Knowledge Graph - Ontology Based Inference Helper
/install ontology-based-inference-helper
Ontology-Based Inference Helper
Apply semantic ontology rules to knowledge graphs to infer new relationships and facts from explicit definitions.
This skill enables comprehensive ontology reasoning by applying RDF/OWL-based inference rules that automatically expand knowledge graphs through class hierarchies, property inheritance, and semantic constraints.
Quick Start
Use When
- Working with RDF/OWL ontologies
- Inferring class memberships from hierarchies
- Applying property inheritance rules
- Expanding knowledge graphs semantically
- Validating semantic consistency
- Deriving implicit relationships
- Building semantic web applications
- Materializing ontology inferences
Inputs
- Ontology definitions (classes, properties, constraints)
- Graph individuals (instances)
- Inference rule types to apply
- Optional: Domain-specific ontology (RDFS, OWL)
Outputs
- Inferred class memberships
- Derived relationships
- Expanded property assignments
- Semantic consistency results
- Materialized triple sets
Ontology Concepts
Class Hierarchy
Hierarchical organization of concepts with subclass relationships.
Thing (root)
├── PhysicalObject
│ ├── Vehicle
│ │ ├── Car
│ │ │ └── ElectricCar
│ │ └── Truck
│ └── Animal
│ ├── Mammal
│ └── Bird
└── AbstractConcept
Properties: Inheritance, specialization, polymorphism
Class Membership
Individuals are instances of classes; inheritance propagates membership.
tesla:Individual
type: ElectricCar
(inherited) type: Car
(inherited) type: Vehicle
(inherited) type: PhysicalObject
(inherited) type: Thing
Property Definitions
Properties have domain (source class) and range (target type).
Property: hasOwner
domain: Vehicle # hasOwner applies to Vehicles
range: Person # hasOwner points to Person
inverse: owns # owns is inverse of hasOwner
Property: hasColor
domain: PhysicalObject
range: Color
Property Inheritance
Subclasses inherit property definitions from parent classes.
Vehicle.hasOwner → Car.hasOwner (inherited)
Vehicle.hasColor → ElectricCar.hasColor (inherited)
Inverse Properties
Properties with inverse relationships (e.g., hasOwner ↔ owns).
A hasOwner B ⇒ B owns A (by inverse property)
married_to inverse married_to ⇒ A married_to B ⇒ B married_to A
Transitive Properties
Properties where chaining implies relationship.
transitiveProperty: partOf
A partOf B ∧ B partOf C ⇒ A partOf C
transitiveProperty: locatedIn
Paris locatedIn France ∧ France locatedIn Europe ⇒ Paris locatedIn Europe
Ontology Inference Rules
Rule 1: Subclass Membership Inference
If X is instance of A and A is subclass of B, then X is instance of B.
IF
X instance_of A
A subclass_of B
THEN
X instance_of B
Example:
tesla instance_of Car
Car subclass_of Vehicle
⇒ tesla instance_of Vehicle
Application: Materializing full class hierarchy for each individual
Rule 2: Property Domain Inference
If property P has domain D and P is used with subject S, then S is instance of D.
IF
property P has domain D
S P O
THEN
S instance_of D
Example:
hasOwner domain Vehicle
john_car hasOwner jane
⇒ john_car instance_of Vehicle
Rule 3: Property Range Inference
If property P has range R and P is used with object O, then O is instance of R.
IF
property P has range R
S P O
THEN
O instance_of R
Example:
hasOwner range Person
john_car hasOwner jane
⇒ jane instance_of Person
Rule 4: Property Inheritance
If property P belongs to class A, and B is subclass of A, then property P belongs to B.
IF
class A has property P
B subclass_of A
THEN
class B has property P
Rule 5: Subproperty Inference
If property P is subproperty of Q and (S P O), then (S Q O).
IF
P subproperty_of Q
S P O
THEN
S Q O
Example:
son subproperty_of child
alice son bob
⇒ alice child bob
Rule 6: Inverse Property Inference
If property P is inverse of Q and (S P O), then (O Q S).
IF
P inverse_of Q
S P O
THEN
O Q S
Example:
hasOwner inverse_of owns
vehicle hasOwner person
⇒ person owns vehicle
Rule 7: Symmetric Property Inference
If property P is symmetric and (S P O), then (O P S).
IF
P is symmetric
S P O
THEN
O P S
Example:
knows symmetric
alice knows bob
⇒ bob knows alice
Rule 8: Transitive Property Closure
If property P is transitive and (S P M) and (M P O), then (S P O).
IF
P is transitive
S P M
M P O
THEN
S P O
Example:
ancestor transitive
alice ancestor bob
bob ancestor charlie
⇒ alice ancestor charlie
Inference Strategies
Forward Chaining Materialization
Eagerly apply all inference rules to derive complete closure.
Algorithm:
1. Load ontology and individuals
2. Apply rules iteratively until fixpoint
3. Store all inferred facts
4. Index for fast querying
Pros: Complete, fast queries
Cons: Storage cost, upfront computation
Best For: OLAP, offline reasoning
Backward Chaining Resolution
Query-driven inference - derive facts only when queried.
Algorithm:
1. Receive query for fact
2. Check explicit facts
3. If not found, apply rules backward
4. Return proof or empty
Pros: Storage efficient, on-demand
Cons: Query latency, repeated computation
Best For: OLTP, large graphs
Hybrid Approach
Combine materialization for common facts with backward chaining for rare ones.
