Skip to main content

Score As You Lift (SAYL): A Statistical Relational Learning Approach to Uplift Modeling.

Publication ,  Conference
Nassif, H; Kuusisto, F; Burnside, ES; Page, D; Shavlik, J; Costa, VS
Published in: Mach Learn Knowl Discov Databases
2013

We introduce Score As You Lift (SAYL), a novel Statistical Relational Learning (SRL) algorithm, and apply it to an important task in the diagnosis of breast cancer. SAYL combines SRL with the marketing concept of uplift modeling, uses the area under the uplift curve to direct clause construction and final theory evaluation, integrates rule learning and probability assignment, and conditions the addition of each new theory rule to existing ones. Breast cancer, the most common type of cancer among women, is categorized into two subtypes: an earlier in situ stage where cancer cells are still confined, and a subsequent invasive stage. Currently older women with in situ cancer are treated to prevent cancer progression, regardless of the fact that treatment may generate undesirable side-effects, and the woman may die of other causes. Younger women tend to have more aggressive cancers, while older women tend to have more indolent tumors. Therefore older women whose in situ tumors show significant dissimilarity with in situ cancer in younger women are less likely to progress, and can thus be considered for watchful waiting. Motivated by this important problem, this work makes two main contributions. First, we present the first multi-relational uplift modeling system, and introduce, implement and evaluate a novel method to guide search in an SRL framework. Second, we compare our algorithm to previous approaches, and demonstrate that the system can indeed obtain differential rules of interest to an expert on real data, while significantly improving the data uplift.

Duke Scholars

Altmetric Attention Stats
Dimensions Citation Stats

Published In

Mach Learn Knowl Discov Databases

DOI

Publication Date

2013

Volume

8190

Start / End Page

595 / 611

Location

Germany

Related Subject Headings

  • Artificial Intelligence & Image Processing
  • 46 Information and computing sciences
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Nassif, H., Kuusisto, F., Burnside, E. S., Page, D., Shavlik, J., & Costa, V. S. (2013). Score As You Lift (SAYL): A Statistical Relational Learning Approach to Uplift Modeling. In Mach Learn Knowl Discov Databases (Vol. 8190, pp. 595–611). Germany. https://doi.org/10.1007/978-3-642-40994-3_38
Nassif, Houssam, Finn Kuusisto, Elizabeth S. Burnside, David Page, Jude Shavlik, and Vítor Santos Costa. “Score As You Lift (SAYL): A Statistical Relational Learning Approach to Uplift Modeling.” In Mach Learn Knowl Discov Databases, 8190:595–611, 2013. https://doi.org/10.1007/978-3-642-40994-3_38.
Nassif H, Kuusisto F, Burnside ES, Page D, Shavlik J, Costa VS. Score As You Lift (SAYL): A Statistical Relational Learning Approach to Uplift Modeling. In: Mach Learn Knowl Discov Databases. 2013. p. 595–611.
Nassif, Houssam, et al. “Score As You Lift (SAYL): A Statistical Relational Learning Approach to Uplift Modeling.Mach Learn Knowl Discov Databases, vol. 8190, 2013, pp. 595–611. Pubmed, doi:10.1007/978-3-642-40994-3_38.
Nassif H, Kuusisto F, Burnside ES, Page D, Shavlik J, Costa VS. Score As You Lift (SAYL): A Statistical Relational Learning Approach to Uplift Modeling. Mach Learn Knowl Discov Databases. 2013. p. 595–611.

Published In

Mach Learn Knowl Discov Databases

DOI

Publication Date

2013

Volume

8190

Start / End Page

595 / 611

Location

Germany

Related Subject Headings

  • Artificial Intelligence & Image Processing
  • 46 Information and computing sciences