Difference between revisions of "Alphabet"
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# [https://arxiv.org/pdf/2101.08769.pdf Item Recommendation from Implicit Feedback], 2021-01-21 – write-up on item recommendation from positive-only feedback with a focus on algorithms; no experiments, no dealing with bias | # [https://arxiv.org/pdf/2101.08769.pdf Item Recommendation from Implicit Feedback], 2021-01-21 – write-up on item recommendation from positive-only feedback with a focus on algorithms; no experiments, no dealing with bias | ||
# [https://research.google/pubs/pub49284/ Practical Compositional Fairness: Understanding Fairness in Multi-Component Recommender Systems] | # [https://research.google/pubs/pub49284/ Practical Compositional Fairness: Understanding Fairness in Multi-Component Recommender Systems] | ||
| − | # {{bandits}} | + | # {{bandits}} [https://proceedings.neurips.cc/paper/2020/hash/9b7c8d13e4b2f08895fb7bcead930b46-Abstract.html Latent Bandits Revisited], [[NeurIPS 2020]] |
# [https://papers.nips.cc/paper/2020/file/070dbb6024b5ef93784428afc71f2146-Paper.pdf Rankmax: An Adaptive Projection Alternative to the Softmax Function], [[NeurIPS 2020]] | # [https://papers.nips.cc/paper/2020/file/070dbb6024b5ef93784428afc71f2146-Paper.pdf Rankmax: An Adaptive Projection Alternative to the Softmax Function], [[NeurIPS 2020]] | ||
# {{performance}} [http://proceedings.mlr.press/v108/han20b.html MAP Inference for Customized Determinantal Point Processes via Maximum Inner Product Search], [[AISTATS 2020]] | # {{performance}} [http://proceedings.mlr.press/v108/han20b.html MAP Inference for Customized Determinantal Point Processes via Maximum Inner Product Search], [[AISTATS 2020]] | ||
Revision as of 07:26, 20 July 2023
Alphabet is the parent company of Google and many of its (former) subsidiaries, for example YouTube and DeepMind.
Tutorials
Papers
- On Reducing User Interaction Data for Personalization, ACM TORS, 2023
- Fresh Content Needs More Attention: Multi-funnel Fresh Content Recommendation, KDD 2023
- Do LLMs Understand User Preferences? Evaluating LLMs On User Rating Prediction, ??? 2023
- Recommender Systems with Generative Retrieval, ??? 2023
- 🔩 Data Management Principles, book chapter in Reliable Machine Learning: Applying SRE Principles to ML in Production, 2022
- Surrogate for Long-Term User Experience in Recommender Systems, KDD 2022
- 🧠 Scale Calibration of Deep Ranking Models, KDD 2022
- 📑🧠🔩 On the Factory Floor: ML Engineering for Industrial-Scale Ads Recommendation Models, RecSys 2022
- Bootstrapping Recommendations at Chrome Web Store, KDD 2021
- 🔩 “Everyone wants to do the model work, not the data work”: Data Cascades in High-Stakes AI, CHI 2021
- 📑🧠 Are Neural Rankers Still Outperformed By Gradient Boosted Decision Trees?, ICLR 2021
- 🔑 Measuring Recommendation Explanation Quality: The Conflicting Goals of Explanations, RecSys 2021
- Item Recommendation from Implicit Feedback, 2021-01-21 – write-up on item recommendation from positive-only feedback with a focus on algorithms; no experiments, no dealing with bias
- Practical Compositional Fairness: Understanding Fairness in Multi-Component Recommender Systems
- 🎰 Latent Bandits Revisited, NeurIPS 2020
- Rankmax: An Adaptive Projection Alternative to the Softmax Function, NeurIPS 2020
- 🏃 MAP Inference for Customized Determinantal Point Processes via Maximum Inner Product Search, AISTATS 2020
- 📑 Interpretable Learning-to-Rank with Generalized Additive Models, 2020
- Off-policy Learning in Two-stage Recommender Systems, WWW 2020
- 🧠 Mixed Negative Sampling for Learning Two-tower Neural Networks in Recommendations, WWW 2020; Google Play
