> ## Documentation Index
> Fetch the complete documentation index at: https://arizeai-433a7140.mintlify.site/llms.txt
> Use this file to discover all available pages before exploring further.

# Classification Metrics

> Precision, recall, and F-beta code evaluators in @arizeai/phoenix-evals

The `code` entrypoint provides deterministic, non-LLM evaluators for classification metrics: precision, recall, and F-beta (including F1). Unlike the per-row LLM evaluators elsewhere in this package, these are dataset-level — `expected` and `output` are the full sequence of labels across every example you want to score together, not a single row's label.

<section className="hidden" data-agent-context="relevant-source-files" aria-label="Relevant source files">
  <h2>Relevant Source Files</h2>

  <ul>
    <li><code>src/code/index.ts</code></li>
    <li><code>src/code/classificationMetrics.ts</code></li>
  </ul>
</section>

## Example

```ts theme={null}
import { createF1Evaluator } from "@arizeai/phoenix-evals/code";

const f1 = createF1Evaluator();

const result = await f1.evaluate({
  expected: ["cat", "dog", "cat", "bird"],
  output: ["cat", "cat", "cat", "bird"],
});
// { score: 0.6 }
```

## Built-In Evaluator Factories

* `createPrecisionEvaluator(options?)` — `score` is precision
* `createRecallEvaluator(options?)` — `score` is recall
* `createF1Evaluator(options?)` — `score` is F1 (F-beta with `beta: 1`)
* `createFBetaEvaluator(options?)` — `score` is F-beta; set `beta` to weight recall (`beta > 1`) or precision (`beta < 1`) more heavily
* `createPrecisionRecallFScoreEvaluators(options?)` — returns `{ precision, recall, fScore }`: three separate evaluators built from one shared options object

Each evaluator resolves to a single `{ score }`. (Python's `PrecisionRecallFScore` returns all three scores from one call; in TypeScript each evaluator yields one score, so use the bundle above to get all three.) Each factory accepts the same options:

```ts theme={null}
interface PrecisionRecallFScoreOptions {
  beta?: number; // default 1
  average?: "macro" | "micro" | "weighted"; // default "macro"
  positiveLabel?: string | number; // for binary one-vs-rest scoring
  zeroDivision?: number; // default 0, used when a metric is undefined (0/0)
}
```

## Binary Classification

```ts theme={null}
import {
  createPrecisionEvaluator,
  createRecallEvaluator,
} from "@arizeai/phoenix-evals/code";

const precision = createPrecisionEvaluator({ positiveLabel: "spam" });
const recall = createRecallEvaluator({ positiveLabel: "spam" });

const example = {
  expected: ["spam", "ham", "spam", "ham", "spam"],
  output: ["spam", "spam", "ham", "ham", "spam"],
};

await precision.evaluate(example); // { score: 0.667 }
await recall.evaluate(example); // { score: 0.667 }
```

## Multi-Class Averaging

```ts theme={null}
import { createPrecisionRecallFScoreEvaluators } from "@arizeai/phoenix-evals/code";

// "macro" (default): unweighted mean across classes
// "weighted": mean weighted by each class's support
// "micro": pool TP/FP/FN across classes first (equals accuracy for
// single-label multi-class problems)
const { precision, recall, fScore } = createPrecisionRecallFScoreEvaluators({
  average: "weighted",
});
```

## When To Use

* Scoring classification or labeling tasks (routing, tagging, moderation categories) against ground-truth labels
* Comparing predicted vs. expected label sequences collected from an experiment or dataset
* Choosing an F-beta weighting that matches the cost of false positives vs. false negatives for your task (e.g. `beta: 2` when missing a true positive is costlier than a false alarm)

For the underlying formulas, the precision/recall tradeoff, averaging-strategy semantics, and citations, see the [Precision / Recall / F-Score](/docs/phoenix/evaluation/pre-built-metrics/precision-recall-fscore) guide. A runnable walkthrough covering binary classification, F-beta tradeoffs, and all three averaging strategies lives in the package's [`examples/classification_metrics_example.ts`](https://github.com/Arize-ai/phoenix/blob/main/js/packages/phoenix-evals/examples/classification_metrics_example.ts).

<section className="hidden" data-agent-context="source-map" aria-label="Source map">
  <h2>Source Map</h2>

  <ul>
    <li><code>src/code/index.ts</code></li>
    <li><code>src/code/classificationMetrics.ts</code></li>
    <li><code>src/code/createClassificationMetricEvaluator.ts</code></li>
    <li><code>src/code/createPrecisionEvaluator.ts</code></li>
    <li><code>src/code/createRecallEvaluator.ts</code></li>
    <li><code>src/code/createFBetaEvaluator.ts</code></li>
    <li><code>src/code/createF1Evaluator.ts</code></li>
    <li><code>src/code/createPrecisionRecallFScoreEvaluators.ts</code></li>
  </ul>
</section>
