,Decin - upland ecotype.These photos were taken in three different periods (September 10th 2021, October 23rd 2021, January 22nd 2022).File dataset_for_YOLOv7_training.zip contains image data with annotations for training YOLOv7 segmentation model (training and validation sets)The dataset also contains a table with information on individual Scots pine seedlings:affiliation to parent tree (mum)affiliation to population (site)row and column in which the seedling was grown (row, col)affiliation to the planter in which the seedling was grown (box)mean RGB values of pine seedling in three different periods (B_september, G_september, R_september B_october, G_october, R_october, B_january, G_january, R_january)mean HSV values of pine seedling in three different periods (H_september, S_september, V_september, H_october, S_october, V_october, H_january, S_january, V_january)
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Dataset Description
- Customer Demographics: Includes FullName, Gender, Age, CreditScore, and MonthlyIncome. These variables provide a demographic snapshot of the customer base, allowing for segmentation and targeted marketing analysis.
- Geographical Data: Comprising Country, State, and City, this section facilitates location-based analytics, market penetration studies, and regional sales performance.
- Product Information: Details like Category, Product, Cost, and Price enable product trend analysis, profitability assessment, and inventory optimization.
- Transactional Data: Captures the customer journey through SessionStart, CartAdditionTime, OrderConfirmation, OrderConfirmationTime, PaymentMethod, and SessionEnd. This rich temporal data can be used for funnel analysis, conversion rate optimization, and customer behavior modeling.
- Post-Purchase Details: With OrderReturn and ReturnReason, analysts can delve into return rate calculations, post-purchase satisfaction, and quality control.
Types of Analysis
- Descriptive Analytics: Understand basic metrics like average monthly income, most common product categories, and typical credit scores.
- Predictive Analytics: Use machine learning to predict credit risk or the likelihood of a purchase based on demographics and session activity.
- Customer Segmentation: Group customers by demographics or purchasing behavior to tailor marketing strategies.
- Geospatial Analysis: Examine sales distribution across different regions and optimize logistics. Time Series Analysis: Study the seasonality of purchases and session activities over time.
- Funnel Analysis: Evaluate the customer journey from session start to order confirmation and identify drop-off points.
- Cohort Analysis: Track customer cohorts over time to understand retention and repeat purchase patterns.
- Market Basket Analysis: Discover product affinities and develop cross-selling strategies.
Curious about how I created the data? Feel free to click here and take a peek! 😉
📊🔍 Good Luck and Happy Analysing 🔍📊
Data-driven segmentation methods for population segmentation based on healthcare utilization
GEOLIFESTYLE INTELLIGENCE: Uncover Lifestyle Patterns with Geospatial Precision
Our demographic datasets include rich geo-spatial attributes that power hyper-local segmentation, regional risk scoring, and location-driven behavioral insights — essential for growth in financial services.
Demografy is a privacy by design customer demographics prediction AI platform.
Core features: - Demographic segmentation - Demographic analytics - API integration - Data export
Key advantages: - 100% coverage of lists - Accuracy estimate before purchase - GDPR-compliance as no sensitive data is required. Demografy can work with only first names or masked last names
Use cases: - Actionable analytics about your customers to get demographic insights - Appending missing demographic data to your records for customer segmentation and targeted marketing campaigns - Enhanced personalization knowing you customer better
Unlike traditional solutions, you don’t need to know and disclose your customer or prospect addresses, emails or other sensitive information. You can provide even masked last names keeping personal data in-house. This makes Demografy privacy by design and enables you to get 100% coverage of your audience since all you need to know is names.