Issue #14
September 1, 2019
- 1. Understanding the Different Types of Machine Learning Models [Towards Data Science]
- 2. In Defense of The Small Social Network [One Zero]
- 3. To Build Truly Intelligent Machines, Teach Them Cause and Effect [Quanta Magazine]
- 4. Chris Manning: How computers are learning to understand language [Stanford]
- 5. Math in Data Science [Dataquest]
- 6. Linked Lists in Detail with Python Examples: Single Linked Lists [Stack Abuse]
- 7. Machine Learning for Everyone [vas3k.com]
- • Science needs to rethink how it interacts with big data (N. H. Robinson, J. Hamman, R. Abernathey)
- • Deep, Skinny Neural Networks are not Universal Approximators (J. Johnson)
- • Exponential expressivity in deep neural networks through transient chaos (B. Poole, S. Lahiri, M. Raghu, J. Sohl-Dickstein, S. Ganguli)
- • The loss surface and expressivity of deep convolutional neural networks (Q. Nguyen, M. Hein)
- • Network Communities of Dynamical Influence (R. Clark, G. Punzo, M. Macdonald)
- • Superhuman AI for multiplayer poker (N. Brown, T. Sandholm)
- • Deep Learning and MARS: A Connection (M. Kohler, A. Krzyzak, S. Langer)
- • Theoretical Perspectives on Biological Machines (M. L. Mugnai, C. Hyeon, M. Hinczewski, D. Thirumalai)
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