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zcta_id
stringlengths
5
5
acs_total_pop_moe
float64
2
5.76k
acs_median_age_moe
float64
0.1
107
acs_median_home_value_moe
float64
916
1.44M
acs_median_rent_moe
float64
2
2.62k
acs_median_year_built_moe
float64
1
176
acs_median_hh_income_moe
float64
252
226k
acs_gini_index_moe
float64
0
23.7
acs_mean_commute_min_moe
float64
1
3.12k
acs_pct_white_moe
float64
0
650
acs_pct_black_moe
float64
0
1.4k
acs_pct_asian_moe
float64
0
1.4k
acs_pct_hispanic_moe
float64
0
1.4k
acs_pct_bachelors_moe
float64
0
1.4k
acs_pct_under_18_moe
float64
0
1.4k
acs_pct_female_moe
float64
0
1.4k
acs_pct_veterans_moe
float64
0
1k
acs_pct_foreign_born_moe
float64
0
1.4k
acs_pct_english_only_moe
float64
0
553
acs_pct_drive_alone_moe
float64
0
1.3k
acs_pct_transit_moe
float64
0
1.3k
acs_pct_wfh_moe
float64
0
1.3k
acs_pct_owner_occupied_moe
float64
0
1.3k
acs_pct_renter_occupied_moe
float64
0
1.5k
acs_pct_vacant_moe
float64
0
1.3k
acs_pct_below_poverty_moe
float64
0
1k
acs_pct_food_stamps_moe
float64
0
1.5k
acs_unemployment_rate_moe
float64
0
1.3k
acs_pct_graduate_moe
float64
0.29
2.42k
acs_pct_walk_bike_moe
float64
0.11
1.84k
acs_pct_no_vehicle_moe
float64
0.22
2.12k
acs_pct_no_insurance_moe
float64
0.23
2.42k
has_acs_moe
bool
2 classes
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false
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End of preview. Expand in Data Studio

GeoRSCT

A geospatial regression benchmark for evaluating representation–solver compatibility.

GeoRSCT is a benchmark and evaluation framework for studying when geospatial model performance reflects solver quality versus target difficulty, spatial leakage, aggregation effects, scale sensitivity, or representation–solver mismatch.

This initial public release (version 23.0.2) includes 31,789 U.S. ZIP Code Tabulation Areas (ZCTAs), 63 solver-usable input features, 27 regression targets spanning health, socioeconomic, and environmental domains, simplified ZCTA geometries, coverage flags, uncertainty sidecars, and three geography-aware evaluation protocols.

The 63 solver-usable features include:

  1. 33 ACS 2022 5-Year features describing demographic, economic, housing, and social characteristics.
  2. 14 spatial-lag ACS features computed as queen-contiguity weighted neighbor means.
  3. 16 geospatial enrichment features covering social vulnerability, flood exposure, hospital/pharmacy access, and drive-time context.

The GeoRSCT data pipeline, build scripts, and validation notebooks are maintained in the companion GitHub repository at https://github.com/NextShiftConsulting/georsct.

Theoretical Foundation

GeoRSCT is the geospatial benchmark artifact for Representation–Solver Compatibility Theory (RSCT).

The underlying RSCT theory is introduced in:

Rudolph A. Martin. Intelligence as Representation-Solver Compatibility: A General Theory of Representation-Dependent Reasoning. Preprint, March 3, 2026. Zenodo | SSRN

RSCT argues that problem difficulty is not intrinsic to the problem alone. Instead, observed performance depends on the relationship among the problem, the encoding, and the solver:

D = D(P, E, S)

GeoRSCT applies that theory to geospatial regression. The benchmark is designed to help determine whether observed performance reflects solver quality, target difficulty, spatial leakage, aggregation effects, scale sensitivity, or representation–solver incompatibility.

Dataset Summary

GeoRSCT is an evaluation-ready ZCTA-level benchmark derived from public geospatial, public-health, socioeconomic, infrastructure, and environmental data sources. It is not a mirror of CDC PLACES. Instead, it curates 27 regression targets from multiple sources, 63 solver-usable input features, ZCTA boundary geometries, coverage flags, uncertainty sidecars, and three fixed evaluation split protocols for studying spatial generalization, target recoverability, and representation–solver compatibility.

