L-diversity


l-diversity, also written as -diversity, is a form of group based anonymization that is used to preserve privacy in data sets by reducing the granularity of a data representation. This reduction is a trade off that results in some loss of effectiveness of data management or mining algorithms in order to gain some privacy. The l-diversity model is an extension of the k-anonymity model which reduces the granularity of data representation using techniques including generalization and suppression such that any given record maps onto at least k-1 other records in the data. The l-diversity model handles some of the weaknesses in the k-anonymity model where protected identities to the level of k-individuals is not equivalent to protecting the corresponding sensitive values that were generalized or suppressed, especially when the sensitive values within a group exhibit homogeneity. The l-diversity model adds the promotion of intra-group diversity for sensitive values in the anonymization mechanism.

Attacks on ''k''-anonymity

While k-anonymity is a promising approach to take for group based anonymization given its simplicity and wide array of algorithms that perform it, it is however susceptible to many attacks. When background knowledge is available to an attacker, such attacks become even more effective. Such attacks include:
Given the existence of such attacks where sensitive attributes may be inferred for k-anonymity data, the l-diversity method was created to further k-anonymity by additionally maintaining the diversity of sensitive fields. The book Privacy-Preserving Data Mining – Models and Algorithms defines l-diversity as being:
The paper t-Closeness: Privacy beyond k-anonymity and l-diversity defines l-diversity as being:
Machanavajjhala et. al. define “well-represented” in three possible ways:
  1. Distinct l-diversity – The simplest definition ensures that at least l distinct values for the sensitive field in each equivalence class exist.
  2. Entropy l-diversity – The most complex definition defines Entropy of an equivalent class E to be the negation of summation of s across the domain of the sensitive attribute of plog where p is the fraction of records in E that have the sensitive value s. A table has entropy l-diversity when for every equivalent class E, Entropy ≥ log.
  3. Recursive -diversity – A compromise definition that ensures the most common value does not appear too often while less common values are ensured to not appear too infrequently.
Aggarwal and Yu note that when there is more than one sensitive field the l-diversity problem becomes more difficult due to added dimensionalities.