In the world of data processing, there are various approaches to improving efficiency and accuracy. One particularly promising approach is the use of Large Language Models (LLMs) to improve the linking of entities through entity linking. In this blog post, I will highlight the new possibilities and benefits of this technology.

The new features of LLMs in entity linking

  • Improved entity linking through LLMs: Traditional entity linking methods are mainly based on comparing entity embeddings, which is constrained by the limited input data and capabilities of representation learning techniques. LLMs can overcome these limitations by leveraging extensive background knowledge and performing multi-level reasoning in a dialogue format.
  • ChatEA Framework: An innovative framework that integrates LLMs to improve the accuracy of entity linking. It uses a two-step linking process and a KG code translation module that translates the structures of knowledge graphs into a format understandable by LLMs.

In the following example of information extraction, unstructured text data is transformed into a structured semantic graph. A general goal of information extraction is to extract knowledge from unstructured data and use this knowledge for various other tasks.


Example of information extraction, source: https://medium.com/analytics-vidhya/entity-linking-a-primary-nlp-task-for-information-extraction-22f9d4b90aa8

Experimental results

The results show that ChatEA provides superior performance and emphasise the potential of LLMs to support entity linking tasks. This makes LLMs a powerful tool for applications such as real-time translation, meeting support or customer service.

Use cases in data processing
  • Searching for and summarising documents: Organisations spend a lot of time searching for information in contracts, internal policies and regulatory requirements. LLMs can effectively help employees find and understand complex information so they can spend more time with their customers. Images and graphics can also be better recognised and interpreted.
  • Talking assistant: Imagine a virtual assistant controlled by LLMs. It holds natural conversations with customers and answers questions on various topics. Beyond basic FAQs, it can offer personalised advice and increase customer satisfaction.
  • Content creation: Creating reports, summaries and other content can be time-consuming. LLMs can create documents, reports with tables and graphs or investment decisions at the touch of a button.
  • Intuitive data access: LLMs analyse historical data, identify trends and forecast future developments. This enables teams to make well-founded decisions, optimise projects and manage risks.
  • Strategic decision-making: Specialist departments can use LLMs to gain predictive insights, explain deviations and recommend strategic measures. By automating routine tasks, professionals can focus more on high-impact activities.

Compliance with ever-changing regulations is critical for organisations. LLMs monitor changes, interpret complex regulations and notify compliance officers. They ensure that regulatory requirements are met and risks and penalties are minimised.

Conclusion

To summarise, the possibilities of LLMs and their potential for data processing are very promising. Development is progressing rapidly and further innovative use cases will soon revolutionise data processing. We can't wait to see the next wave of AI-driven progress!

Would you like to find out more about exciting topics from the world of adesso? Then take a look at our previously published blog posts.

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Picture Siver Rajab

Author Siver Rajab

Siver Rajab is a Consultant in the Banking division at adesso. With a background in data integration and many years of experience as a business analyst, Siver supports decision makers in taking the right steps towards success.

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