Pith Number
pith:32YOGAES
pith:2024:32YOGAES76HBV6LDX4BV34GPWX
not attested
not anchored
not stored
refs pending
Do Multilingual Large Language Models Mitigate Stereotype Bias?
arxiv:2407.05740 v2 · 2024-07-08 · cs.CL
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\usepackage{pith}
\pithnumber{32YOGAES76HBV6LDX4BV34GPWX}
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Record completeness
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4
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Portable graph bundle live · download bundle · merged
state
The bundle contains the canonical record plus signed events. A mirror can host it anywhere and recompute the same
current state with the deterministic merge algorithm.
Cited by
Receipt and verification
| First computed | 2026-07-05T08:41:47.286507Z |
|---|---|
| Builder | pith-number-builder-2026-05-17-v1 |
| Signature | Pith Ed25519
(pith-v1-2026-05) · public key |
| Schema | pith-number/v1.0 |
Canonical hash
deb0e30092ff8e1af963bf035df0cfb5f1f73f9ec8c97682713c3b0b4f26aae1
Aliases
· · · · ·Agent API
Verify this Pith Number yourself
curl -sH 'Accept: application/ld+json' https://pith.science/pith/32YOGAES76HBV6LDX4BV34GPWX \
| jq -c '.canonical_record' \
| python3 -c "import sys,json,hashlib; b=json.dumps(json.loads(sys.stdin.read()), sort_keys=True, separators=(',',':'), ensure_ascii=False).encode(); print(hashlib.sha256(b).hexdigest())"
# expect: deb0e30092ff8e1af963bf035df0cfb5f1f73f9ec8c97682713c3b0b4f26aae1
Canonical record JSON
{
"metadata": {
"abstract_canon_sha256": "c850a65b0c34a3405aa63498cced4b1a1f8e6c9e76138c0e4c43a9b18be807a0",
"cross_cats_sorted": [],
"license": "http://creativecommons.org/licenses/by/4.0/",
"primary_cat": "cs.CL",
"submitted_at": "2024-07-08T08:46:50Z",
"title_canon_sha256": "f16f922f393181821d937b28732ea7849fbc57c77b1c1f00cb3125377f904e6a"
},
"schema_version": "1.0",
"source": {
"id": "2407.05740",
"kind": "arxiv",
"version": 2
}
}