- 🤔 Attribute-based Propensity for Unbiased Learning in Recommender Systems: Algorithm and Case Studies, KDD 2020
- 🧠 Neural Collaborative Filtering vs. Matrix Factorization Revisited, RecSys 2020
- Zero-Shot Heterogeneous Transfer Learning from Recommender Systems to Cold-Start Search Retrieval, CIKM 2020
- 📑 DCN V2: Improved Deep & Cross Network and Practical Lessons for Web-scale Learning to Rank Systems, 2020
- Template:Runtime Accelerating Large-Scale Inference with Anisotropic Vector Quantization, 2019
- Reinforcement Learning for Slate-based Recommender Systems: A Tractable Decomposition and Practical Methodology, 2019
- Seq2Slate: Re-ranking and Slate Optimization with RNNs, 2019
- 🧠 Revisiting Approximate Metric Optimization in the Age of Deep Neural Networks, SIGIR 2019 (short paper)
- 🧠Towards Neural Mixture Recommender for Long Range Dependent User Sequences, WWW 2019
- Top-K Off-Policy Correction for a REINFORCE Recommender System, WSDM 2019
- 🧠 Towards neural mixture recommender for long range dependent user sequences, WWW 2019
- 📑 Recommending what video to watch next: A multitask ranking system, RecSys 2019
- 🤔 Sampling-Bias-Corrected Neural Modeling for Large Corpus Item Recommendations, RecSys 2019
- Efficient Training on Very Large Corpora via Gramian Estimation, ICLR 2019
- 🧠 Latent Cross: Making Use of Context in Recurrent Recommender Systems, WSDM 2018
- Q&R: A two-stage approach toward interactive recommendation, KDD 2018
- Categorical-Attributes-Based Multi-Level Classification for Recommender Systems, RecSys 2018
- 🧠🎰 Deep Bayesian Bandits Showdown: an Empirical Comparison of Bayesian Deep Networks for Thompson Sampling, ICLR 2018
- 📑 The LambdaLoss Framework for Ranking Metric Optimization, CIKM 2018
- 🕴🔬 Practical Diversified Recommendations on YouTube with Determinantal Point Processes, CIKM 2018
- Recommendations for All: Solving Thousands of Recommendation Problems Daily, ICDE 2018 (also describe user context representation by the actions taken)
- A Generic Coordinate Descent Framework for Learning from Implicit Feedback, WWW 2017
- 🧠 Deep & Cross Network for Ad Click Predictions, 2017
- 🕴 Deep neural networks for YouTube recommendations, RecSys 2016; video
- 🕴🧠 Wide & Deep Learning for Recommender Systems, DLRS 2016 (workshop on deep learning for recommender systems) – used for Google Play
- Q&R: A two-stage approach toward interactive recommendation, KDD 2018 (Google)
- Towards Conversational Recommender Systems, KDD 2016
- 💵 Focusing on the Long-term: It’s Good for Users and Business, KDD 2015
- 💵 Ad Click Prediction: a View from the Trenches, KDD 2013
- 🕴 The YouTube video recommendation system, RecSys 2010
- Google news personalization: scalable online collaborative filtering, WWW 2007
Talks
Blog posts
- Building Large Scale Recommenders using Cloud TPUs, 2022-10-07
- Advances in TF-Ranking, 2021-07-21
- Scholar Recommendations Reloaded! Fresher, More Relevant, Easier, 2021-02-12
- Announcing ScaNN: Efficient Vector Similarity Search, 2020-07-28
- Advanced machine learning helps Play Store users discover personalised apps, 2019-11-18
Software
- Trax: end-to-end DL library with focus on clear code and speed; used for transformer models, successor to tensor2tensor.
- rax, learning-to-rank framework for JAX, paper
- RecSim blog post
- ScaNN (Scalable Nearest Neighbors)
- TensorFlow Recommenders see also TF Recommenders SIG and TF recommender add-ons
- TensorFlow Ranking
External link
- https://abc.xyz/
- Wikipedia article about Alphabet
- GitHub repositories:
- Google Research -- Google Research has a mono-repo with most of their projects.
- DeepMind
- YouTube