ccg2lambda VS nli4ct

Compare ccg2lambda vs nli4ct and see what are their differences.

ccg2lambda

Provide Semantic Parsing solutions and Natural Language Inferences for multiple languages following the idea of the syntax-semantics interface. (by mynlp)
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ccg2lambda nli4ct
1 1
229 11
0.4% -
4.8 4.4
5 months ago 11 days ago
Python Jupyter Notebook
Apache License 2.0 -
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ccg2lambda

Posts with mentions or reviews of ccg2lambda. We have used some of these posts to build our list of alternatives and similar projects.

nli4ct

Posts with mentions or reviews of nli4ct. We have used some of these posts to build our list of alternatives and similar projects.
  • NLI4CT: Multi-Evidence Natural Language Inference for Clinical Trial Reports
    1 project | /r/BotNewsPreprints | 8 May 2023
    How can we interpret and retrieve medical evidence to support clinical decisions? Clinical trial reports (CTR) amassed over the years contain indispensable information for the development of personalized medicine. However, it is practically infeasible to manually inspect over 400,000+ clinical trial reports in order to find the best evidence for experimental treatments. Natural Language Inference (NLI) offers a potential solution to this problem, by allowing the scalable computation of textual entailment. However, existing NLI models perform poorly on biomedical corpora, and previously published datasets fail to capture the full complexity of inference over CTRs. In this work, we present a novel resource to advance research on NLI for reasoning on CTRs. The resource includes two main tasks. Firstly, to determine the inference relation between a natural language statement, and a CTR. Secondly, to retrieve supporting facts to justify the predicted relation. We provide NLI4CT, a corpus of 2400 statements and CTRs, annotated for these tasks. Baselines on this corpus expose the limitations of existing NLI models, with 6 state-of-the-art NLI models achieving a maximum F1 score of 0.627. To the best of our knowledge, we are the first to design a task that covers the interpretation of full CTRs. To encourage further work on this challenging dataset, we make the corpus, competition leaderboard, website and code to replicate the baseline experiments available at: https://github.com/ai-systems/nli4ct

What are some alternatives?

When comparing ccg2lambda and nli4ct you can also consider the following projects:

nlp-recipes - Natural Language Processing Best Practices & Examples

survey_kit - Flutter library to create beautiful surveys (aligned with ResearchKit on iOS)

opencog - A framework for integrated Artificial Intelligence & Artificial General Intelligence (AGI)

TextFooler - A Model for Natural Language Attack on Text Classification and Inference

gluon-nlp - NLP made easy

SurveyKit - Android library to create beautiful surveys (aligned with ResearchKit on iOS)