GeoRSCT is designed for evaluation diagnosis, not only model ranking. A model score on this benchmark should be interpreted in relation to the target, the representation, the spatial split, and the solver family.

Property Value
Version 23.0.2
ZCTAs 31,789
Main table columns 106 analytic columns without geometry; 107 with geometry
Solver-usable input features 63
ACS features 33 ACS 2022 5-Year features
Spatial-lag features 14 queen-contiguity ACS neighbor-mean features
Geospatial enrichment features 16 SVI, flood, healthcare-access, and drive-time context features
Target tasks 27
Health targets 21 CDC PLACES 2023 estimates
Socioeconomic targets 3 ACS-derived targets (income, home value, population density)
Environmental targets 3 physical/remote-sensing targets (night lights, elevation, tree cover)
Evaluation protocols 3 geography-aware protocols
Sidecar uncertainty files CDC PLACES confidence intervals; ACS margins of error
CRS EPSG:4326 / WGS 84

What GeoRSCT Is For

Use GeoRSCT to study:

  1. Whether a solver generalizes across geography.
  2. Whether target difficulty dominates solver ranking.
  3. Whether spatially structured splits change conclusions relative to random splits.
  4. Whether a representation makes useful signal recoverable for a solver.
  5. Whether benchmark scores reflect solver quality or geospatial artifacts.
  6. Whether enriched geographic context changes recoverability relative to ACS-only baselines.
  7. Whether uncertainty sidecars affect evaluation conclusions when margins of error or confidence intervals are incorporated.

GeoRSCT should not be interpreted as a leaderboard-only benchmark. Its primary purpose is to help evaluate what a geospatial score actually means.

Evaluation Claims Supported

GeoRSCT supports claims about:

  • geospatial regression performance under fixed geography-aware splits;
  • target-level difficulty variation across health, socioeconomic, and environmental tasks;
  • solver-family behavior under common ZCTA-level input representations;
  • differences between county holdout, state holdout, and county-to-ZCTA super-resolution protocols;
  • representation–solver compatibility under administratively aggregated U.S. geography;
  • differences between ACS-only representations and expanded geospatial context representations;
  • uncertainty-aware analysis when users explicitly incorporate the CDC confidence interval and ACS margin-of-error sidecars.

GeoRSCT does not support universal claims about global geospatial generalization, individual-level health prediction, causal inference, public-health surveillance deployment, clinical decision-making, or fairness outcomes for specific communities without additional validation.

Why Geography-Aware Evaluation Matters

Geospatial rows are not independent examples. Nearby ZCTAs often share demographics, infrastructure, environmental exposure, housing markets, public-health patterns, and regional history. Random splits can therefore leak geographic information from training to test data.

GeoRSCT uses fixed geography-aware protocols because the central question is not only whether a model predicts well, but whether its performance reflects transferable structure rather than spatial proximity, administrative aggregation, scale effects, or target difficulty.

Files

File Size Description
georsct_simplified_001.geoparquet Full v23.0.2 dataset with simplified ZCTA boundary polygons
georsct_table.parquet Same data without geometry for lightweight tabular use
cdc_places_ci.parquet CDC PLACES 95% confidence intervals for 21 health targets; joins on zcta_id
zcta_acs_margins_of_error.parquet ACS margins of error for ACS features; joins on zcta_id
georsct_schema.json Column metadata, data types, missing-value counts, and summary statistics
build_manifest.json Build provenance and dataset statistics, generated by the GeoRSCT pipeline
georsct_checksums.sha256 SHA-256 checksums for all files
croissant.json MLCommons Croissant metadata for dataset discovery and machine-readable schema
load_georsct.py Helper functions for loading, splitting, validating, and filtering by coverage
quickstart.py Download verification and toy baseline
GitHub repository Source code, pipeline, and validation notebooks at https://github.com/NextShiftConsulting/georsct

Replace the size placeholders after the final v23.0.2 files are uploaded.

