structural-probes
Codebase for testing whether hidden states of neural networks encode discrete structures.
Based on the paper A Structural Probe for Finding Syntax in Word Representations.
See the blog post on structural probes for a brief introduction.
Installing & Getting Started
-
Clone the repository.
git clone https://github.com/john-hewitt/structural-probes/ cd structural-probes -
[Optional] Construct a virtual environment for this project. Only
python3is supported.conda create --name sp-env conda activate sp-env -
Install the required packages. This mainly means
pytorch,scipy,numpy,seaborn, etc. Look at pytorch.org for the PyTorch installation that suits you and install it; it won't be installed viarequirements.txt. Everything in the repository will use a GPU if available, but if none is available, it will detect so and just use the CPU, so use the pytorch install of your choice.conda install --file requirements.txt pip install pytorch-pretrained-bert -
Download some pre-packaged data from the English Universal Dependencies (EWT) dataset and pretrained probes to get your feet wet.
bash ./download_example.shThis will make the directory
example/data, and in it will be 9 files, 3 for each of train,dev,test.en_ewt-ud-{train,dev,test}.conllu: the parsed language dataen_ewt-ud-{train,dev,test}.txt: whitespace-tokenized, sentence-per-line language data.en_ewt-ud-{train,dev,test}.elmo-layers.hdf5: the ELMo hidden states for each sentence of the language data, constructed by running elmo on the.txtfiles.
-
Test a pre-trained structural probe on
BERTlargewith our demo script!printf "The chef that went to the stores was out of food" | python structural-probes/run_demo.py example/demo-bert.yamlThe script will make a new directory under
example/results/and store some neat visualizations there. It will use pre-trained probe parameters stored atexample/data, downloaded withdownload_example.sh. Try out some other sentences too! -
Run an experiment using an example experiment configuration, and take a look at the resultant reporting!
python structural-probes/run_experiment.py example/config/prd_en_ewt-ud-sample.yamlThe path to a new directory containing the results of the experiment will be in the first few lines of the logging output of the script. Once you go there, you can see dev-pred*.png: some distance matrices printed by the script, as well as files containing the quantitative reporting results, like
dev.uuas, the unlabeled undirected attachment score. These will all be very low, since the probe was trained on very little data!
Run a pretrained structural probe on BERT-large quickly on the command line.
It's easy to get predictions on a sentence (or file of sentences) using our demo script and the pre-trained structural probes we release. We use pytorch-pretrained-bert to get BERT subword embeddings for each sentence; it should be installed during setup of the repository.
Make sure you've run download_example.sh; this will download two probe parameter files to example/data/. Also make sure you've installed all dependencies. One is a distance probe on the 16th hidden layer of BERT large, and the other is a depth probe on the same layer. The configuration file example/demo-bert.yaml has the right paths already plugged in; just pipe text into the demo file, as follows:
printf "The chef that went to the stores was out of food" | python structural-probes/run_demo.py example/demo-bert.yaml
If you want to run multiple sentences at once, you can either do so via printf:
printf "The chef that went to the stores was out of food\nThe chef that went to the stores and talked to the parents was out of food" | python structural-probes/run_demo.py example/demo-bert.yaml
Or piping/redirecting a file to stdin:
cat my_set.txt | python structural-probes/run_demo.py example/demo-bert.yaml
The script will print out a directory to which it has written visualizations of both parse depths and parse distances as predicted by a distance probe and a depth probe. You'll also see demo.tikz, which is a bit of LaTeX for the tikz-dependency package. With tikz-dependency in the same directory as your LaTeX file, you can plop this bit of LaTeX in a figure environment and see the minimum spanning tree it constructs. It'd look a bit like this:
\documentclass{article}
\usepackage{tikz-dependency}
\usepackage{tikz}
\pgfkeys{%
/depgraph/reserved/edge style/.style = {%
white, -, >=stealth, % arrow properties
black, solid, line cap=round, % line properties
rounded corners=2, % make corners round
},%
}
\begin{document}
\begin{figure}
\centering
\small
\begin{dependency}[hide label, edge unit distance=.5ex]
\begin{deptext}[column sep=0.05cm]
The\& chef\& who\& ran\& to\& the\& stores\& is\& out\& of\& food \\
\end{deptext}
\depedge[edge style={red}, edge below]{8}{9}{.}
\depedge[edge style={red}, edge below]{5}{7}{.}
\depedge[edge style={red}, edge below]{4}{5}{.}
\depedge[edge style={red}, edge below]{1}{2}{.}
\depedge[edge style={red}, edge below]{6}{7}{.}
\depedge[edge style={red}, edge below]{9}{10}{.}
\depedge[edge style={red}, edge below]{10}{11}{.}
\depedge[edge style={red}, edge below]{3}{4}{.}
\depedge[edge style={red}, edge below]{2}{4}{.}
\depedge[edge style={red}, edge below]{2}{8}{.}
\end{dependency}
\end{figure}
\end{document}
Which results in a PDF with the following:
Note that your text should be whitespace-tokenized! If you want to evaluate on a test set with gold parses, or if you want to train your own structural probes, read on.
