Customer-obsessed science
Research areas
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February 2, 202610 min readEvery NFL game generates millions of tracking data points from 22 RFID-equipped players. Seventy-five machine learning models running on AWS process that data in under a second, transforming football into a sport where every movement is measured, modeled, and instantly analyzed.
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January 13, 20267 min read
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January 8, 20264 min read
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December 29, 20256 min read
Featured news
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KDD 2023 International Workshop on Multimodal Learning2023In this paper, we study the problem of detecting objects with rich textual features from images. One such example is to detect stopwatch regions from sports videos. We propose a novel approach that combines image feature with text features for object detection, and benchmark against traditional OCR-based method and object detection method using image feature only. In particular, we modify the Faster R-CNN
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2023 ISCA SPSC Symposium2023Federated Learning (FL) offers a privacy-preserving approach to model training, allowing edge devices to learn collaboratively without sharing data. Edge devices like Alexa and Siri are prospective sources of unlabeled audio data that can be tapped to learn robust audio representations. In this work, we bring Self-supervised Learning (SSL) and FL together to learn representations for Automatic Speech Recognition
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RecSys 2023 Workshop on Context-Aware Recommender Systems2023Various data imbalances that naturally arise in a multi-territory personalized recommender system can lead to a significant item bias for globally prevalent items. A locally popular item can be overshadowed by a globally prevalent item. Moreover, users’ viewership patterns/statistics can drastically change from one geographic location to another which may suggest to learn specific user embeddings. In this
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RecSys 2023 Workshop on Context-Aware Recommender Systems2023Current multi-armed bandit approaches in recommender systems (RS) have focused more on devising effective exploration techniques, while not adequately addressing common exploitation challenges related to distributional changes and item cannibalization. Little work exists to guide the design of robust bandit frameworks that can address these frequent challenges in RS. In this paper, we propose a new design
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RecSys 2023 Workshop on Responsible Recommendation2023We focus on addressing the challenges in responsible beauty product recommendation, particularly when it involves comparing the product’s color with a person’s skin tone, such as for foundation and concealer products. To make accurate recommendations, it is crucial to infer both the product attributes and the product specific facial features such as skin conditions or tone. However, while many product photos
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