Field Schema Overview

GeoRSCT is distributed as a row-per-ZCTA tabular benchmark (31,789 rows, one per 2020-vintage ZCTA in CONUS). ZCTAs are Census Bureau statistical areas that approximate USPS ZIP code service areas; multiple ZIP codes can map to the same ZCTA, and the mapping is not one-to-one. Each row includes identifiers, centroid coordinates, ACS input features, spatial-lag features, geospatial enrichment features, target labels, coverage flags, geography-aware split assignments, and optional geometry.

Field group Example columns Type Description
Identifier fields zcta_id, state_fips, county_fips string Geographic identifiers used for joining, grouping, and split construction
Location fields latitude, longitude numeric ZCTA centroid coordinates in EPSG:4326
ACS input features acs_total_pop, acs_median_age, acs_pct_below_poverty, ... numeric 33 American Community Survey 2022 5-Year features
Spatial-lag features lag_acs_total_pop, lag_acs_median_age, lag_acs_median_home_value, ... numeric 14 queen-contiguity weighted neighbor means computed from ACS features
SVI enrichment features svi_socioeconomic, svi_household_disability, svi_minority_language, svi_housing_transport, svi_overall numeric CDC/ATSDR Social Vulnerability Index context features
Flood enrichment features flood_pct_zone_a, flood_pct_zone_x500, flood_pct_zone_x numeric FEMA NFHL flood-zone area percentages
Access enrichment features hifld_n_hospitals, hifld_nearest_hospital_km, hifld_n_pharmacies, ... numeric HIFLD 2022 hospital, pharmacy, bed-count, and trauma-center access features
Drive-time enrichment features drive_min_to_nearest_hospital, drive_min_to_county_centroid numeric OSRM road-network travel-time context
Health targets target_diabetes, target_obesity, target_smoking, ... numeric 21 CDC PLACES 2023 model-based ZCTA health estimates
Socioeconomic targets target_income, target_home_value, target_population_density numeric ACS-derived socioeconomic regression targets
Environmental targets target_night_lights, target_elevation, target_tree_cover numeric Remote-sensing and physical-environment regression targets
Coverage flags has_cdc_places, has_income, has_home_value, has_cdc_ci boolean Flags indicating whether target families and CDC confidence intervals are available
Evaluation splits split_imputation, split_extrapolation, split_superres categorical Fixed geography-aware split assignments
Geometry geometry polygon Simplified ZCTA boundary geometry, included only in the GeoParquet file

For complete column names, data types, missing-value counts, and summary statistics, see georsct_schema.json.

Getting Started

1. Install dependencies

pip install pandas pyarrow scikit-learn

# Optional, for geometry:
pip install geopandas pyogrio

2. Verify your download

python quickstart.py

This checks file integrity using SHA-256 checksums, validates the data, verifies row counts and split assignments, and runs a toy Ridge baseline on diabetes prediction to confirm the benchmark works end to end.

3. Load and use the lightweight table

from load_georsct import load_georsct, get_split, feature_columns, target_columns

df = load_georsct("georsct_table.parquet")

# Pass target= to auto-drop rows where that target is missing.
train, val, test = get_split(
    df,
    protocol="imputation",
    fold=1,
    target="target_diabetes",
)

X_train = train[feature_columns(df)]
y_train = train["target_diabetes"]

By default, feature_columns(df) should return the 63 solver-usable v23.0.2 features: 33 ACS features, 14 spatial-lag features, and 16 enrichment features. To reproduce the original v23.001 ACS-only baseline, use only columns beginning with acs_.

4. Load with geometry

geo = load_georsct("georsct_simplified_001.geoparquet")
geo.plot(column="target_obesity", legend=True)

5. Load uncertainty sidecars

import pandas as pd

main = pd.read_parquet("georsct_table.parquet")
cdc_ci = pd.read_parquet("cdc_places_ci.parquet")
acs_moe = pd.read_parquet("zcta_acs_margins_of_error.parquet")

main_with_ci = main.merge(cdc_ci, on="zcta_id", how="left")
main_with_moe = main.merge(acs_moe, on="zcta_id", how="left")

The sidecars are optional. They are provided for uncertainty-aware analysis and do not need to be loaded for standard benchmark baselines.