Materialize: Subclass membership, property domain/range
Backward chain: Transitive closure, complex paths
Ontology Standards Support
RDF (Resource Description Framework)
- Triple model: (subject, predicate, object)
- Namespace support
- URI-based identifiers
RDFS (RDF Schema)
- Class and property definitions
- Subclass/subproperty relationships
- Domain and range constraints
OWL (Web Ontology Language)
- Richer semantics than RDFS
- Class restrictions and logical operators
- Advanced property characteristics (transitive, symmetric, inverse)
Property Graph Extensions
- Ontology support on property graphs
- Type systems and hierarchies
- Custom property constraints
Semantic Consistency
Type Checking
Verify property domain/range constraints.
hasOwner domain Vehicle
john_car hasOwner "red" ← Type violation! "red" is not Person
Hierarchy Validation
Ensure no contradictory subclass relationships.
A subclass_of B
B subclass_of C
NOT (C subclass_of A) ← Would create cycle
Constraint Satisfaction
Enforce cardinality, uniqueness, and other constraints.
hasOwner cardinality 1 ← Each vehicle has exactly one owner
Error Handling
Common Issues
| Issue | Cause | Solution |
|---|---|---|
| Infinite loops | Cyclic properties | Detect cycles, limit depth |
| Memory overflow | Too many inferences | Selective materialization |
| Type violations | Domain/range mismatches | Validation, filtering |
| Inconsistencies | Contradictory rules | Detect, flag, or resolve |
| Performance degradation | Expensive transitive closure | Caching, incremental updates |
| Missing inferences | Incomplete ontology | Augment definitions |
Best Practices
✓ Define ontologies clearly - Use consistent naming and structure
✓ Minimize cyclic dependencies - Design acyclic hierarchies
✓ Choose inference strategy wisely - Match to query patterns
✓ Cache inference results - Reuse computed closures
✓ Validate ontology consistency - Check before inference
✓ Handle inverse properties carefully - Avoid redundant storage
✓ Document semantic assumptions - Clarify rule semantics
✓ Monitor inference performance - Track computation time
✓ Version ontologies - Enable evolution and rollback
✓ Test with sample data - Validate inference correctness
Advanced Features
Custom Inference Rules
Define domain-specific reasoning beyond OWL.
Fuzzy Inference
Support uncertain or probabilistic reasoning.
Temporal Ontologies
Time-aware class hierarchies and properties.
Cross-Ontology Reasoning
Align and reason over multiple ontologies.
Ontology Alignment
Map concepts between different ontologies.
Explanation Generation
Provide derivation traces and proof chains.
Integration Points
This skill integrates with:
- Graph Rule Engine Builder - Define custom inference rules
- Causal Chain Analyzer - Understand inference chains
- Graph Path Reasoning Analyzer - Analyze derivation paths
- Transitive Closure Generator - Compute transitive closure
- Multi-Hop Reasoning Query Builder - Build complex queries
Recommended Libraries
Ontology Tools
rdflib- RDF/OWL supportowlready2- OWL ontology reasoningpysparql- SPARQL endpoint
Reasoning Engines
Hermit- OWL reasonerPellet- Description logic reasonerJena- Semantic web framework
Graph Processing
networkx- Graph algorithmsneo4j- Graph databasevirtuoso- RDF triple store
Semantic Standards
rdflib-jsonld- JSON-LD supportpyshacl- SHACL validation
Related Skills
- Graph Rule Engine Builder - Define custom rules
- Transitive Closure Generator - Compute closure
- Causal Chain Analyzer - Analyze implications
- Graph Path Reasoning Analyzer - Find paths
- Multi-Hop Reasoning Query Builder - Complex queries
Version: 1.0.0
- 确保已安装 OpenClaw(本地或 Docker 部署)
- 在对话框中输入安装命令:
/install ontology-based-inference-helper - 安装完成后,直接呼叫该 Skill 的名称或使用
/ontology-based-inference-helper触发 - 根据 Skill 的参数说明提供必要输入,即可获得结构化输出
Knowledge Graph - Ontology Based Inference Helper 是什么?
Apply semantic ontology rules to knowledge graphs to infer new relationships, class memberships, and properties from explicit ontology definitions. Supports... 它是一个面向 Claude Code / OpenClaw 的 AI Agent Skill 插件,目前累计下载 30 次。
如何安装 Knowledge Graph - Ontology Based Inference Helper?
在 OpenClaw 或 Claude Code 对话框中运行命令「/install ontology-based-inference-helper」即可一键安装,无需额外配置。
Knowledge Graph - Ontology Based Inference Helper 是免费的吗?
是的,Knowledge Graph - Ontology Based Inference Helper 完全免费,采用 MIT-0 许可证,可自由下载、安装和使用。
Knowledge Graph - Ontology Based Inference Helper 支持哪些平台?
Knowledge Graph - Ontology Based Inference Helper 跨平台运行,可在任意部署了 OpenClaw / Claude Code 的环境中使用(cross-platform)。
谁开发了 Knowledge Graph - Ontology Based Inference Helper?
由 Muhammad Asif(@fisa712)开发并维护,当前版本 v1.0.0。