Henriette's Notes

Home » Inferencing » Rules » SHACL

Category Archives: SHACL

Classification with SHACL Rules

In my previous post, Rule Execution with SHACL, we have looked at how SHACL rules can be utilized to make inferences. In this post we consider a more complex situation where SHACL rules are used to classify baked goods as vegan friendly or gluten free based on their ingredients.

Why use SHACL and not RDF/RDFS/OWL?

In my discussion I will only concentrate on the definition of vegan friendly baked goods since the translation to gluten free baked goods is similar. Gluten free baked goods are included to give a more representative example.

Essentially what we need to do is look at a baked good and determine whether it includes non-vegan friendly ingredients. If it includes no non-vegan friendly ingredients, we want to assume that it is a vegan friendly baked good. This kind of reasoning uses what is called closed world reasoning, i.e. when a fact does not follow from the data, it is assumed to be false. SHACL uses closed world reasoning and hence the reason for why it is a good fit for this problem.

RDF/RDFS/OWL uses open world reasoning, which means when a fact does not follow from data or schema, it cannot derive that the fact is necessarily false. Rather, it is both possible (1) that the fact holds but it is not captured in data (or schema), or (2) the fact does not hold. For this reason RDF/RDFS/OWL will only infer that a fact holds (or does not hold) if it explicitly stated in the data or can be derived from a combination of data and schema information. Hence, for this reason RDF/RDFS/OWL are not a good fit for this problem.

Baked Goods Data

Below are example baked goods RDF data:

bakery.png

Bakery RDF data

A couple of points are important w.r.t. the RDF data:

  1. Note that we define both VeganFriendly and NonVeganFriendly ingredients to be able to identify ingredients completely. Importantly we state that VeganFriendly and NonVeganFriendly are disjoint so that we cannot inadvertently state that an ingredient is both VeganFriendly and NonVeganFriendly.
  2. We state that AppleTartAAppleTartD are of type BakedGood so that when we specify our rules, we can state that the rules are applicable only to instances of type BakedGood.
  3. We enforce the domain and range for bakery:hasIngredient which results in whenever we say bakery:a bakery:hasIngredient bakery:b, the reasoner can infer that bakery:a is of type bakery:BakedGood and bakery:b is of type bakery:Ingredient.

Baked Good Rules

Now we define the shape of a baked good:

bakedGoodShape

BakedGood shape

We state that bakery:BakedGood a rdfs:Class which is important to be able to apply rules to instances of bakery:BakedGood. We also state that bakery:BakedGood a sh:NodeShape which allows us to add shape and rule information to bakery:BakedGood. Note that our bakery:BakedGood shape state that a baked good has at least one property called bakery:hasIngredient with range bakery:Ingredient.

We now add a bakery:NonVeganFriendly shape

NonVeganFriendlyShape

NonVeganFriendly shape

which we will use in the rule definition of bakery:BakedGood:

NonVeganBakedGoodRule

VeganBakedGood and NonVeganBakedGood rules

We add two rules, one for identifying a bakery:VeganBakedGood and one for a bakery:NonVeganBakedGood. Note that these rules are of type sh:TripleRule, which will infer the existence of a new triple if the rule is triggered. The first rule states that the subject of this triple is sh:this, which refers to instances of our bakery:BakedGood class. The predicate is rdf:type and the object is bakery:VeganBakedGood. So if this rule is triggered it will infer that an instance of bakery:BakedGood is also an instance of type bakery:VeganBakedGood.

Both rules have two conditions which instances must adhere to before these rules will trigger. These rules will only apply to instances of bakery:BakedGood according to the first condition. The second condition of the rule for bakery:VeganBakedGood checks for bakery:hasIngredient properties of the shape bakery:NonVeganFriendly. This ensures that the range of bakery:hasIngredient is of type bakery:NonVeganFriendly. If bakery:hasIngredient has a maximum count of 0, it will infer that this instance of bakery:BakedGood is of type bakery:VeganBakedGood. The rule for bakery:NonVeganBakedGood will also check for bakery:hasIngredient properties of the shape bakery:NonVeganFriendly, but with minimum count of 1 for which it will then infer that this instance is of type bakery:NonVeganBakedGood.