Handling Missing Values

Not all 31,789 ZCTAs have all 27 targets. When you pick a target, some rows may have NaN. You do not need to pre-filter the whole dataset; just handle missing values for your chosen target.

# Option A: let get_split handle it.
train, val, test = get_split(
    df,
    protocol="imputation",
    fold=1,
    target="target_diabetes",
)

# Option B: manual dropna.
train = train.dropna(subset=["target_diabetes"])

Coverage flags tell you which targets are affected:

Flag Targets affected when False
has_cdc_places All 21 target_* health columns
has_income target_income
has_home_value target_home_value
has_cdc_ci CDC PLACES confidence interval columns in cdc_places_ci.parquet

Environmental and physical-context targets (target_elevation, target_tree_cover, target_night_lights, target_population_density) have no missing values.

ACS input features have some missing values in median-value columns. See georsct_schema.json for exact counts. Handle these using your model's missing-value strategy, such as imputation, mean fill, or a model that handles missing values natively.

ACS margins of error are provided in the sidecar file zcta_acs_margins_of_error.parquet for uncertainty-aware analysis. They are not automatically propagated into benchmark scores unless the user explicitly incorporates them.

CDC PLACES confidence intervals are provided in cdc_places_ci.parquet for the 21 health targets. These join to the main table on zcta_id.

Splitting Without the Helper

import pandas as pd

df = pd.read_parquet("georsct_table.parquet")

target = "target_diabetes"
df_clean = df.dropna(subset=[target])

# Imputation protocol, fold 1.
train = df_clean[~df_clean["split_imputation"].isin(["valid1", "test"])]
val = df_clean[df_clean["split_imputation"] == "valid1"]
test = df_clean[df_clean["split_imputation"] == "test"]

feature_cols = [
    c for c in df_clean.columns
    if c.startswith("acs_")
    or c.startswith("lag_acs_")
    or c.startswith("svi_")
    or c.startswith("flood_")
    or c.startswith("hifld_")
    or c.startswith("drive_min_")
]

For an ACS-only baseline, use:

acs_only_cols = [c for c in df_clean.columns if c.startswith("acs_")]

Tasks

Health Targets: CDC PLACES 2023

The 21 health targets are CDC PLACES model-based small-area estimates derived from BRFSS survey data using multilevel regression and poststratification. These are modeled estimates, not direct measurements.

Target Description
target_annual_checkup Adults with annual checkup (%)
target_arthritis Adults with arthritis (%)
target_asthma Adults with current asthma (%)
target_binge_drinking Adults who binge drink (%)
target_bp_medicated Adults taking blood pressure medication (%)
target_cancer Adults ever told they had cancer (%)
target_cholesterol_screening Adults with cholesterol screening (%)
target_chronic_kidney_disease Adults with chronic kidney disease (%)
target_copd Adults with COPD (%)
target_coronary_heart_disease Adults with coronary heart disease (%)
target_dental_visit Adults with dental visit (%)
target_diabetes Adults with diabetes (%)
target_high_blood_pressure Adults with high blood pressure (%)
target_high_cholesterol Adults with high cholesterol (%)
target_mental_health_not_good Adults with frequent mental distress (%)
target_obesity Adults with obesity (%)
target_physical_health_not_good Adults with frequent physical distress (%)
target_physical_inactivity Adults with no leisure-time physical activity (%)
target_sleep_less_7hr Adults sleeping less than 7 hours (%)
target_smoking Adults who currently smoke (%)
target_stroke Adults ever had stroke (%)

Socioeconomic Targets

Target Source Description
target_income ACS 2022 Median household income ($)
target_home_value ACS 2022 Median home value ($)
target_population_density Census 2020 Population per square kilometer

Environmental Targets

Target Source Description
target_night_lights VIIRS NASA/NOAA Mean nighttime radiance, log10 nW/cm²/sr
target_elevation USGS NED Mean elevation, meters
target_tree_cover Hansen GFC Mean tree canopy cover (%)

Input Features

GeoRSCT v23.0.2 includes 63 solver-usable input features.

