Datasets:
language: en
license: cc-by-nc-sa-4.0
tags:
- privacy
- web-tracking
- tracker-detection
- tabular-classification
- browser-fingerprinting
- duckduckgo
- tracker-radar
size_categories:
- 10K<n<100K
task_categories:
- tabular-classification
Tracker Radar ML Dataset
An ML-ready tabular dataset of 16,165 third-party web domains labeled as tracking or non-tracking, with 295 behavioral and metadata features extracted from DuckDuckGo's open-source Tracker Radar.
Dataset Description
Each row represents a third-party domain observed on popular websites during DuckDuckGo's Tracker Radar crawl (US region). Features capture how the domain behaves: which browser APIs its scripts call, whether it sets cookies, how prevalent it is across the web, and metadata about the entity that owns it.
Label Construction
Labels are derived from multiple independent sources:
- Tracking (1): Domain has a tracking category in Tracker Radar (Advertising, Analytics, Audience Measurement, etc.) or appears in the EasyPrivacy filter list
- Non-tracking (0): Domain has only functional categories (CDN, Embedded Content, Online Payment) or is uncategorized with no API usage and negligible cookie prevalence
5,863 ambiguous domains were excluded from the labeled set.
Labels are independent of the fingerprinting heuristic score (0-3), which is included as a column but was not used for labeling. This allows the dataset to be used for evaluating ML models against the heuristic baseline.
Features (295 total)
| Group | Count | Description |
|---|---|---|
| Domain metadata | 9 | Prevalence, site count, subdomain count, owner info, resource types |
| Cookie behavior | 4 | Cookie prevalence, TTL, first-party cookies set and sent |
| API binary | 131 | Whether any resource on the domain uses each browser API |
| API counts | 131 | Raw call counts per API aggregated across resources |
| API aggregates | 20 | Summary stats of API weights, category-level counts (canvas, audio, navigator, etc.) |
Key Columns
domain: The third-party domain namelabel: 0 (non-tracking) or 1 (tracking)label_source: Which source(s) determined the labelfingerprinting_score: DuckDuckGo's heuristic score (0-3), included for comparison but not used in labelingprevalence: Fraction of top sites that request this domainweighted_fp_score: Sum of API fingerprint weights for APIs this domain uses
Class Distribution
| Label | Count | Percentage |
|---|---|---|
| Non-tracking (0) | 10,356 | 64.1% |
| Tracking (1) | 5,809 | 35.9% |
Usage
from datasets import load_dataset
ds = load_dataset("olafurjohannsson/tracker-radar-ml")
train = ds["train"]
test = ds["test"]
# Get features and labels
import pandas as pd
df = train.to_pandas()
print(df["label"].value_counts())
print(df.columns.tolist()[:20])
Source Data
Derived from DuckDuckGo Tracker Radar (CC-BY-NC-SA 4.0) with additional labels from EasyPrivacy.
Source Code
Feature extraction, labeling, and training scripts: github.com/olafurjohannsson/tracker-ml
Limitations
- Point-in-time snapshot (US region only)
- Labels depend on Tracker Radar categories and EasyPrivacy, both of which have known limitations and edge cases
- Some domains (e.g., consent management platforms) are debatable
- Does not include raw JavaScript source code, only aggregate behavioral metadata