Alphabet

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Alphabet is the parent company of Google and many of its (former) subsidiaries, for example YouTube and DeepMind.


Tutorials

  1. Rules of Machine Learning
  2. 4-hour tutorial on Recommendation Systems

Papers

  1. On Reducing User Interaction Data for Personalization, ACM TORS, 2023
  2. Fresh Content Needs More Attention: Multi-funnel Fresh Content Recommendation, KDD 2023
  3. Do LLMs Understand User Preferences? Evaluating LLMs On User Rating Prediction, ??? 2023
  4. Recommender Systems with Generative Retrieval, ??? 2023
  5. ๐Ÿ”ฉ Data Management Principles, book chapter in Reliable Machine Learning: Applying SRE Principles to ML in Production, 2022
  6. Surrogate for Long-Term User Experience in Recommender Systems, KDD 2022
  7. ๐Ÿง  Scale Calibration of Deep Ranking Models, KDD 2022
  8. ๐Ÿ“‘๐Ÿง ๐Ÿ”ฉ On the Factory Floor: ML Engineering for Industrial-Scale Ads Recommendation Models, RecSys 2022
  9. Bootstrapping Recommendations at Chrome Web Store, KDD 2021
  10. ๐Ÿ”ฉ โ€œEveryone wants to do the model work, not the data workโ€: Data Cascades in High-Stakes AI, CHI 2021
  11. ๐Ÿ“‘๐Ÿง  Are Neural Rankers Still Outperformed By Gradient Boosted Decision Trees?, ICLR 2021
  12. ๐Ÿ”‘ Measuring Recommendation Explanation Quality: The Conflicting Goals of Explanations, RecSys 2021
  13. Item Recommendation from Implicit Feedback, 2021-01-21 โ€“ write-up on item recommendation from positive-only feedback with a focus on algorithms; no experiments, no dealing with bias
  14. Practical Compositional Fairness: Understanding Fairness in Multi-Component Recommender Systems
  15. ๐ŸŽฐ Latent Bandits Revisited, NeurIPS 2020
  16. Rankmax: An Adaptive Projection Alternative to the Softmax Function, NeurIPS 2020
  17. ๐Ÿƒ MAP Inference for Customized Determinantal Point Processes via Maximum Inner Product Search, AISTATS 2020
  18. ๐Ÿ“‘ Interpretable Learning-to-Rank with Generalized Additive Models, 2020
  19. Off-policy Learning in Two-stage Recommender Systems, WWW 2020
  20. ๐Ÿง  Mixed Negative Sampling for Learning Two-tower Neural Networks in Recommendations, WWW 2020; Google Play
  21. ๐Ÿค” Attribute-based Propensity for Unbiased Learning in Recommender Systems: Algorithm and Case Studies, KDD 2020
  22. ๐Ÿง  Neural Collaborative Filtering vs. Matrix Factorization Revisited, RecSys 2020
  23. Zero-Shot Heterogeneous Transfer Learning from Recommender Systems to Cold-Start Search Retrieval, CIKM 2020
  24. ๐Ÿ“‘ DCN V2: Improved Deep & Cross Network and Practical Lessons for Web-scale Learning to Rank Systems, 2020
  25. Template:Runtime Accelerating Large-Scale Inference with Anisotropic Vector Quantization, 2019
  26. Reinforcement Learning for Slate-based Recommender Systems: A Tractable Decomposition and Practical Methodology, 2019
  27. Seq2Slate: Re-ranking and Slate Optimization with RNNs, 2019
  28. ๐Ÿง  Revisiting Approximate Metric Optimization in the Age of Deep Neural Networks, SIGIR 2019 (short paper)
  29. ๐Ÿง Towards Neural Mixture Recommender for Long Range Dependent User Sequences, WWW 2019
  30. Top-K Off-Policy Correction for a REINFORCE Recommender System, WSDM 2019
  31. ๐Ÿง  Towards neural mixture recommender for long range dependent user sequences, WWW 2019
  32. ๐Ÿ“‘ Recommending what video to watch next: A multitask ranking system, RecSys 2019
  33. ๐Ÿค” Sampling-Bias-Corrected Neural Modeling for Large Corpus Item Recommendations, RecSys 2019
  34. Efficient Training on Very Large Corpora via Gramian Estimation, ICLR 2019
  35. ๐Ÿง  Latent Cross: Making Use of Context in Recurrent Recommender Systems, WSDM 2018
  36. Q&R: A two-stage approach toward interactive recommendation, KDD 2018
  37. Categorical-Attributes-Based Multi-Level Classification for Recommender Systems, RecSys 2018
  38. ๐Ÿง ๐ŸŽฐ Deep Bayesian Bandits Showdown: an Empirical Comparison of Bayesian Deep Networks for Thompson Sampling, ICLR 2018
  39. ๐Ÿ“‘ The LambdaLoss Framework for Ranking Metric Optimization, CIKM 2018
  40. ๐Ÿ•ด๐Ÿ”ฌ Practical Diversified Recommendations on YouTube with Determinantal Point Processes, CIKM 2018
  41. Recommendations for All: Solving Thousands of Recommendation Problems Daily, ICDE 2018 (also describe user context representation by the actions taken)
  42. A Generic Coordinate Descent Framework for Learning from Implicit Feedback, WWW 2017
  43. ๐Ÿง  Deep & Cross Network for Ad Click Predictions, 2017
  44. ๐Ÿ•ด Deep neural networks for YouTube recommendations, RecSys 2016; video
  45. ๐Ÿ•ด๐Ÿง  Wide & Deep Learning for Recommender Systems, DLRS 2016 (workshop on deep learning for recommender systems) โ€“ used for Google Play
  46. Q&R: A two-stage approach toward interactive recommendation, KDD 2018 (Google)
  47. Towards Conversational Recommender Systems, KDD 2016
  48. ๐Ÿ’ต Focusing on the Long-term: Itโ€™s Good for Users and Business, KDD 2015
  49. ๐Ÿ’ต Ad Click Prediction: a View from the Trenches, KDD 2013
  50. ๐Ÿ•ด The YouTube video recommendation system, RecSys 2010
  51. Google news personalization: scalable online collaborative filtering, WWW 2007

Talks

  1. Reinforcement Learning for Recommender Systems: Some Challenges, ICML 2019

Blog posts

  1. Building Large Scale Recommenders using Cloud TPUs, 2022-10-07
  2. Advances in TF-Ranking, 2021-07-21
  3. Scholar Recommendations Reloaded! Fresher, More Relevant, Easier, 2021-02-12
  4. Announcing ScaNN: Efficient Vector Similarity Search, 2020-07-28
  5. Advanced machine learning helps Play Store users discover personalised apps, 2019-11-18

Software

  1. Trax: end-to-end DL library with focus on clear code and speed; used for transformer models, successor to tensor2tensor.
  2. rax, learning-to-rank framework for JAX, paper
  3. RecSim blog post
  4. ScaNN (Scalable Nearest Neighbors)
  5. TensorFlow Recommenders see also TF Recommenders SIG and TF recommender add-ons
  6. TensorFlow Ranking

External link