Two-level monotonic multistage recommender systems
- URL: http://arxiv.org/abs/2110.06116v1
- Date: Wed, 6 Oct 2021 08:50:32 GMT
- Title: Two-level monotonic multistage recommender systems
- Authors: Ben Dai, Xiaotong Shen, and Wei Pan
- Abstract summary: Two-level monotonic property characterizing a monotonic chain of events for personalized prediction.
Regularized cost function to learn user-specific behaviors at different stages.
Algorithm based on blockwise coordinate descent.
- Score: 5.983189537988243
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: A recommender system learns to predict the user-specific preference or
intention over many items simultaneously for all users, making personalized
recommendations based on a relatively small number of observations. One central
issue is how to leverage three-way interactions, referred to as user-item-stage
dependencies on a monotonic chain of events, to enhance the prediction
accuracy. A monotonic chain of events occurs, for instance, in an article
sharing dataset, where a ``follow'' action implies a ``like'' action, which in
turn implies a ``view'' action. In this article, we develop a multistage
recommender system utilizing a two-level monotonic property characterizing a
monotonic chain of events for personalized prediction. Particularly, we derive
a large-margin classifier based on a nonnegative additive latent factor model
in the presence of a high percentage of missing observations, particularly
between stages, reducing the number of model parameters for personalized
prediction while guaranteeing prediction consistency. On this ground, we derive
a regularized cost function to learn user-specific behaviors at different
stages, linking decision functions to numerical and categorical covariates to
model user-item-stage interactions. Computationally, we derive an algorithm
based on blockwise coordinate descent. Theoretically, we show that the
two-level monotonic property enhances the accuracy of learning as compared to a
standard method treating each stage individually and an ordinal method
utilizing only one-level monotonicity. Finally, the proposed method compares
favorably with existing methods in simulations and an article sharing dataset.
Related papers
- Diffusion Action Segmentation [63.061058214427085]
We propose a novel framework via denoising diffusion models, which shares the same inherent spirit of such iterative refinement.
In this framework, action predictions are iteratively generated from random noise with input video features as conditions.
arXiv Detail & Related papers (2023-03-31T10:53:24Z) - Towards Out-of-Distribution Sequential Event Prediction: A Causal
Treatment [72.50906475214457]
The goal of sequential event prediction is to estimate the next event based on a sequence of historical events.
In practice, the next-event prediction models are trained with sequential data collected at one time.
We propose a framework with hierarchical branching structures for learning context-specific representations.
arXiv Detail & Related papers (2022-10-24T07:54:13Z) - An Additive Instance-Wise Approach to Multi-class Model Interpretation [53.87578024052922]
Interpretable machine learning offers insights into what factors drive a certain prediction of a black-box system.
Existing methods mainly focus on selecting explanatory input features, which follow either locally additive or instance-wise approaches.
This work exploits the strengths of both methods and proposes a global framework for learning local explanations simultaneously for multiple target classes.
arXiv Detail & Related papers (2022-07-07T06:50:27Z) - Monotonicity Regularization: Improved Penalties and Novel Applications
to Disentangled Representation Learning and Robust Classification [27.827211361104222]
We study settings where gradient penalties are used alongside risk minimization.
We show that different choices of penalties define the regions of the input space where the property is observed.
We propose an approach that uses mixtures of training instances and random points to populate the space and enforce the penalty in a much larger region.
arXiv Detail & Related papers (2022-05-17T11:42:45Z) - Parameter Decoupling Strategy for Semi-supervised 3D Left Atrium
Segmentation [0.0]
We present a novel semi-supervised segmentation model based on parameter decoupling strategy to encourage consistent predictions from diverse views.
Our method has achieved a competitive result over the state-of-the-art semisupervised methods on the Atrial Challenge dataset.
arXiv Detail & Related papers (2021-09-20T14:51:42Z) - Sequence Adaptation via Reinforcement Learning in Recommender Systems [8.909115457491522]
We propose the SAR model, which learns the sequential patterns and adjusts the sequence length of user-item interactions in a personalized manner.
In addition, we optimize a joint loss function to align the accuracy of the sequential recommendations with the expected cumulative rewards of the critic network.
Our experimental evaluation on four real-world datasets demonstrates the superiority of our proposed model over several baseline approaches.
arXiv Detail & Related papers (2021-07-31T13:56:46Z) - Set2setRank: Collaborative Set to Set Ranking for Implicit Feedback
based Recommendation [59.183016033308014]
In this paper, we explore the unique characteristics of the implicit feedback and propose Set2setRank framework for recommendation.
Our proposed framework is model-agnostic and can be easily applied to most recommendation prediction approaches.
arXiv Detail & Related papers (2021-05-16T08:06:22Z) - Sparse-Interest Network for Sequential Recommendation [78.83064567614656]
We propose a novel textbfSparse textbfInterest textbfNEtwork (SINE) for sequential recommendation.
Our sparse-interest module can adaptively infer a sparse set of concepts for each user from the large concept pool.
SINE can achieve substantial improvement over state-of-the-art methods.
arXiv Detail & Related papers (2021-02-18T11:03:48Z) - Adaptive Correlated Monte Carlo for Contextual Categorical Sequence
Generation [77.7420231319632]
We adapt contextual generation of categorical sequences to a policy gradient estimator, which evaluates a set of correlated Monte Carlo (MC) rollouts for variance control.
We also demonstrate the use of correlated MC rollouts for binary-tree softmax models, which reduce the high generation cost in large vocabulary scenarios.
arXiv Detail & Related papers (2019-12-31T03:01:55Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.