Title of article :
Beyond independence: probabilistic models for query approximation on binary transaction data
Author/Authors :
D.N.، Pavlov, نويسنده , , H.، Mannila, نويسنده , , P.، Smyth, نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2003
Abstract :
We investigate the problem of generating fast approximate answers to queries posed to large sparse binary data sets. We focus in particular on probabilistic model-based approaches to this problem and develop a number of techniques that are significantly more accurate than a baseline independence model. In particular, we introduce two techniques for building probabilistic models from frequent itemsets: the itemset maximum entropy model and the itemset inclusion-exclusion model. In the maximum entropy model, we treat itemsets as constraints on the distribution of the query variables and use the maximum entropy principle to build a joint probability model for the query attributes online. In the inclusion-exclusion model, itemsets and their frequencies are stored in a data structure, called an ADtree, that supports an efficient implementation of the inclusion-exclusion principle in order to answer the query. We empirically compare these two itemset-based models to direct querying of the original data, querying of samples of the original data, as well as other probabilistic models such as the independence model, the Chow-Liu tree model, and the Bernoulli mixture model. These models are able to handle highdimensionality (hundreds or thousands of attributes), whereas most other work on this topic has focused on relatively lowdimensional OLAP problems. Experimental results on both simulated and real-world transaction data sets illustrate various fundamental trade offs between approximation error, model complexity, and the online time required to compute a query answer.
Keywords :
Prospective study , Abdominal obesity , Food patterns , waist circumference
Journal title :
IEEE Transactions on Knowledge and Data Engineering
Journal title :
IEEE Transactions on Knowledge and Data Engineering