1. ACS Features

The 33 ACS features are prefixed with acs_. They include demographic, economic, housing, transportation, and social characteristics at the ZCTA level.

These features are the default ACS-only encoder/input representation and remain useful for controlled baselines.

2. Spatial-Lag Features

The 14 spatial-lag features are prefixed with lag_acs_. They are computed as queen-contiguity weighted neighbor means over selected ACS fields.

These are spatial lags, not time lags. They encode neighboring-area context, not temporal history.

3. Geospatial Enrichment Features

The 16 enrichment features include:

Feature family Example columns Interpretation
SVI svi_socioeconomic, svi_overall Social vulnerability context
Flood flood_pct_zone_a, flood_pct_zone_x500, flood_pct_zone_x FEMA flood-zone exposure
HIFLD access hifld_n_hospitals, hifld_nearest_hospital_km, hifld_n_pharmacies HIFLD 2022 healthcare infrastructure and access
Drive time drive_min_to_nearest_hospital, drive_min_to_county_centroid Road-network access context

The expanded v23.0.2 feature set is intended for stronger geospatial solver evaluation and representation–solver compatibility experiments. Reported benchmark comparisons should document whether they use ACS-only features or the full 63-feature representation.

Evaluation Protocols

GeoRSCT includes three fixed protocols that test different aspects of spatial generalization.

1. Imputation: County Holdout

Column: split_imputation
Values: valid1 through valid5, test

This protocol uses 5-fold validation with county-level holdout. It tests geographic interpolation: can the model predict ZCTAs in unseen counties when other counties are observed?

2. Extrapolation: State Holdout

Column: split_extrapolation
Values: valid1 through valid4, test

This protocol uses state-level holdout. It tests distribution shift: can the model generalize to regions with different demographic and geographic characteristics?

3. Super-Resolution: County to ZCTA

Column: split_superres
Values: train, test

This protocol trains on county-aggregated labels and predicts ZCTA-level values. It tests within-county heterogeneity recovery: can the model disaggregate coarse spatial signals?

Why Fixed Geography-Aware Splits?

The splits are geographically structured, not random. This is deliberate:

  • Comparability: Everyone evaluates on the same held-out ZCTAs.
  • Spatial leakage prevention: Random splits can leak geographic information through nearby places.
  • Test set integrity: The test fold is reserved for final evaluation. Use validation folds for model selection and hyperparameter tuning.

If you need custom splits for your own experiments, the underlying data supports them. But if you report GeoRSCT benchmark results, use the provided splits so others can reproduce and compare.

from sklearn.model_selection import train_test_split
import pandas as pd

df = pd.read_parquet("georsct_table.parquet")

train, test = train_test_split(df, test_size=0.2, random_state=42)
train, val = train_test_split(train, test_size=0.1, random_state=42)

Coverage

Not all ZCTAs have all 27 targets. Coverage flags indicate availability:

Flag Meaning
has_cdc_places CDC PLACES target values are available
has_income ACS income target is available
has_home_value ACS home-value target is available
has_cdc_ci CDC PLACES confidence intervals are available in the sidecar file

Known target coverage from the initial release remains:

Flag True False Reason for missing
has_cdc_places 31,529 (99.2%) 260 (0.8%) CDC PLACES does not model these ZCTAs
has_income 31,471 (99.0%) 318 (1.0%) ACS suppression or missing estimate
has_home_value 31,244 (98.3%) 545 (1.7%) ACS suppression or few owner-occupied units

Environmental and physical-context targets (target_elevation, target_tree_cover, target_night_lights, target_population_density) have 100% coverage.

Missing values are stored as NaN in the parquet files. Use coverage flags to filter evaluation sets when needed.

Geometry

ZCTA boundary polygons are derived from Census TIGER/Line 2022, reprojected to EPSG:4326 and simplified with 0.001-degree tolerance while preserving topology. The table parquet omits geometry for lightweight use.

