Information Quality Framework for Verifiable Intelligence Products

Organizations have been increasingly investing in technology to collect and process vast volumes of data. Even so, they often find themselves stymied in their efforts to effectively use the data to improve business processes and to make better decisions. This difficulty is often caused by information quality issues within the organization and other related organizations.

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