The experiment config file
Experiments run with this repository are specified via yaml files that completely describe the experiment (except the random seed.) In this section, we go over each top-level key of the experiment config.
Dataset:
observation_fieldnames: the fields (columns) of the conll-formatted corpus files to be used. Must be in the same order as the columns of the corpus. Each field will be accessable as an attribute of eachObservationclass (e.g.,observation.sentencecontains the sequence of tokens comprising the sentence.)corpus: The location of the train, dev, and test conll-formatted corpora files. Each oftrain_path,dev_path,test_pathwill be taken as relative to therootfield.embeddings: The location of the train, dev, and test pre-computed embedding files (ignored if not applicable. Each oftrain_path,dev_path,test_pathwill be taken as relative to therootfield. -typeis ignored.batch_size: The number of observations to put into each batch for training the probe. 20 or so should be great.
dataset:
observation_fieldnames:
- index
- sentence
- lemma_sentence
- upos_sentence
- xpos_sentence
- morph
- head_indices
- governance_relations
- secondary_relations
- extra_info
- embeddings
corpus:
root: example/data/en_ewt-ud-sample/
train_path: en_ewt-ud-train.conllu
dev_path: en_ewt-ud-dev.conllu
test_path: en_ewt-ud-test.conllu
embeddings:
type: token #{token,subword}
root: example/data/en_ewt-ud-sample/
train_path: en_ewt-ud-train.elmo-layers.hdf5
dev_path: en_ewt-ud-dev.elmo-layers.hdf5
test_path: en_ewt-ud-test.elmo-layers.hdf5
batch_size: 40
Model
hidden_dim: The dimensionality of the representations to be probed. The probe parameters constructed will be of shape (hidden_dim, maximum_rank)embedding_dim: ignoredmodel_type: One ofELMo-disk,BERT-disk,ELMo-decay,ELMo-random-projectionas of now. Used to help determine whichDatasetclass should be constructed, as well as which model will construct the representations for the probe. TheDecay0andProj0baselines in the paper are fromELMo-decayandELMo-random-projection, respectively. In the future, will be used to specify other PyTorch models.use_disk: Set toTrueto assume that pre-computed embeddings should be stored with eachObservation; Set toFalseto use the words in some downstream model (this is not supported yet...)model_layer: The index of the hidden layer to be used by the probe. For example,ELMomodels can use layers0,1,2; BERT-base models have layers0through11; BERT-large0through23.tokenizer: If a model will be used to construct representations on the fly (as opposed to using embeddings saved to disk) then a tokenizer will be needed. Thetypestring will specify the kind of tokenizer used. Thevocab_pathis the absolute path to a vocabulary file to be used by the tokenizer.
model:
hidden_dim: 1024 # ELMo hidden dim
#embedding_dim: 1024 # ELMo word embedding dim
model_type: ELMo-disk # BERT-disk, ELMo-disk,
tokenizer:
type: word
vocab_path: example/vocab.vocab
use_disk: True
model_layer: 2 # BERT-base: {1,...,12}; ELMo: {1,2,3}
Probe, probe-training
task_signature: Specifies the function signature of the task. Currently, can be eitherword, for parse depth (or perhaps labeling) tasks; orword_pairfor parse distance tasks.task_name: A unique name for each task supported by the repository. Right now, this includesparse-depthandparse-distance.maximum_rank: Specifies the dimensionality of the space to be projected into, ifpsd_parameters=True. The projection matrix is of shape (hidden_dim, maximum_rank). The rank of the subspace is upper-bounded by this value. Ifpsd_parameters=False, then this is ignored.psd_parameters: though not reported in the paper, theparse_distanceandparse_depthtasks can be accomplished with a non-PSD matrix inside the quadratic form. All experiments for the paper were run withpsd_parameters=True, but settingpsd_parameters=Falsewill simply construct a square parameter matrix. See the docstring ofprobe.TwoWordNonPSDProbeandprobe.OneWordNonPSDProbefor more info.diagonal: Ignored.prams_path: The path, relative toargs['reporting']['root'], to which to save the probe parameters.epochs: The maximum number of epochs to which to train the probe. (Regardless, early stopping is performed on the development loss.)loss: A string to specify the loss class. Right now, onlyL1is available. The class withinloss.pywill be specified by a combination of this and the task name, since for example distances and depths have different special requirements for their loss functions.
