spaCy/website/api/_architecture/_nn-model.jade

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2017-10-03 15:27:22 +03:00
//- 💫 DOCS > API > ARCHITECTURE > NN MODEL ARCHITECTURE
p
| The parsing model is a blend of recent results. The two recent
| inspirations have been the work of Eli Klipperwasser and Yoav Goldberg at
| Bar Ilan#[+fn(1)], and the SyntaxNet team from Google. The foundation of
| the parser is still based on the work of Joakim Nivre#[+fn(2)], who
| introduced the transition-based framework#[+fn(3)], the arc-eager
| transition system, and the imitation learning objective. The model is
| implemented using #[+a(gh("thinc")) Thinc], spaCy's machine learning
| library. We first predict context-sensitive vectors for each word in the
| input:
+code.
(embed_lower | embed_prefix | embed_suffix | embed_shape)
>> Maxout(token_width)
>> convolution ** 4
p
| This convolutional layer is shared between the tagger, parser and NER,
| and will also be shared by the future neural lemmatizer. Because the
| parser shares these layers with the tagger, the parser does not require
| tag features. I got this trick from David Weiss's "Stack Combination"
| paper#[+fn(4)].
p
| To boost the representation, the tagger actually predicts a "super tag"
| with POS, morphology and dependency label#[+fn(5)]. The tagger predicts
| these supertags by adding a softmax layer onto the convolutional layer
| so, we're teaching the convolutional layer to give us a representation
| that's one affine transform from this informative lexical information.
| This is obviously good for the parser (which backprops to the
| convolutions too). The parser model makes a state vector by concatenating
| the vector representations for its context tokens. The current context
| tokens:
+table
+row
+cell #[code S0], #[code S1], #[code S2]
+cell Top three words on the stack.
+row
+cell #[code B0], #[code B1]
+cell First two words of the buffer.
+row
+cell.u-nowrap
| #[code S0L1], #[code S1L1], #[code S2L1], #[code B0L1],
| #[code B1L1]#[br]
| #[code S0L2], #[code S1L2], #[code S2L2], #[code B0L2],
| #[code B1L2]
+cell
| Leftmost and second leftmost children of #[code S0], #[code S1],
| #[code S2], #[code B0] and #[code B1].
+row
+cell.u-nowrap
| #[code S0R1], #[code S1R1], #[code S2R1], #[code B0R1],
| #[code B1R1]#[br]
| #[code S0R2], #[code S1R2], #[code S2R2], #[code B0R2],
| #[code B1R2]
+cell
| Rightmost and second rightmost children of #[code S0], #[code S1],
| #[code S2], #[code B0] and #[code B1].
p
| This makes the state vector quite long: #[code 13*T], where #[code T] is
| the token vector width (128 is working well). Fortunately, there's a way
| to structure the computation to save some expense (and make it more
| GPU-friendly).
p
| The parser typically visits #[code 2*N] states for a sentence of length
| #[code N] (although it may visit more, if it back-tracks with a
| non-monotonic transition#[+fn(4)]). A naive implementation would require
| #[code 2*N (B, 13*T) @ (13*T, H)] matrix multiplications for a batch of
| size #[code B]. We can instead perform one #[code (B*N, T) @ (T, 13*H)]
| multiplication, to pre-compute the hidden weights for each positional
| feature with respect to the words in the batch. (Note that our token
| vectors come from the CNN — so we can't play this trick over the
| vocabulary. That's how Stanford's NN parser#[+fn(3)] works — and why its
| model is so big.)
p
| This pre-computation strategy allows a nice compromise between
| GPU-friendliness and implementation simplicity. The CNN and the wide
| lower layer are computed on the GPU, and then the precomputed hidden
| weights are moved to the CPU, before we start the transition-based
| parsing process. This makes a lot of things much easier. We don't have to
| worry about variable-length batch sizes, and we don't have to implement
| the dynamic oracle in CUDA to train.
p
| Currently the parser's loss function is multilabel log loss#[+fn(6)], as
| the dynamic oracle allows multiple states to be 0 cost. This is defined
| as follows, where #[code gZ] is the sum of the scores assigned to gold
| classes:
+code.
(exp(score) / Z) - (exp(score) / gZ)
+bibliography
+item
| #[+a("https://www.semanticscholar.org/paper/Simple-and-Accurate-Dependency-Parsing-Using-Bidir-Kiperwasser-Goldberg/3cf31ecb2724b5088783d7c96a5fc0d5604cbf41") Simple and Accurate Dependency Parsing Using Bidirectional LSTM Feature Representations]
br
| Eliyahu Kiperwasser, Yoav Goldberg. (2016)
+item
| #[+a("https://www.semanticscholar.org/paper/A-Dynamic-Oracle-for-Arc-Eager-Dependency-Parsing-Goldberg-Nivre/22697256ec19ecc3e14fcfc63624a44cf9c22df4") A Dynamic Oracle for Arc-Eager Dependency Parsing]
br
| Yoav Goldberg, Joakim Nivre (2012)
+item
| #[+a("https://explosion.ai/blog/parsing-english-in-python") Parsing English in 500 Lines of Python]
br
| Matthew Honnibal (2013)
+item
| #[+a("https://www.semanticscholar.org/paper/Stack-propagation-Improved-Representation-Learning-Zhang-Weiss/0c133f79b23e8c680891d2e49a66f0e3d37f1466") Stack-propagation: Improved Representation Learning for Syntax]
br
| Yuan Zhang, David Weiss (2016)
+item
| #[+a("https://www.semanticscholar.org/paper/Deep-multi-task-learning-with-low-level-tasks-supe-S%C3%B8gaard-Goldberg/03ad06583c9721855ccd82c3d969a01360218d86") Deep multi-task learning with low level tasks supervised at lower layers]
br
| Anders Søgaard, Yoav Goldberg (2016)
+item
| #[+a("https://www.semanticscholar.org/paper/An-Improved-Non-monotonic-Transition-System-for-De-Honnibal-Johnson/4094cee47ade13b77b5ab4d2e6cb9dd2b8a2917c") An Improved Non-monotonic Transition System for Dependency Parsing]
br
| Matthew Honnibal, Mark Johnson (2015)
+item
| #[+a("http://cs.stanford.edu/people/danqi/papers/emnlp2014.pdf") A Fast and Accurate Dependency Parser using Neural Networks]
br
| Danqi Cheng, Christopher D. Manning (2014)
+item
| #[+a("https://www.semanticscholar.org/paper/Parsing-the-Wall-Street-Journal-using-a-Lexical-Fu-Riezler-King/0ad07862a91cd59b7eb5de38267e47725a62b8b2") Parsing the Wall Street Journal using a Lexical-Functional Grammar and Discriminative Estimation Techniques]
br
| Stefan Riezler et al. (2002)