Jena SHACL Rule Execution Code

The Jena SHACL implementation provides command line scripts (/bin/shaclinfer.sh or /bin/shaclinfer.bat) which takes as arguments a data file and a shape file which can be used to do rule execution. However, for this specific example you have to write your own Java code. The reason being that the scripts creates a default model that has no reasoning support. In this section I provide the SHACL Jena code needed to do the classification of baked goods.

ShaclClassification

Shacl rule execution

Running the Code

Running the code will cause an inferences.ttl file to be written out to
$Project/src/main/resources/. It contains the following output:

classificationInferences

Classification of baked goods

Conclusion

In this post I gave a brief overview of how SHACL can be used to do classification based on some property. This code example is available at shacl tutorial. This post was inspired by a question on Stack Overflow.

If you have any questions regarding SHACL or the semantic web, please leave a comment and I will try to help where I can.

Rule Execution with SHACL

In my previous post, Using Jena and SHACL to validate RDF Data, I have looked at how RDF data can be validated using SHACL. A closely related concern to that of constraints checking, is rule execution, for which SHACL can also be used.

A SHACL Rule Example

We will again use an example from the SHACL specification. Assume we have the a file rectangles.ttl that contains the following data:

rectangle

rectangles.ttl

Assuming we want to infer that when the height and width of a rectangle are equal, the rectangle represents a square, the following SHACL rule specification can be used (which we will store in rectangleRules.ttl):

rectangleRules

rectangleRules.ttl

A Code Example using Jena

Naturally you will need to add SHACL to your Maven pom dependencies. Then the following code will execute your SHACL rules:

shaclRuleExecution

SHACL rule execution using Jena

Running the Code

Running the code will cause an inferences.ttl file to be written out to $Project/src/main/resources/. It contains the following output:

inference

inference.ttl

Note that ex:InvalidRectangle has been ignored because it does not adhere to sh:condition ex:Rectangle, since it does not have ex:height and ex:width properties. Also, ex:NonSquareRectangle is a rectangle, not a square.

Conclusion

In this post I gave a brief overview of how SHACL can be used to implement rules on RDF data. This code example is available at shacl tutorial.

Using Jena and SHACL to validate RDF Data

RDF enables users to capture data in a way that is intuitive to them. This means that data is often captured without conforming to any schema. It is often useful to know that an RDF dataset conforms to some (potential partial) schema. This is where SHACL (SHApe Constraint Language), a W3C standard, comes into play. It is a language for describing and validating RDF graphs. In this post I will give a brief overview of how to use SHACL to validate RDF data using the Jena implementation of SHACL.

A SHACL Example

We will use an example from the SHACL specification. Assume we have a file person.ttl that contains the following data:

person

Example RDF data

To validate this data we create a shape definition in personShape.ttl containing:

personShape

Person shape definition

A Code Example using Jena

To validate our RDF data using our SHACL shape we will use the Jena implementation of SHACL. Start by adding the SHACL dependency to your Maven pom.xml. Note that you do not need to add Jena as well as the SHACL pom already includes Jena.

SHACLPom

SHACL Maven dependency

In the code we will assume the person.ttl and personShape.ttl files are in $Project/src/main/resources/. The code for doing the validation is the following then:

personValidation

Java code using Jena implementation of SHACL

Running the Code

Running the code will cause a report.ttl file to be written out to $Project/src/main/resources/. We can determine that our data does not conform by checking the sh:conforms property. We have 4 violations of our ex:PersonShape:

  1. For ex:Alice the ex:ssn property does not conform to the pattern defined in the shape.
  2. ex:Bob has 2 ex:ssn properties.
  3. ex:Calvin works for a company that is not of type ex:Company.
  4. ex:Calvin has a property ex:birthDate that is not allowed by ex:PersonShape since it is close by sh:closed true.

A corrected version of our person data may look as follows:

personCorrected

Person data that conforms to our person shape

Conclusion

In this post I have given a brief overview of how SHACL can be used to validate RDF data using the SHACL implementation of Jena. This code example is available at shacl tutorial.