probe:
task_signature: word_pair # word, word_pair
task_name: parse-distance
maximum_rank: 32
psd_parameters: True
diagonal: False
params_path: predictor.params
probe_training:
epochs: 30
loss: L1
Reporting
root: The path to the directory in which a new subdirectory should be constructed for the results of this experiment.observation_paths: The paths, relative toroot, to which to write the observations formatted for quick reporting later on.prediction_paths: The paths, relative toroot, to which to write the predictions of the model.reporting_methods: A list of strings specifying the methods to use to report and visualize results from the experiment. Forparse-distance, the valid methods arespearmanr,uuas,write_predictions, andimage_examples. When reportinguuas, sometikz-dependencyexamples are written to disk as well. Forparse-depth, the valid methods arespearmanr,root_acc,write_predictions, andimage_examples. Note thatimage_exampleswill be ignored for the test set.
reporting:
root: example/results
observation_paths:
train_path: train.observations
dev_path: dev.observations
test_path: test.observations
prediction_paths:
train_path: train.predictions
dev_path: dev.predictions
test_path: test.predictions
reporting_methods:
- spearmanr
#- image_examples
- uuas
Reporting + visualization
It can be time-consuming to make nice visualizations and make sense of the results from a probing experiment, so this repository does a bit of work for you. This section goes over each of the reporting methods available (under args['reporting']['reporting_methods'] in the experiment config), and exmaples of results.
spearmanr: This reporting method calculates the spearman correlation between predicted (distances/depths) and true (distances/depths) as defined by gold parse trees. See the paper orreporting.pydocstrings for specifics. With this option enabled, you'll seedev.spearmanr, a TSV with an average Spearman correlation for each sentence length represented in the dev set, as well asdev.spearmanr-5-50-mean, which averages the sentence-average values for all sentence lengths between 5 and 50 (inclusive.)image_examples: This reporting method prints out true and predicted distance matrices aspngs for the first 20 examples in the split. These will be labeleddev-pred0.png,dev-gold0.png, etc. They'll look something like this:
uuas: This reporting method (only used byparse-distancetasks) will print the unlabeled undirected attachment score todev.uuas, and write the first 20 development examples' minimum spanning trees (for both gold and predicted distance matrices) in atikz-dependencyLaTeX code format, todev.tikz. Each sentence can be copy-pasted into a LaTeX doc for visualization. Then they'l look something like this:
root_acc: This reporting method (only used byparse-depthtasks) will print todev.root_accthe percentage of sentences where the least-deep word in the gold tree (the root) is also the least-deep according to the predicted depths.
Replicating PTB Results for the NAACL'19 Paper
As usual with the PTB, a bit of work has to be done in prepping data (and you have to have the unadulterated PTB data already, not the mangled language modeling benchmark version.)
To replicate our results on the PTB, you'll have to prep some data files. The prep scripts will need to be modified to use paths on your system, but the process is as follows:
- Have Stanford CoreNLP installed / on your java
classpath, and haveallennlpinstalled. - Convert the PTB constituency trees to Stanford Dependencies in
conllxformat, using the scriptscripts/convert_splits_to_depparse.sh. This will write a singleconllxfile for each of train/dev/test. (This uses CoreNLP.) - Convert the
conllxfiles to sentence-per-line whitespace-tokenized files, usingscripts/convert_conll_to_raw.py. - Use
scripts/convert_raw_to_bert.pyandscripts/convert_raw_to_elmo.shto take the sentencep-er-line whitespace-tokenized files and write BERT and ELMo vectors to disk inhdf5format. - Replace the data paths (and choose a results path) in the
yamlconfigs inexample/config/naacl19/*/*with the paths that point to yourconllxand.hdf5files as constructed in the above steps. These 118 experiment files specify the configuration of all the experiments that end up in the paper.
Experiments on new datasets or models
In the future I hope to streamline support for plugging in arbitrary PyTorch models in model.py, but because of subword models, tokenization, batching etc. this is beyond my current scope.
Right now, the official way to run experiments on new datasets and representation learners is:
- Have a
conllxfile for the train, dev, and test splits of your dataset. - Write contextual word representations to disk for each of the train, dev, and test split in
hdf5format, where the index of the sentence in theconllxfile is the key to thehdf5dataset object. That is, your dataset file should look a bit like{'0': <np.ndarray(size=(1,SEQLEN1,FEATURE_COUNT))>, '1':<np.ndarray(size=(1,SEQLEN1,FEATURE_COUNT))>...}, etc. Note here thatSEQLENfor each sentence must be the number of tokens in the sentence as specified by theconllxfile. - Edit a
configfile fromexample/configto match the paths to your data, as well as the hidden dimension and labels for the columns in theconllxfile. Look at the experiment config section of this README for more information therein. One potential gotcha is that you must have anxpos_sentencefield in your conllx (as labeled by your yaml config) since this will be used at evaluation time.
Citation
If you use this repository, please cite:
@InProceedings{hewitt2019structural,
author = "Hewitt, John and Manning, Christopher D.",
title = "A Structural Probe for Finding Syntax in Word Representations",
booktitle = "North American Chapter of the Association for Computational Linguistics: Human Language Technologies",
year = "2019",
publisher = "Association for Computational Linguistics",
location = "Minneapolis, USA",
}




