Silverstein et al., 2000 - Google Patents
Scalable techniques for mining causal structuresSilverstein et al., 2000
View PDF- Document ID
- 224591188906887137
- Author
- Silverstein C
- Brin S
- Motwani R
- Ullman J
- Publication year
- Publication venue
- Data Mining and Knowledge Discovery
External Links
Snippet
Mining for association rules in market basket data has proved a fruitful area of research. Measures such as conditional probability (confidence) and correlation have been used to infer rules of the form “the existence of item A implies the existence of item B.” However …
- 230000001364 causal effect 0 title abstract description 151
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