Fast and Accurate Seismic Tomography via Deep Learning
         Deep Learning: Algorithms and Applications (SPRINGER-VERLAG, 2019).    
          
    
    
  Neural networks and probabilistic models have different and in many ways complementary strengths and weaknesses: neural networks are flexible and support efficient inference, but rely on large quantities of labeled training data. Probabilistic models can learn from fewer examples, but in many cases remain limited by time-consuming inference algorithms. Thus, both classes of models have drawbacks that both limit their engineering applications and prevent them from being fully satisfying as process models of human learning.
