Query Suggestion for Efficient Legal E-Discovery

作者: Shailesh Kumar

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摘要: Given a set of training documents relevant to litigation hold, properties common the case and not or missing in non-relevant can be identified used generate hold query suggested user. After receiving documents, one more between are identified. Based on properties, generated return larger that representative set. Additionally, by iteratively improving base sharing characteristics documents. Suggested queries may evolve as evolves.

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