Unicosys Hypergraph Knowledge Model

A trainable knowledge graph embedding model encoding the unified evidence hypergraph for Case 2025-137857.

Model Description

This model encodes a unified hypergraph linking financial transactions, email communications, legal evidence, and entity relationships into a single trainable knowledge representation.

Architecture

Component Details
Node Embedding 128-dim structural + 256-dim text
Hidden Dimension 256
Text Encoder 2-layer Transformer, 4 heads
Graph Attention 2-layer GAT, 4 heads
Link Predictor 2-layer MLP with margin ranking loss
Total Parameters 34,767,105

Knowledge Graph Statistics

Metric Count
Total Nodes 197,882
Total Edges 13,370
Cross-Links 3,764
Entities 16
Emails 197,856
Financial Documents 0
Timeline Events 10
LEX Schemes 0
Legal Filings 0

Subsystems

Subsystem Nodes
Core (Entities) 16
Fincosys (Financial) 0
Comcosys (Communications) 197,856
RevStream1 (Evidence) 0
Ad-Res-J7 (Legal) 10

Training

The model can be fine-tuned on link prediction tasks:

from model.unicosys_model import UnicosysHypergraphModel, UnicosysConfig

model = UnicosysHypergraphModel.from_pretrained("hyperholmes/unicosys-hypergraph")
# ... prepare training data ...
# model.forward(node_ids, node_type_ids, subsystem_ids, edge_index, edge_type_ids,
#               pos_edge_index=pos, neg_edge_index=neg, labels=labels)

Files

  • model.safetensors โ€” Model weights
  • config.json โ€” Model configuration
  • graph_data.safetensors โ€” Encoded graph tensors (nodes, edges)
  • tokenizer.json โ€” Character-level tokenizer for node labels
  • node_id_mapping.json โ€” Node ID string to integer index mapping
  • model_summary.json โ€” Compact statistics summary

Source

Generated by the Unicosys intelligence pipeline.

Downloads last month
531
Safetensors
Model size
34.8M params
Tensor type
F32
ยท
Inference Providers NEW
This model isn't deployed by any Inference Provider. ๐Ÿ™‹ Ask for provider support