Search Results for author: Yin Lou

Found 4 papers, 4 papers with code

On Finding Bi-objective Pareto-optimal Fraud Prevention Rule Sets for Fintech Applications

2 code implementations2 Nov 2023 Chengyao Wen, Yin Lou

We propose a heuristic-based framework called PORS and we identify that the core of PORS is the problem of solution selection on the front (SSF).

Axiomatic Interpretability for Multiclass Additive Models

1 code implementation22 Oct 2018 Xuezhou Zhang, Sarah Tan, Paul Koch, Yin Lou, Urszula Chajewska, Rich Caruana

In the first part of this paper, we generalize a state-of-the-art GAM learning algorithm based on boosted trees to the multiclass setting, and show that this multiclass algorithm outperforms existing GAM learning algorithms and sometimes matches the performance of full complexity models such as gradient boosted trees.

Additive models Binary Classification +1

Distill-and-Compare: Auditing Black-Box Models Using Transparent Model Distillation

1 code implementation17 Oct 2017 Sarah Tan, Rich Caruana, Giles Hooker, Yin Lou

We compare the student model trained with distillation to a second un-distilled transparent model trained on ground-truth outcomes, and use differences between the two models to gain insight into the black-box model.

Sparse Partially Linear Additive Models

1 code implementation17 Jul 2014 Yin Lou, Jacob Bien, Rich Caruana, Johannes Gehrke

Thus, to make a GPLAM a viable approach in situations in which little is known $a~priori$ about the features, one must overcome two primary model selection challenges: deciding which features to include in the model and determining which of these features to treat nonlinearly.

Additive models Model Selection

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