2601.21609v1.pdf
Extension
Size
2 MiB
Media Type
application/pdf
SHA-256 is a widely used cryptographic hash function.
This sequence of letters and numbers can be used as a unique identifier for this file
File Hash: SHA-256
41d867f9820a9a6d5e953d9408eeb13ac1a9c7885497c7915ecedc948c50cff7
Annotations
Structured records describing the file.
Read moreTitle
RecNet: Self-Evolving Preference Propagation for Agentic Recommender Systems
Keywords
Sequential Recommendation, Large Language Models
Version
1.7
Page Count
11
Subject
- Information systems -> Recommender systems.
Producer
pikepdf 8.15.1
{
"file/base": {
"record": {
"extension": ".pdf",
"hash": "41d867f9820a9a6d5e953d9408eeb13ac1a9c7885497c7915ecedc948c50cff7",
"media_type": "application/pdf",
"media_type_prefix": "application",
"name": "2601.21609v1.pdf",
"size": 2305988
},
"source": {
"execution_id": "1afb6973-7dc5-431f-9441-ed6f8364397e",
"id": "file/base",
"type": "Model",
"version": "1.0.0"
}
},
"file/pdf": {
"private": false,
"record": {
"creation_date": "2026-01-30T01:55:56Z",
"keywords": [
"Sequential Recommendation",
"Large Language Models"
],
"modified_date": "2026-01-30T01:55:56Z",
"page_count": 11,
"producer": "pikepdf 8.15.1",
"subject": "- Information systems -\u003e Recommender systems.",
"title": "RecNet: Self-Evolving Preference Propagation for Agentic Recommender Systems",
"version": "1.7"
},
"source": {
"execution_id": "09d4cb61-f553-499c-92c3-88f0c9e3736b",
"id": "dorsal/pdf",
"type": "Model",
"version": "1.1.0"
}
}
}
The number of unique users who have indexed this public file record
The date this file's metadata was first publicly indexed by any user.
The most recent date this file's metadata was publicly indexed by any user.
File Statistics
- Views:
- 22
- Indexed by:
- 1 user
- Indexed:
- 2026-02-17