Skip to main content

A development platform for high-level NLP applications in Japanese

Project description

pyknp-eventgraph

EventGraph is a development platform for high-level NLP applications in Japanese. The core concept of EventGraph is event, a language information unit that is closely related to predicate-argument structure but more application-oriented. Events are linked to each other based on their syntactic and semantic relations.

Requirements

  • Python 3.6 or later
  • pyknp
  • graphviz

Installation

To install pyknp-eventgraph, use pip.

$ pip install pyknp-eventgraph

or

$ python setup.py install

Quick Tour

Step 1: Create an EventGraph

An EventGraph is built on language analysis given in a KNP format.

# Add imports.
from pyknp import KNP
from pyknp_eventgraph import EventGraph

# Parse a document.
document = ['彼女は海外勤務が長いので、英語がうまいに違いない。', '私はそう確信していた。']
knp = KNP()
analysis = [knp.parse(sentence) for sentence in document]

# Create an EventGraph.
evg = EventGraph.build(analysis)
print(evg)  # <EventGraph, #sentences: 2, #events: 3, #relations: 1>

Step 2: Extract Information

Users can obtain various information about language analysis via a simple interface.

Step 2.1: Sentence

# Extract sentences.
sentences = evg.sentences
print(sentences)
# [
#   <Sentence, sid: 1, ssid: 0, surf: 彼女は海外勤務が長いので、英語がうまいに違いない。>,
#   <Sentence, sid: 2, ssid: 1, surf: 私はそう確信していた。>
# ]

# Convert a sentence into various forms.
sentence = evg.sentences[0]
print(sentence.surf)   # 彼女は海外勤務が長いので、英語がうまいに違いない。
print(sentence.mrphs)  # 彼女 は 海外 勤務 が 長い ので 、 英語 が うまい に 違いない 。
print(sentence.reps)   # 彼女/かのじょ は/は 海外/かいがい 勤務/きんむ が/が 長い/ながい ので/ので 、/、 英語/えいご が/が 上手い/うまい に/に 違い無い/ちがいない 。/。

Step 2.2: Event

# Extract events.
events = evg.events
print(events)
# [
#   <Event, evid: 0, surf: 海外勤務が長いので、>,
#   <Event, evid: 1, surf: 彼女は英語がうまいに違いない。>,
#   <Event, evid: 2, surf: 私はそう確信していた。>
# ]

# Convert an event into various forms.
event = evg.events[0]
print(event.surf)              # 海外勤務が長いので、
print(event.mrphs)             # 海外 勤務 が 長い ので 、
print(event.normalized_mrphs)  # 海外 勤務 が 長い
print(event.reps)              # 海外/かいがい 勤務/きんむ が/が 長い/ながい ので/ので 、/、
print(event.normalized_reps)   # 海外/かいがい 勤務/きんむ が/が 長い/ながい
print(event.content_rep_list)  # ['海外/かいがい', '勤務/きんむ', '長い/ながい']

# Extract an event's PAS.
pas = event.pas
print(pas)            # <PAS, predicate: 長い/ながい, arguments: {ガ: 勤務/きんむ}>
print(pas.predicate)  # <Predicate, type: 形, surf: 長い>
print(pas.arguments)  # defaultdict(<class 'list'>, {'ガ': [<Argument, case: ガ, surf: 勤務が>]})

# Extract an event's features.
features = event.features
print(features)  # <Features, modality: None, tense: 非過去, negation: False, state: 状態述語, complement: False>

Step 2.3: Event-to-event Relation

# Extract event-to-event relations.
relations = evg.relations
print(relations)  # [<Relation, label: 原因・理由, modifier_evid: 0, head_evid: 1>]

# Take a closer look at an event-to-event relation
relation = relations[0]
print(relation.label)     # 原因・理由
print(relation.surf)      # ので
print(relation.modifier)  # <Event, evid: 0, surf: 海外勤務が長いので、>
print(relation.head)      # <Event, evid: 1, surf: 彼女は英語がうまいに違いない。>

Step 3: Seve/Load an EventGraph

Users can save and load an EventGraph by serializing it as a JSON object.

