| 2012 | ||
|---|---|---|
| 13 | Jie Liu, Chunming Zhang, Catherine A. McCarty, Peggy L. Peissig, Elizabeth S. Burnside, C. David Page Jr.: High-Dimensional Structured Feature Screening Using Binary Markov Random Fields. Journal of Machine Learning Research - Proceedings Track 22: 712-721 (2012) | |
| 2011 | ||
| 12 | Pedro Ferreira, Nuno A. Fonseca, Inês de Castro Dutra, Ryan W. Woods, Elizabeth S. Burnside: Predicting Malignancy from Mammography Findings and Surgical Biopsies. BIBM 2011: 339-344 | |
| 11 | Pedro Ferreira, Inês de Castro Dutra, Nuno A. Fonseca, Ryan W. Woods, Elizabeth S. Burnside: Studying the Relevance of Breast Imaging Features. HEALTHINF 2011: 337-342 | |
| 2010 | ||
| 10 | Houssam Nassif, David Page, Mehmet Ayvaci, Jude W. Shavlik, Elizabeth S. Burnside: Uncovering age-specific invasive and DCIS breast cancer rules using inductive logic programming. IHI 2010: 76-82 | |
| 9 | Ryan W. Woods, Louis Oliphant, Kazuhiko Shinki, David Page, Jude W. Shavlik, Elizabeth S. Burnside: Validation of Results from Knowledge Discovery: Mass Density as a Predictor of Breast Cancer. J. Digital Imaging 23(5): 554-561 (2010) | |
| 8 | Jagpreet Chhatwal, Oguzhan Alagöz, Elizabeth S. Burnside: Optimal Breast Biopsy Decision-Making Based on Mammographic Features and Demographic Factors. Operations Research 58(6): 1577-1591 (2010) | |
| 2009 | ||
| 7 | Houssam Nassif, Ryan W. Woods, Elizabeth S. Burnside, Mehmet Ayvaci, Jude W. Shavlik, David Page: Information Extraction for Clinical Data Mining: A Mammography Case Study. ICDM Workshops 2009: 37-42 | |
| 6 | Louis Oliphant, Elizabeth S. Burnside, Jude W. Shavlik: Boosting First-Order Clauses for Large, Skewed Data Sets. ILP 2009: 166-177 | |
| 2007 | ||
| 5 | Jesse Davis, Irene M. Ong, Jan Struyf, Elizabeth S. Burnside, David Page, Vítor Santos Costa: Change of Representation for Statistical Relational Learning. IJCAI 2007: 2719-2726 | |
| 2005 | ||
| 4 | Jesse Davis, Elizabeth S. Burnside, Inês de Castro Dutra, David Page, Vítor Santos Costa: An Integrated Approach to Learning Bayesian Networks of Rules. ECML 2005: 84-95 | |
| 3 | Jesse Davis, Elizabeth S. Burnside, Inês de Castro Dutra, David Page, Raghu Ramakrishnan, Vítor Santos Costa, Jude W. Shavlik: View Learning for Statistical Relational Learning: With an Application to Mammography. IJCAI 2005: 677-683 | |
| 2004 | ||
| 2 | Elizabeth S. Burnside, Daniel L. Rubin, Ross D. Shachter: Improving a Bayesian network's ability to predict the probability of malignancy of microcalcifications on mammography. CARS 2004: 1021-1026 | |
| 1 | Yue Pan, Elizabeth S. Burnside: The effects of training parameters on learning a probabilistic expert system for mammography. CARS 2004: 1027-1032 | |
| 1 | Oguzhan Alagöz | [8] |
| 2 | Mehmet Ayvaci | [7] [10] |
| 3 | Jagpreet Chhatwal | [8] |
| 4 | Vítor Santos Costa | [3] [4] [5] |
| 5 | Jesse Davis | [3] [4] [5] |
| 6 | Inês de Castro Dutra | [3] [4] [11] [12] |
| 7 | Pedro Ferreira | [11] [12] |
| 8 | Nuno A. Fonseca | [11] [12] |
| 9 | Jie Liu | [13] |
| 10 | Catherine A. McCarty | [13] |
| 11 | Houssam Nassif | [7] [10] |
| 12 | Louis Oliphant | [6] [9] |
| 13 | Irene M. Ong | [5] |
| 14 | C. David Page Jr. (David Page) | [3] [4] [5] [7] [9] [10] [13] |
| 15 | Yue Pan | [1] |
| 16 | Peggy L. Peissig | [13] |
| 17 | Raghu Ramakrishnan | [3] |
| 18 | Daniel L. Rubin | [2] |
| 19 | Ross D. Shachter | [2] |
| 20 | Jude W. Shavlik | [3] [6] [7] [9] [10] |
| 21 | Kazuhiko Shinki | [9] |
| 22 | Jan Struyf | [5] |
| 23 | Ryan W. Woods | [7] [9] [11] [12] |
| 24 | Chunming Zhang | [13] |
Colors in the list of coauthors
Last update Fri May 25 01:42:58 2012 CET by the DBLP Team —
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