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Main Authors: Yang, Chenyang, Xiao, Tesi, Shavlovsky, Michael, Kästner, Christian, Wu, Tongshuang
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2411.04798
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author Yang, Chenyang
Xiao, Tesi
Shavlovsky, Michael
Kästner, Christian
Wu, Tongshuang
author_facet Yang, Chenyang
Xiao, Tesi
Shavlovsky, Michael
Kästner, Christian
Wu, Tongshuang
contents Machine learning in production needs to balance multiple objectives: This is particularly evident in ranking or recommendation models, where conflicting objectives such as user engagement, satisfaction, diversity, and novelty must be considered at the same time. However, designing multi-objective rankers is inherently a dynamic wicked problem -- there is no single optimal solution, and the needs evolve over time. Effective design requires collaboration between cross-functional teams and careful analysis of a wide range of information. In this work, we introduce Orbit, a conceptual framework for Objective-centric Ranker Building and Iteration. The framework places objectives at the center of the design process, to serve as boundary objects for communication and guide practitioners for design and evaluation. We implement Orbit as an interactive system, which enables stakeholders to interact with objective spaces directly and supports real-time exploration and evaluation of design trade-offs. We evaluate Orbit through a user study involving twelve industry practitioners, showing that it supports efficient design space exploration, leads to more informed decision-making, and enhances awareness of the inherent trade-offs of multiple objectives. Orbit (1) opens up new opportunities of an objective-centric design process for any multi-objective ML models, as well as (2) sheds light on future designs that push practitioners to go beyond a narrow metric-centric or example-centric mindset.
format Preprint
id arxiv_https___arxiv_org_abs_2411_04798
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Orbit: A Framework for Designing and Evaluating Multi-objective Rankers
Yang, Chenyang
Xiao, Tesi
Shavlovsky, Michael
Kästner, Christian
Wu, Tongshuang
Human-Computer Interaction
Information Retrieval
Machine learning in production needs to balance multiple objectives: This is particularly evident in ranking or recommendation models, where conflicting objectives such as user engagement, satisfaction, diversity, and novelty must be considered at the same time. However, designing multi-objective rankers is inherently a dynamic wicked problem -- there is no single optimal solution, and the needs evolve over time. Effective design requires collaboration between cross-functional teams and careful analysis of a wide range of information. In this work, we introduce Orbit, a conceptual framework for Objective-centric Ranker Building and Iteration. The framework places objectives at the center of the design process, to serve as boundary objects for communication and guide practitioners for design and evaluation. We implement Orbit as an interactive system, which enables stakeholders to interact with objective spaces directly and supports real-time exploration and evaluation of design trade-offs. We evaluate Orbit through a user study involving twelve industry practitioners, showing that it supports efficient design space exploration, leads to more informed decision-making, and enhances awareness of the inherent trade-offs of multiple objectives. Orbit (1) opens up new opportunities of an objective-centric design process for any multi-objective ML models, as well as (2) sheds light on future designs that push practitioners to go beyond a narrow metric-centric or example-centric mindset.
title Orbit: A Framework for Designing and Evaluating Multi-objective Rankers
topic Human-Computer Interaction
Information Retrieval
url https://arxiv.org/abs/2411.04798