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ICML (International Conference on Machine Learning)

2020

Real, E., Liang, C., So, D. and Le, Q., 2020, November. AutoML-zero: Evolving machine learning algorithms from scratch. In International Conference on Machine Learning (pp. 8007-8019). PMLR. [ www | pdf | C++ ]

Angermueller, C., Belanger, D., Gane, A., Mariet, Z., Dohan, D., Murphy, K., Colwell, L. and Sculley, D., 2020, November. Population-based black-box optimization for biological sequence design. In International Conference on Machine Learning (pp. 324-334). PMLR. [ www | pdf ] (Ensemble)

Pacchiano, A., Parker-Holder, J., Tang, Y., Choromanski, K., Choromanska, A. and Jordan, M., 2020, November. Learning to score behaviors for guided policy optimization. In International Conference on Machine Learning (pp. 7445-7454). PMLR. [ www | pdf | Python ]

Goyal, A. and Deng, J., 2020, November. Packit: A virtual environment for geometric planning. In International Conference on Machine Learning (pp. 3700-3710). PMLR. [ www | pdf | Python ] (GA)

Majumdar, S., Khadka, S., Miret, S., Mcaleer, S. and Tumer, K., 2020, November. Evolutionary reinforcement learning for sample-efficient multiagent coordination. In International Conference on Machine Learning (pp. 6651-6660). PMLR. [ www | pdf | Python ]

Li, C. and Sun, Z., 2020, November. Evolutionary topology search for tensor network decomposition. In International Conference on Machine Learning (pp. 5947-5957). PMLR. [ www | pdf | Python ] (Distributed GA on a Cluster of GPUs)

Xu, J., Tian, Y., Ma, P., Rus, D., Sueda, S. and Matusik, W., 2020, November. Prediction-guided multi-objective reinforcement learning for continuous robot control. In International Conference on Machine Learning (pp. 10607-10616). PMLR. [ www | pdf | Python ]

2019

So, D., Le, Q. and Liang, C., 2019, May. The evolved transformer. In International Conference on Machine Learning (pp. 5877-5886). PMLR. [ www | pdf | Python ]

Brookes, D., Park, H. and Listgarten, J., 2019, May. Conditioning by adaptive sampling for robust design. In International Conference on Machine Learning (pp. 773-782). PMLR.

Balduzzi, D., Garnelo, M., Bachrach, Y., Czarnecki, W., Perolat, J., Jaderberg, M. and Graepel, T., 2019, May. Open-ended learning in symmetric zero-sum games. In International Conference on Machine Learning (pp. 434-443). PMLR. [ www | pdf ]

Khadka, S., Majumdar, S., Nassar, T., Dwiel, Z., Tumer, E., Miret, S., Liu, Y. and Tumer, K., 2019, May. Collaborative evolutionary reinforcement learning. In International Conference on Machine Learning (pp. 3341-3350). PMLR. [ www | pdf | Python ]

Maheswaranathan, N., Metz, L., Tucker, G., Choi, D. and Sohl-Dickstein, J., 2019, May. Guided evolutionary strategies: Augmenting random search with surrogate gradients. In International Conference on Machine Learning (pp. 4264-4273). PMLR. [ www | pdf | Python ]

Ho, D., Liang, E., Chen, X., Stoica, I. and Abbeel, P., 2019, May. Population based augmentation: Efficient learning of augmentation policy schedules. In International Conference on Machine Learning (pp. 2731-2741). PMLR. [ www | pdf | Python ]

2018

Choromanski, K., Rowland, M., Sindhwani, V., Turner, R. and Weller, A., 2018, July. Structured evolution with compact architectures for scalable policy optimization. In International Conference on Machine Learning (pp. 970-978). PMLR. [ www | pdf ]

Miconi, T., Stanley, K. and Clune, J., 2018, July. Differentiable plasticity: Training plastic neural networks with backpropagation. In International Conference on Machine Learning (pp. 3559-3568). PMLR. [ www | pdf ]

Suganuma, M., Ozay, M. and Okatani, T., 2018, July. Exploiting the potential of standard convolutional autoencoders for image restoration by evolutionary search. In International Conference on Machine Learning (pp. 4771-4780). PMLR. [ www | pdf | Python ]

Pham, H., Guan, M., Zoph, B., Le, Q. and Dean, J., 2018, July. Efficient neural architecture search via parameters sharing. In International Conference on Machine Learning (pp. 4095-4104). PMLR. [ www | pdf ]

Colas, C., Sigaud, O. and Oudeyer, P.Y., 2018, July. Gep-pg: Decoupling exploration and exploitation in deep reinforcement learning algorithms. In International Conference on Machine Learning (pp. 1039-1048). PMLR. [ www | pdf | Python ]

Dai, H., Li, H., Tian, T., Huang, X., Wang, L., Zhu, J. and Song, L., 2018, July. Adversarial attack on graph structured data. In International Conference on Machine Learning (pp. 1115-1124). PMLR. [ www | pdf ]

2017

Real, E., Moore, S., Selle, A., Saxena, S., Suematsu, Y.L., Tan, J., Le, Q.V. and Kurakin, A., 2017, July. Large-scale evolution of image classifiers. In International Conference on Machine Learning (pp. 2902-2911). PMLR. [ www | pdf ]

2009

Yi, S., Wierstra, D., Schaul, T. and Schmidhuber, J., 2009, June. Stochastic search using the natural gradient. In International Conference on Machine Learning (pp. 1161-1168). ACM. [ www ]

1995

Baluja, S. and Caruana, R., 1995. Removing the genetics from the standard genetic algorithm. In International Conference on Machine Learning (pp. 38-46). Morgan Kaufmann. [ www ]

1993

Baluja, S., 1993, July. The evolution of genetic algorithms: Towards massive parallelism. In International Conference on Machine Learning (pp. 1-8). Morgan Kaufmann. [ www ]

1990

De Garis, H., 1990. Genetic programming: Building artificial nervous systems using genetically programmed neural network modules. In International Conference on Machine Learning 1990 (pp. 132-139). Morgan Kaufmann. [ www ]

1988

Caruana, R.A. and Schaffer, J.D., 1988. Representation and hidden bias: Gray vs. binary coding for genetic algorithms. In International Conference on Machine Learning (pp. 153-161). Morgan Kaufmann. [ www ]