Use the original Census TIGER/Line files for high-precision cartographic or legal boundary analysis.

Data Sources and Licensing

All source data is public domain or open license:

Source License URL
CDC PLACES 2023 Public domain https://www.cdc.gov/places/
ACS 2022 5-Year Public domain https://data.census.gov/
CDC/ATSDR SVI 2022 Public domain https://www.atsdr.cdc.gov/placeandhealth/svi/
FEMA NFHL Public domain https://www.fema.gov/flood-maps/national-flood-hazard-layer
DHS HIFLD 2022 Public domain https://hifld-geoplatform.hub.arcgis.com/
VIIRS Nighttime Lights Public domain https://eogdata.mines.edu/products/vnl/
USGS National Elevation Dataset Public domain https://www.usgs.gov/the-national-map-data-delivery
Hansen Global Forest Change CC-BY-4.0 https://glad.earthengine.app/view/global-forest-change
Census TIGER/Line 2022 Public domain https://www.census.gov/geographies/mapping-files/time-series/geo/tiger-line-file.html
OpenStreetMap / OSRM-derived drive-time context ODbL data / OSRM software license https://www.openstreetmap.org/ and https://project-osrm.org/

If using or redistributing the OSRM-derived drive-time features, preserve appropriate OpenStreetMap attribution and verify that downstream use complies with OpenStreetMap data licensing requirements.

Related Resources

  • RSCT theory preprint: Rudolph A. Martin, Intelligence as Representation-Solver Compatibility: A General Theory of Representation-Dependent Reasoning (2026). Zenodo | SSRN
  • HHS/CDC PLACES ZCTA GIS-friendly datasets: official source releases for CDC PLACES ZCTA estimates.
  • PLACES on Data.gov: official CDC/HHS PLACES ZCTA data release.

GeoRSCT differs from these source releases by packaging a curated multi-target regression benchmark with fixed split assignments, ACS encoder features, spatial-lag context, geospatial enrichment features, environmental and socioeconomic targets beyond PLACES, simplified ZCTA geometries, coverage flags, uncertainty sidecars, and evaluation metadata designed for representation–solver compatibility experiments.

Data Integrity Validation

The 21 CDC PLACES health targets were cross-validated against the official HHS/CDC PLACES ZCTA release.

Check Result
Value match: 21 columns over 31,529 common ZCTAs 100% exact match, rho = 1.0, max_diff = 0.0
260 missing-CDC ZCTAs where has_cdc_places=False All absent from HHS release
ZCTA ID validity All GeoRSCT ZCTAs appear in HHS or are documented missing-CDC

Full methodology and results are provided in VALIDATION_CROSS_CHECK.md and validation_report.json when included in the repository.

Dataset Creation

Curation Rationale

GeoRSCT was created to provide a standardized evaluation benchmark for geospatial regression and representation–solver compatibility studies. Existing public datasets such as CDC PLACES and ACS are released as source data, not as evaluation-ready artifacts. Researchers working on geospatial prediction must independently download, clean, join, and split these sources, which introduces inconsistencies that make cross-paper comparison difficult.

GeoRSCT packages this pipeline into a single reproducible artifact with fixed geography-aware evaluation protocols, expanded geospatial context features, and optional uncertainty sidecars.

All build steps, joins, and validation checks for this initial public release are specified in the open-source pipeline in the GeoRSCT GitHub repository (https://github.com/NextShiftConsulting/georsct), so the benchmark can be regenerated and audited end to end.

