This code implements constituency parse tree aggregation

Related tags

Deep LearningCPTAM
Overview

README

This code implements constituency parse tree aggregation.

Folder details

  • code: This folder contains the code that implements constituency parse tree aggregation.
  • sample_dataset: This folder contains 100 sentences from Penn Treebank dataset. This is the input for the method. Ground Truth is only used for evaluation purposes.

Code description

  • hanlp_resources.py: The output of Hanlp parser follows a different format. This code is used to convert it into the format of other parsers.
  • resources.py: This code does character indexing of the input, obtains cluster list and stores the formatted input into a dictionary.
  • compatibility.py: This code contains implementation of maximum independent set.
  • medcpt.py: This code does constituency parse tree aggregation.
  • evaluation.py: This code does performance evaluation and stores the results as a dictionary file.
  • print_results.py: This code prints evaluation results.

Input parsers

Dataset details

Baseline Aggregation methods

The implementation of baseline aggregation methods can be found at https://evolution.genetics.washington.edu/phylip/getme-new1.html

Steps for code execution

Required packages

  • python 3
  • pickle
  • numpy

Execution flow

  • python resources.py
  • python medcpt.py
  • python evaluation.py
  • python print_results.py
Owner
Adithya Kulkarni
Adithya Kulkarni
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