wangcunxiang's repositories

LLM-Factuality-Survey

The repository for the survey paper <<Survey on Large Language Models Factuality: Knowledge, Retrieval and Domain-Specificity>>

SemEval2020-Task4-Commonsense-Validation-and-Explanation

This project is special for SemEval2020 task4 Commonsense Validation and Explanantion

Sen-Making-and-Explanation

For <Does It Make Sense? And Why? A Pilot Study for Sense Making and Explanation>. Accepted by ACL2019

QA-Eval

The repository for paper <Evaluating Open-QA Evaluation>

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Can-PLM-Serve-as-KB-for-CBQA

The code and data for ACL2021 paper <Can Generative Pre-trained Language Models Serve as Knowledge Bases for Closed-book QA?>

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RFiD

The repository for the paper <RFiD: Towards Rational Fusion-in-Decoder for Open-Domain Question Answering>

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Domain-Representation-for-Knowledge-Graph-Embedding

the project for Domain Representation for Knowledge Graph Embedding

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PaintBoard

The second plan

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Exploring-Generalization-Ability-of-PLMs-on-Arithmetic-and-Logical-Reasoning

The data for NLPCC2021 paper <Exploring Generalization Ability of Pretrained Language Models onArithmetic and Logical Reasoning>

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CSrankings

A web app for ranking computer science departments according to their research output in selective venues.

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fairseq

Facebook AI Research Sequence-to-Sequence Toolkit written in Python.

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hello-world

hello-world

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kg-bert

KG-BERT: BERT for Knowledge Graph Completion

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ML-NLP

此项目是机器学习(Machine Learning)、深度学习(Deep Learning)、NLP面试中常考到的知识点和代码实现,也是作为一个算法工程师必会的理论基础知识。

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neural-graph-to-seq-mp

Code corresponding to our paper "A Graph-to-Sequence Model for AMR-to-Text Generation"

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samples-for-ai

Samples for getting started with deep learning across TensorFlow, CNTK, Theano and more.

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self-attentive-parser

High-accuracy NLP parser with models for 11 languages.

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Self-Rewarding-Language-Models

This is work done by the Oxen.ai Community, trying to reproduce the Self-Rewarding Language Model paper from MetaAI.

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TuckER

TuckER: Tensor Factorization for Knowledge Graph Completion

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