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Separating the Wheat from the Chaff: The Exclusion Method for Classifying Law Firm Documents

  • Legal Operations

Law firms rely on vast document collections. A large firm can have more than one hundred million files in its document management system. While there is very valuable information in there, finding it can be hard. To help the firm’s personnel better find what they’re looking for, knowledge management and IT professionals spend huge amounts of time and money trying to improve document search.

One way to improve search is to supplement document specific metadata contained in the document management system. Even if using technology (like Zuva’s document classification AI API) to add metadata, law firms need to identify which documents to apply the technology to. While the goal is to focus on the most relevant documents, the sheer volume and nuanced nature of the question means this task is more challenging than it appears. This blog post discusses the challenges of isolating high-relevance documents and proposes a more practical, exclusion-based approach as an effective strategy.

Why My Voice Matters Here

I have wrestled with the problem of organizing and searching large private collections of documents in the legal arena for decades. I practiced law at Sidley Austin LLP for fourteen years, during which law firm document management systems came into being. I was the General Counsel at Morningstar, Inc. for a decade, where our legal department did not have the benefit of a document management system. I returned to Sidley to establish its Knowledge Management Department and led a project to deploy a sophisticated enterprise search system, fueled in large part by a massive document management system. I joined Fireman & Company (now part of Epiq) as a consultant where our clients face the same challenges. In addition to my current work as Epiq’s Managing Director, Applied Artificial Intelligence, I am completing a Master’s Degree in Data Science at UC Berkeley. My studies, teaching and research emphasize machine learning, neural networks and generative artificial intelligence, often to solve language intensive search and information retrieval problems.

The Challenge of Identifying High-Relevance Documents

Identifying which documents are most relevant for classification and term extraction is a daunting task in large, varied document sets. The criteria for relevance can vary significantly depending on the context and specific firm or practice-group needs, making it a highly nuanced and often inefficient process to pinpoint the most relevant documents directly.

Adopting the Exclusion Approach

Given the complexity of identifying high-relevance documents, a more pragmatic approach involves exclusion. This method focuses on eliminating documents that are much less likely to be relevant, to concentrate efforts on a group that includes the most relevant documents. To be conservative, when in doubt, we assume the documents associated with a matter are relevant.

This approach assumes that every document is associated with a matter number and that it is easy to identify a matter type from the matter number. For example, firm administrative matters may appear with a unique prefix identifying the matter as a firm administrative matter, so too with personal matters. Finally, we assume that a matter type is associated with every client matter number so, for example, a matter can be identified as a corporate acquisition or a litigation project.

  • Exclude Administrative Material. Firm administrative documents are not likely the focus of the firm’s classification and term extraction efforts. So, begin by excluding all documents associated with firm administrative matters.
  • Exclude Personal Workspaces. Documents contained in personal workspaces are, by their nature, not intended to be shared. These documents are typically not relevant to a firm’s classification and term extraction project. Exclude them.
  • Filtering by Matter Types. In organizations with varied practice areas, focus on documents relevant to your specific classification and extraction objectives by excluding unrelated matter types. For example, if we assume that a firm is most interested in applying document classification and term extraction to transaction related documents, you might exclude documents associated with matters that are clearly litigation related. The firm’s matter taxonomy will help here. As noted above, if a matter type is ambiguous, do not exclude the documents associated with that matter type.
  • Prioritize Most Recent Versions. Consider analyzing only the most recent version of a document where there are multiple versions.
  • Applying A Time-Based Approach. Very old documents or documents associated with dormant matters are often not particularly relevant. Consider only analyzing documents associated with matters that have had time billed to them in the most recent three or five year span.

The Importance of Refinement

As your efforts progress, you may identify originally excluded collections of documents that should be included. For example, the firm may have collected a series of useful reference documents or templates that would have been highly relevant if viewed as client work product, but which were set aside in an administrative matter for knowledge management purposes. These collections, when identified, should be included.

Conclusion

The journey towards successful application of classification and term extraction technology to law firm document management systems is less about directly pinpointing high-relevance documents and more about intelligently excluding the less relevant ones. This exclusion-based approach, which emphasizes filtering out administrative materials, personal workspaces, and unrelated matter types, allows firms to focus on a more manageable set of potentially relevant documents. The process, however, is not static. It requires ongoing refinement, adapting to new insights and realizations about the relevance of certain documents initially overlooked. Ultimately, this method paves the way for more focused and effective use of classification and extraction technologies, turning a daunting task into a manageable and fruitful endeavor.

This blog was originally posted by Zuva AI. Read their blog here.

The contents of this article are intended to convey general information only and not to provide legal advice or opinions.

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