# Save an EventGraph as a JSON file.
evg.save('evg.json')

# Load an EventGraph from a JSON file.
with open('evg.json') as f:
    evg = EventGraph.load(f)

Step 4: Visualize an EventGraph

Users can visualize an EventGraph using graphviz.

from pyknp_eventgraph import make_image
make_image(evg, 'evg.svg')  # Currently, only supports 'svg'.

Advanced Usage

Merging modifiers

By merging a modifier event to the modifiee, users can construct a larger information unit.

from pyknp import KNP
from pyknp_eventgraph import EventGraph

document = ['もっととろみが持続する作り方をして欲しい。']
knp = KNP()
analysis = [knp.parse(sentence) for sentence in document]

evg = EventGraph.build(analysis)
print(evg)  # <EventGraph, #sentences: 1, #events: 2, #relations: 1>

# Investigate the relation.
relation = evg.relations[0]
print(relation)           # <Relation, label: 連体修飾, modifier_evid: 0, head_evid: 1>
print(relation.modifier)  # <Event, evid: 0, surf: もっととろみが持続する>
print(relation.head)      # <Event, evid: 1, surf: 作り方をして欲しい。>

# To merge modifier events, enable `include_modifiers`.
print(relation.head.surf)                           # 作り方をして欲しい。
print(relation.head.surf_(include_modifiers=True))  # もっととろみが持続する作り方をして欲しい。

# Other formats also support `include_modifiers`.
print(relation.head.mrphs_(include_modifiers=True))  # もっと とろみ が 持続 する 作り 方 を して 欲しい 。
print(relation.head.normalized_mrphs_(include_modifiers=True))  # もっと とろみ が 持続 する 作り 方 を して 欲しい

Binary serialization

When an EventGraph is serialized in a JSON format, it will lose some functionality, including access to KNP objects and modifier merging. To keep full functionality, use Python's pickle utility for serialization.

# Save an EventGraph using Python's pickle utility.
evg.save('evg.pkl', binary=True)

# Load an EventGraph using Python's pickle utility.
with open('evg.pkl', 'rb') as f:
    evg_ = EventGraph.load(f, binary=True)

CLI

EventGraph Construction

$ echo '彼女は海外勤務が長いので、英語がうまいに違いない。' | jumanpp | knp -tab | evg -o example-eventgraph.json

EventGraph Visualization

$ evgviz example-eventgraph.json example-eventgraph.svg

Documents

https://pyknp-eventgraph.readthedocs.io/en/latest/

Authors

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

pyknp-eventgraph-6.1.5.tar.gz (29.4 kB view details)

Uploaded Source

Built Distribution

pyknp_eventgraph-6.1.5-py3-none-any.whl (33.7 kB view details)

Uploaded Python 3

File details

Details for the file pyknp-eventgraph-6.1.5.tar.gz.

File metadata

  • Download URL: pyknp-eventgraph-6.1.5.tar.gz
  • Upload date:
  • Size: 29.4 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: poetry/1.0.5 CPython/2.7.16 Darwin/20.3.0

File hashes

Hashes for pyknp-eventgraph-6.1.5.tar.gz
Algorithm Hash digest
SHA256 aa94db659dd9ce9da27946b8d1ac3146937b656e0c2a99dbbd67b491463d25b7
MD5 3f6c165cf24eb24a06394de621f9df1e
BLAKE2b-256 3d338bfbe4a7556863647e7b276ef9541ddf9b62feee5c820e23528560982d15

See more details on using hashes here.

File details

Details for the file pyknp_eventgraph-6.1.5-py3-none-any.whl.

File metadata

File hashes

Hashes for pyknp_eventgraph-6.1.5-py3-none-any.whl
Algorithm Hash digest
SHA256 0e7277889aea3cdc81e63b4dbbe066b15c4c6e4b119789f3c2022212d9b21e36
MD5 7901a58187ed179d1faa685edbf5e635
BLAKE2b-256 5517570b9a87da7900a4d079692b1f76b25a49d2eb5220609bc9d317d08f76cb

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page