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obitools4/autodoc/docmd/pkg/obistats/sample.md
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Eric Coissac 8c7017a99d ⬆️ version bump to v4.5
- Update obioptions.Version from "Release 4.4.29" to "/v/ Release v5"
- Update version.txt from 4.29 → .30
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# `obistats` Package: Statistical Utilities for Weighted and Unweighted Samples
The `obistats` package provides a suite of statistical functions for analyzing numeric samples, supporting both unweighted and weighted data. Its core abstraction is the `Sample` struct—encapsulating values (`Xs`), optional weights (`Weights`), and a `Sorted` flag for performance optimization.
### Key Functionalities:
- **Bounds**: Computes min/max efficiently—O(1) when sorted and unweighted; otherwise scans the data.
- **Aggregation**: `Sum()` computes weighted/unweighted sums via incremental accumulation; `Weight()` returns total weight (or count if unweighted).
- **Central Tendency**:
- `Mean()` uses incremental weighted mean for numerical stability.
- `GeoMean()` computes geometric means (requires positive values), also supporting weights.
- **Dispersion**:
- `Variance()` and `StdDev()` compute sample variance/standard deviation (unweighted only; weighted versions raise a panic—*TODO*).
- Based on Welfords online algorithm for numerical robustness.
- **Order Statistics**:
- `Percentile(p)` implements Hyndman & Fans R8 interpolation method (default in many tools). Handles weights via linear scan; constant-time if sorted and unweighted.
- `IQR()` returns interquartile range (`P75 P25`).
- **Utility Methods**:
- `Sort()` sorts in-place (stably for weighted samples) and updates the `Sorted` flag.
- `Copy()` creates a deep copy for independent manipulation.
Designed with performance in mind, the package exploits sorting and incremental algorithms to minimize numerical error and improve runtime—especially valuable for large or repeated analyses. All functions gracefully handle edge cases (empty samples, zero weights) by returning `NaN` or appropriate bounds.