Datasets:
update readme
Browse files- README.md +178 -0
- requirements.txt +1 -0
README.md
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---
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license: mit
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---
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| 1 |
---
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language:
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- en
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license: mit
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tags:
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- knowledge-graph
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- rdf
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- owl
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- ontology
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annotations_creators:
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- expert-generated
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pretty_name: FIBO
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size_categories:
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- 100K<n<1M
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task_categories:
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- graph-ml
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dataset_info:
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features:
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- name: subject
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dtype: string
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- name: predicate
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dtype: string
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- name: object
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dtype: string
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config_name: default
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splits:
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- name: train
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num_bytes: 56045523
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num_examples: 236579
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dataset_size: 56045523
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viewer: false
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---
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# FIBO: The Financial Industry Business Ontology
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### Overview
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In the world of financial technology, the vastness of data and the
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complexity of financial instruments present both challenges and
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opportunities. The Financial Industry Business Ontology (FIBO) offers
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a structured framework that bridges the gap between theoretical
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financial concepts and real-world data. I believe machine learning
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researchers interested in the financial sector could use the
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relationships in FIBO to innovate in financial feature engineering to
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fine-tune existing models or build new ones.
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### Use-cases
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- Comprehensive Data Structure: FIBO encompasses a wide range of
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financial concepts, from derivatives to securities. Its design ensures
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an in-depth understanding of financial instruments from experts
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in knowledge representation and the financial industry.
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- Decoding Complex Relationships: The financial domain is
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characterized by its intricate interdependencies. FIBO's structured
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approach provides clarity on these relationships, enabling machine
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learning algorithms to identify patterns and correlations within
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large datasets.
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- Linkage with Real-world Data: A distinguishing feature of FIBO is
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its capability to associate financial concepts with real-world
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financial data and controlled vocabularies. This connection is
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crucial for researchers aiming to apply theoretical insights in
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practical contexts in financial enterprises with their existing
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data.
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- Retrieval Augmented Generation: The emergence of Large Language
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Models, especially when using Retrieval Augmented Generation (RAG),
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has the potential to transform financial data processing and
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interpretation.
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- Document Classification: With the surge in financial documents,
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utilizing RAG to classify financial datasets based on FIBO concepts
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may help financial analysts get better accuracy and depth in data
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interpretation with smart prompting.
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#### Building and Verification:
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1. **Construction**: The ontology was imported using the
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[AboutFIBOProd-IncludingReferenceData](https://github.com/edmcouncil/fibo/blob/master/AboutFIBOProd-IncludingReferenceData.rdf)
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into Protege version 5.6.1.
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2. **Reasoning**: Due to the large size of the ontology I used the ELK
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reasoner plugin to materialize (make explicit) inferences in the
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ontology.
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3. **Coherence Check**: The Debug Ontology plugin in Protege was used
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to ensure the ontology's coherence and consistency.
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4. **Export**: After verification, inferred axioms, along with
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asserted axioms and annotations, were exported using Protege.
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5. **Encoding and Compression**: [Apache Jena's
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riot](https://jena.apache.org/documentation/tools/) was used to convert the
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result to ntriples, which was then compressed with gzip.
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## Features
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The FIBO dataset is composed of triples representing the relationships
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between different financial concepts and named individuals such as
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market participants, corporations, and contractual agents.
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### Usage
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First make sure you have the requirements installed:
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```python
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pip install datasets
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pip install rdflib
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```
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You can load the dataset using the Hugging Face Datasets library with the following Python code:
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```python
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from datasets import load_dataset
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dataset = load_dataset('wikipunk/fibo2023Q3', split='train')
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```
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#### Note on Format:
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The subject, predicate, and object features are stored in N3 notation
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with no prefix mappings. This allows users to parse each component
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using `rdflib.util.from_n3` from the RDFLib Python library.
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### Example
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Here is an example of a triple in the dataset:
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- Subject: `"<https://spec.edmcouncil.org/fibo/ontology/FBC/FunctionalEntities/MarketsIndividuals/ServiceProvider-L-JEUVK5RWVJEN8W0C9M24>"`
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- Predicate: `"<http://www.w3.org/1999/02/22-rdf-syntax-ns#type>`
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- Object: `"<https://spec.edmcouncil.org/fibo/ontology/BE/FunctionalEntities/FunctionalEntities/FunctionalEntity>"`
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This triple represents the statement that the market individual
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"ServiceProvider-L-JEUVK5RWVJEN8W0C9M24" has a type of "FunctionalEntity".
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---
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## Ideas for Deriving Graph Neural Network Features from FIBO:
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Graph Neural Networks (GNNs) have emerged as a powerful tool for
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machine learning on structured data. FIBO, with its structured
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ontology, can be leveraged to derive features for GNNs.
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### Node Features:
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- **rdf:type**: Each entity in FIBO has one or more associated `rdf:type`,
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`<http://www.w3.org/1999/02/22-rdf-syntax-ns#type>`, that
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indicates its class or category. This can serve as a primary node
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feature to encode.
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- **Entity Attributes**: Attributes of each entity, such as names or
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descriptions, can be used as additional node features. Consider
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embedding descriptions using a semantic text embedding model.
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### Edge Features:
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- **RDF Predicates**: The relationships between entities in FIBO are
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represented using RDF predicates. These predicates can serve as edge
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features in a GNN, capturing the nature of the relationship between
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nodes.
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### Potential Applications:
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1. **Entity Classification**: Using the derived node and edge
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features, GNNs can classify entities into various financial
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categories, enhancing the granularity of financial data analysis.
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2. **Relationship Prediction**: GNNs can predict potential
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relationships between entities, aiding in the discovery of hidden
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patterns or correlations within the financial data.
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3. **Anomaly Detection**: By training GNNs on the structured data from
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FIBO and interlinked financial datasets, anomalies or
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irregularities in them may be detected, ensuring data integrity and
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accuracy.
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### Acknowledgements
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We extend our sincere gratitude to the FIBO contributors for their
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meticulous efforts in knowledge representation. Their expertise and
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dedication have been instrumental in shaping a comprehensive and
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insightful framework that serves as a cornerstone for innovation in
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the financial industry.
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If you are interested in modeling the financial industry you should
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consider [contributing to
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FIBO](https://github.com/edmcouncil/fibo/blob/master/CONTRIBUTING.md).
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### Citation
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```bibtex
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@misc{fiboQ32023,
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title={Financial Industry Business Ontology (FIBO) Q32023 Release},
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author={EDM Council and Various Contributors},
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year={2023},
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note={Derived from the AboutFIBOProd-IncludingReferenceData.rdf},
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howpublished={\url{https://spec.edmcouncil.org/fibo/}},
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license={MIT License, \url{https://opensource.org/licenses/MIT}}
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}
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```
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requirements.txt
ADDED
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rdflib>=6.0.0
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