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Published byJanis Williamson Modified over 6 years ago
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FRM: Modeling Sponsored Search Log with Full Relational Model
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Application Scenario
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Why to use Click Models Target The simple case
CTR statistics of a query-ad pair in different positions The simple case Only one ad in a session (like tossing a coin) Click event follows binomial distribution with a beta prior General case: the above method cannot be utilized directly More ads are shown together in a session Position-bias More factors: influence among ads, users’ intent, etc.
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Challenge of Click Models
Examination Hypothesis The user must examine an ad before clicking. Problem How to calculate p(E)? How to estimate r?
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Competitive Click Models
Influence among ads is not considered
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The Influence Among the Ads
The green arrow: competing influence The red arrow: collaborating influence
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Data Support
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Limitation of Previous Work
TCM model Only modeling two ads Only consider competing influence
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Our Contributions Extend TCM from modeling two ads to arbitrary number of ads Identify the collaborating influence and incorporate it into click models Incorporating features to further enhance click models
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Extended TCM
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Estimation of Parameters
Estimation of r Estimation of lambda
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Full Relational Model
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Incorporating Features
Classical regression model Prediction = f (Observation) The model is trained in sessions containing only one ad Incorporate the prediction into priors Beta (alpha, beta)
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Experimental Results Evaluation Metrics ROC
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The End Thank you very much.
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