Aurora
Research Instrument · v1.3
Restricted · Research Use Only

AURORA

Aurora- a patented criminology research intrument.

Aurora tests whether documented offender populations show non-random distributions across astrological and numerological variables. Records require verified birth data and source citations. The engine runs chi-squared goodness-of-fit against uniform or empirical control nulls, with optional bootstrap resampling and Bonferroni correction. For research and educational use only. Outputs are not diagnostic, forensic, or legal evidence and must not be used to evaluate, screen, or make decisions about any person.

Dataset

Data integrity protocol. Every record must include a source citation (primary record, court document, registry, biography with verifiable birth certificate, etc.). Records lacking sourced birth data should be excluded from analysis. The "category" field permits stratified analysis (offense type, era, jurisdiction). Unverified records bias the sample and invalidate findings.
Add Record 0 records
Data Operations

Synthetic demo loads 200 randomly-generated birth dates for testing the statistical pipeline. They contain no real-person data and should not be analyzed for substantive findings — they exist only to verify the engine produces a null result on random input (which it should, by definition).

Records
No records. Add subjects above or import a CSV.

Reference Studies

What lives here. Each reference study is an independent research bundle — citation, sample size, pre-registered hypothesis, reported finding, and optionally the raw birth records. Aurora analyzes each study on its own terms (no merging of records across studies, which would destroy the per-study evidence) and combines results across studies via Stouffer's Z meta-analysis. Adding a new study is additive: existing studies and user records are untouched. This is how the tool avoids resting on a single dataset or single study.
Loaded Studies 0 studies
No reference studies loaded.
Study Operations

Each study JSON bundles its citation, hypothesis, pre-registered variables, and reported primary finding. Records are optional; metadata-only studies still contribute to meta-aggregation through their reported p-value and sample size. The schema version (aurora-study-1.0) lets future versions migrate older bundles.

Case Lookup

What this is. A descriptive walkthrough of one subject's astrological and numerological chart, showing how each computed characteristic appears across the data Aurora has loaded — your records and any reference studies. Each characteristic stands alone with its frequency in each source. Characteristics are not summed into a per-subject score.
Subject Birth Data

Birth time is not stored or persisted; the lookup is computed live and discarded when you leave the tab. No subject record is added to your dataset by this tool.

Analysis

Cohort Selection
Control cohort. Tag records with a category label (e.g. control) and select that category here to use its empirical distribution as the null instead of uniform. Real birth-date distributions are not uniform — selecting a matched control cohort is methodologically stronger. The control cohort should be at least 5× the test cohort size; a warning is emitted otherwise.
Variables to Test
What gets tested. Each selected variable is tested for departure from a uniform null distribution (chi-squared goodness-of-fit). Bonferroni correction divides α by the number of variables tested to control familywise error. The corrected p-threshold appears in the Results panel.
Reference Studies
— studies loaded
Meta-aggregation uses Stouffer's Z method weighted by √n. P-values from each study testing the same variable are combined into a single weighted Z-score. Studies are not merged at the record level — each retains its own analysis, sample, and methodology. The meta result tells you whether the effect replicates across studies, not whether it shows up in the merged pile.

Results

Run an analysis from the Analysis tab to see results here.

Methodology

Meta-Aggregation Across Reference Studies

Aurora is additive across studies. Each reference study is loaded as an independent bundle — its own records, its own pre-registered hypothesis, its own reported finding, its own caveats. The analysis engine never merges records across studies (which would mask the per-study evidence and inflate apparent power). Instead, each study is analyzed on its own terms and the p-values are combined.

Reference Studies — Schema

Reference studies are JSON bundles conforming to schema version aurora-study-1.0. Each contains:

Use the "Study JSON Template" button on the Reference Studies tab to download a starter schema. Studies are loaded additively — importing a new study does not replace existing studies or user records.

Variables Computed from Birth Date Alone

Variables Computed from Birth Date + Time

Statistical Procedure

Replicating Ruis (2008)

Aurora can be used to attempt partial replication of Jan Ruis's 2008 study, "Statistical analysis of the birth charts of serial killers" (Correlation 25(2)). To do so:

Note: Ruis's original finding required 8 astrological factors and a sample of 293. Detection power with only 2 factors (Sun and Moon) and a smaller sample will be lower. A null result with 2 factors does not falsify the Ruis finding; it indicates the signal, if real, is below the detection threshold of this partial replication.

What Aurora Cannot Tell You

Known Limitations · Roadmap

Citation

If results from Aurora are reported, methodology and version should be cited. Statistical procedures follow Pearson (1900), Cramér (1946), Wilson (1927), and Efron (1979) for the bootstrap. Lunar position calculations follow Meeus, Astronomical Algorithms, 2nd ed. (Willmann-Bell, 1998), simplified main terms. The methodological design of this instrument draws from Ruis, J. (2008), "Statistical analysis of the birth charts of serial killers," Correlation 25(2), and inherits its limitations regarding source-database selection effects.