Source Data

All source data is produced by U.S. federal agencies or established research programs:

  • CDC PLACES 2023: Model-based small-area health estimates at the ZCTA level, derived from the Behavioral Risk Factor Surveillance System using multilevel regression and poststratification. Produced by the CDC Division of Population Health.
  • American Community Survey 2022 5-Year Estimates: Demographic, economic, housing, and social characteristics from the U.S. Census Bureau's ongoing household survey.
  • CDC/ATSDR Social Vulnerability Index 2022: Social vulnerability context measures used as enrichment features.
  • FEMA National Flood Hazard Layer: Flood-zone polygons used to estimate ZCTA area fractions in selected flood-risk categories.
  • DHS HIFLD 2022 healthcare infrastructure data: 8,013 hospitals (7,634 open) from HIFLD Open Data 2022 snapshot. Hospital, pharmacy, bed-count, and trauma-center access context.
  • OSRM / OpenStreetMap-derived routing: Drive-time context to nearest hospital and county centroid.
  • VIIRS Nighttime Lights: Satellite-derived nighttime radiance composites from the Visible Infrared Imaging Radiometer Suite.
  • USGS National Elevation Dataset: Digital elevation model from the U.S. Geological Survey.
  • Hansen Global Forest Change: Satellite-derived tree canopy cover estimates from Landsat imagery, produced by the University of Maryland.
  • Census TIGER/Line 2022: ZCTA boundary shapefiles from the U.S. Census Bureau.

Annotations

No human annotation was performed for this benchmark. All target labels are one of the following:

  • Model-based estimates: 21 CDC PLACES health measures derived from BRFSS survey data via multilevel regression and poststratification.
  • Survey aggregates: ACS income and home value estimates.
  • Remote-sensing or physical-context measurements: elevation, tree cover, nighttime lights, and population density.

Personal and Sensitive Information

This dataset contains no individual-level data. All values are ZCTA-level aggregates. CDC PLACES estimates are modeled from survey data that has already been anonymized and aggregated. ACS estimates are published by the Census Bureau with disclosure avoidance applied. No personally identifiable information is present or recoverable from the benchmark.

Considerations for Using the Data

Social Impact

GeoRSCT enables research on geospatial health prediction, spatial generalization, target difficulty, and representation–solver compatibility. Such research could support better evaluation methodology for public-health resource allocation, health-equity analysis, epidemiological modeling, and geospatial machine learning.

However, predictions from models trained on this data should not be used as substitutes for actual health surveillance, clinical decision-making, causal policy analysis, or allocation decisions without additional validation and domain review.

Discussion of Biases

  • BRFSS sampling bias: CDC PLACES labels are derived from a telephone survey using landline and cell-phone respondents. Populations with lower phone access may be underrepresented in the underlying BRFSS data, though multilevel regression and poststratification partially mitigate this.
  • ACS non-response and uncertainty: ACS estimates for small ZCTAs can have wide margins of error. ACS margins of error are provided as a sidecar, but benchmark baselines do not automatically propagate them unless explicitly stated.
  • Geographic coverage bias: Some ZCTAs are not modeled by CDC PLACES. These are flagged with has_cdc_places=False, but their exclusion means the health-target subset slightly underrepresents the smallest and most unusual communities.
  • Temporal snapshot: The benchmark reflects a single time period. ACS features are based on the 2018–2022 5-Year Estimates, while CDC PLACES 2023 incorporates BRFSS survey years used by that release.
  • Aggregation bias: ZCTA-level values may hide within-ZCTA variation. Results may change under different spatial units such as counties, census tracts, or grid cells.
  • Target-source dependence: The 21 health targets share a single source and methodology, so cross-task similarities may partly reflect shared modeling assumptions.
  • Spatial-lag interpretation risk: Spatial-lag features encode neighboring-area context and should not be treated as temporal lags. They are useful for spatial modeling but must be documented clearly to avoid confusion with forecasting or leakage claims.
  • Derived-feature uncertainty: Enrichment features such as healthcare access, flood exposure, and drive time are derived features. Their precision depends on source-data currency, geocoding quality, routing assumptions, and spatial overlay choices.

