Anyway, in a paper published on arXiv yesterday, the Google DeepMind people report being able to train a feed-forward neural network to solve the parity problem, using a sophisticated gating mechanism and weight sharing between the layers. They also obtain state of the art or near state of the art results on other problems.
This result makes me update in the increasing direction my belief about the generality of neural networks.
Ah you beat me to it, I just read that paper as well.
Here is the abstract for those that haven’t read it yet:
This paper introduces Grid Long Short-Term Memory, a network of LSTM cells arranged in a multidimensional grid that can be applied to vectors, sequences or higher dimensional data such as images. The network differs from existing deep LSTM architectures in that the cells are connected between network layers as well as along the spatiotemporal dimensions of the data. It therefore provides a unified way of using LSTM for both deep and sequential computation. We apply the model to algorithmic tasks such as integer addition and determining the parity of random binary vectors. It is able to solve these problems for 15-digit integers and 250-bit vectors respectively. We then give results for three empirical tasks. We find that 2D Grid LSTM achieves 1.47 bits per character on the Wikipedia character prediction benchmark, which is state-of-the-art among neural approaches. We also observe that a two-dimensional translation model based on Grid LSTM outperforms a phrase-based reference system on a Chinese-to-English translation task, and that 3D Grid LSTM yields a near state-of-the-art error rate of 0.32% on MNIST.
Also, relevant to this discussion:
It is core to the problem that the k-bit string is given to the neural network as a whole through a single projection; considering one bit at a time and remembering the previous partial result in a recurrent or multi-step architecture reduces the problem of learning k-bit parity to the simple one of learning just 2-bit parity.
The version of the problem that humans can learn well is this easier reduction. Humans can not easily learn the hard version of the parity problem, which would correspond to a rapid test where the human is presented with a flash card with a very large number on it (60+ digits to rival the best machine result) and then must respond immediately. The fast response requirement is important to prevent using much easier multi-step serial algorithms.
Nice work!
Anyway, in a paper published on arXiv yesterday, the Google DeepMind people report being able to train a feed-forward neural network to solve the parity problem, using a sophisticated gating mechanism and weight sharing between the layers. They also obtain state of the art or near state of the art results on other problems.
This result makes me update in the increasing direction my belief about the generality of neural networks.
Ah you beat me to it, I just read that paper as well.
Here is the abstract for those that haven’t read it yet:
Also, relevant to this discussion:
The version of the problem that humans can learn well is this easier reduction. Humans can not easily learn the hard version of the parity problem, which would correspond to a rapid test where the human is presented with a flash card with a very large number on it (60+ digits to rival the best machine result) and then must respond immediately. The fast response requirement is important to prevent using much easier multi-step serial algorithms.