1st Edition

A Symbolic and Connectionist Approach To Legal Information Retrieval

By Daniel E. Rose Copyright 1994
336 Pages
by Psychology Press

Many existing information retrieval (IR) systems are surprisingly ineffective at finding documents relevant to particular topics. Traditional systems are extremely brittle, failing to retrieve relevant documents unless the user's exact search string is found. They support only the most primitive trial-and-error interaction with their users and are also static. Even systems with so-called... Read more
Contents: Preface. Introduction. Humans, Computers, and Finding Information. Knowledge Representation, Meaning, and Text in AI. Approaches to Information Retrieval. Some Perspectives on the Law and Legal Research. Hybrid Vigor. The Structure of SCALIR. The Retrieval Process. Feedback and Learning. Interacting With SCALIR. Performance Evaluation. Discussion.

Biography

Daniel E. Rose

"The book of Daniel E. Rose is important. It is the most important book offering a general discussion of legal information retrieval in the perspective of an original approach for a long time, probably since Carloe Hafner's introduction of LIRS some 15 years ago."
Information Processing

"Dr. Rose is clearly a man of the marketplace....The background chapters contain an extensive survey of the literature, particularly the IR literature, demonstrating a comprehensive knowledge of the issues in theory and system evaluation."
Canadian Artificial Intelligence

"This book is one of the best I have read in the field of artificial intelligence and law, and I believe it is one of the best pieces of work in applied AI generally. The reason I am so enthusiastic is the experimental component of the work: its attempt to scale up to a more realistic size document collection, and its reporting of quantitative information about the knowledge structures which were used to represent this large text database. Dr. Rose has taken some very complex ideas and presented them with admirable skill."
Carole D. Hafner
College of Computer Science, Northeastern University