Known Limitations

  1. CDC PLACES labels are modeled estimates, not direct measurements. Cross-task correlations are partially methodological, not only epidemiological.
  2. Uncertainty sidecars are optional. ACS margins of error and CDC confidence intervals are provided, but benchmark baselines do not automatically propagate them unless explicitly stated.
  3. Most targets share one source. 21 of 27 tasks come from CDC PLACES, so apparent multi-task structure may reflect shared source methodology.
  4. Geometry is simplified. The 0.001-degree simplification reduces file size but is not intended for high-precision boundary analysis.
  5. U.S.-only coverage. Results may not generalize to other countries with different health systems, demographics, governance, and geographic data infrastructure.
  6. ZCTA-level scope. ZCTAs are useful but imperfect administrative/geographic units. They should not be treated as the unique or “true” geography of the underlying phenomena.
  7. Low performance is not automatically solver failure. It may reflect target difficulty, feature insufficiency, aggregation effects, spatial leakage, or measurement noise.
  8. Spatial-lag features are not temporal features. They represent neighbor context and must be interpreted as such.
  9. Enrichment features are not causal controls. They provide additional context but should not be interpreted as proving causal mechanisms.

Additional Information

Dataset Curators

GeoRSCT was curated by Next Shift Consulting as part of the RSCT (Representation–Solver Compatibility Theory) research program.

Licensing

GeoRSCT is released under CC-BY-4.0.

Source License Notes
CDC PLACES 2023 Public domain under 17 USC 105 U.S. government work. Data.gov may list ODbL as a platform default.
ACS 2022 5-Year Public domain under 17 USC 105 U.S. Census Bureau, U.S. government work.
CDC/ATSDR SVI 2022 Public domain under 17 USC 105 U.S. government work.
FEMA NFHL Public domain under 17 USC 105 U.S. government work.
DHS HIFLD 2022 Public domain under 17 USC 105 U.S. government work. HIFLD Open Data 2022 snapshot.
VIIRS Nighttime Lights Public domain under 17 USC 105 NASA/NOAA, U.S. government work.
USGS National Elevation Dataset Public domain under 17 USC 105 U.S. Geological Survey, U.S. government work.
Census TIGER/Line 2022 Public domain under 17 USC 105 U.S. Census Bureau, U.S. government work.
Hansen Global Forest Change CC-BY-4.0 University of Maryland. Most restrictive source license.
OpenStreetMap-derived routing features ODbL attribution may apply Preserve appropriate OSM attribution for derived routing context.

Why CC-BY-4.0: Most source data are U.S. federal government works, which are public domain under 17 USC 105. The Hansen Global Forest Change dataset requires CC-BY-4.0, making it the binding minimum for this derivative benchmark. GeoRSCT adopts CC-BY-4.0 as the most restrictive source license.

Changelog

Version Date Changes
23.0.2 2026-05-03 Initial public release. 31,789 ZCTAs, 27 targets, 63 solver-usable input features (33 ACS, 14 spatial-lag, 16 geospatial enrichment), 3 geography-aware evaluation protocols, simplified ZCTA geometries, CDC PLACES confidence-interval sidecar, ACS margin-of-error sidecar, updated schema metadata, and expanded Croissant metadata.

Version scheme: {PLACES_vintage}.{release}. For example, 23.0.2 means PLACES 2023, second internal build and first public release.

To pin a specific version in code:

from datasets import load_dataset

ds = load_dataset("rudymartin/georsct", revision="v23.0.2")

Citation

If you use the RSCT framing or representation–solver compatibility terminology, please also cite the theory preprint:

@misc{martin2026rsct,
  title        = {Intelligence as Representation-Solver Compatibility: A General Theory of Representation-Dependent Reasoning},
  author       = {Martin, Rudolph A.},
  year         = {2026},
  note         = {Preprint. Zenodo DOI: 10.5281/zenodo.18854651; SSRN: 6339299}
}

If you use the GeoRSCT dataset, please cite:

@dataset{georsct2026v23002,
  title        = {GeoRSCT: A Geospatial Regression Benchmark for Representation--Solver Compatibility},
  author       = {Martin, Rudolph A.},
  year         = {2026},
  publisher    = {Hugging Face},
  url          = {https://huggingface.co/datasets/rudymartin/georsct},
  version      = {23.0.2},
  note         = {31,789 U.S. ZCTAs, 63 solver-usable input features, 27 regression targets, fixed geography-aware evaluation protocols, and uncertainty sidecars}
}
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