Unreasonable effectiveness of unsupervised learning in identifying Majorana topology
By: Jacob Taylor, Haining Pan, Sankar Das Sarma
In unsupervised learning, the training data for deep learning does not come with any labels, thus forcing the algorithm to discover hidden patterns in the data for discerning useful information. This, in principle, could be a powerful tool in identifying topological order since topology does not always manifest in obvious physical ways (e.g., topological superconductivity) for its decisive confirmation. The problem, however, is that unsupervised learning is a difficult challenge, necessitating huge computing resources, which may not always work. In the current work, we combine unsupervised and supervised learning using an autoencoder to establish that unlabeled data in the Majorana splitting in realistic short disordered nanowires may enable not only a distinction between `topological' and `trivial', but also where their crossover happens in the relevant parameter space. This may be a useful tool in identifying topology in Majorana nanowires.
Similar Papers
Variational autoencoders understand knot topology
Statistical Mechanics
Teaches computers to untangle and create knotted strings.
Quantum circuit complexity and unsupervised machine learning of topological order
Quantum Physics
Helps quantum computers learn patterns better.
Supervised Learning of Random Neural Architectures Structured by Latent Random Fields on Compact Boundaryless Multiply-Connected Manifolds
Machine Learning (Stat)
Builds smarter brains that learn from messy, unpredictable data.