Knowledge GraphsA collection of research on knowledge graphs
Stars: ✭ 845 (+1262.9%)
Learning-From-RulesImplementation of experiments in paper "Learning from Rules Generalizing Labeled Exemplars" to appear in ICLR2020 (https://openreview.net/forum?id=SkeuexBtDr)
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PC3-pytorchPredictive Coding for Locally-Linear Control (ICML-2020)
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ProQAProgressively Pretrained Dense Corpus Index for Open-Domain QA and Information Retrieval
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backpropBackprop makes it simple to use, finetune, and deploy state-of-the-art ML models.
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wefeWEFE: The Word Embeddings Fairness Evaluation Framework. WEFE is a framework that standardizes the bias measurement and mitigation in Word Embeddings models. Please feel welcome to open an issue in case you have any questions or a pull request if you want to contribute to the project!
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GrailQANo description or website provided.
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piafQuestion Answering annotation platform - Plateforme d'annotation
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ADNCAdvanced Differentiable Neural Computer (ADNC) with application to bAbI task and CNN RC task.
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TriB-QA吹逼我们是认真的
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REGALRepresentation learning-based graph alignment based on implicit matrix factorization and structural embeddings
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COVID19-IRQANo description or website provided.
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GLOM-TensorFlowAn attempt at the implementation of GLOM, Geoffrey Hinton's paper for emergent part-whole hierarchies from data
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PCC-pytorchA pytorch implementation of the paper "Prediction, Consistency, Curvature: Representation Learning for Locally-Linear Control"
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S-WMDCode for Supervised Word Mover's Distance (SWMD)
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image embeddingsUsing efficientnet to provide embeddings for retrieval
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word-benchmarksBenchmarks for intrinsic word embeddings evaluation.
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FlowQAImplementation of conversational QA model: FlowQA (with slight improvement)
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expmrcExpMRC: Explainability Evaluation for Machine Reading Comprehension
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contextualLSTMContextual LSTM for NLP tasks like word prediction and word embedding creation for Deep Learning
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Revisiting-Contrastive-SSLRevisiting Contrastive Methods for Unsupervised Learning of Visual Representations. [NeurIPS 2021]
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PersianNERNamed-Entity Recognition in Persian Language
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fastT5⚡ boost inference speed of T5 models by 5x & reduce the model size by 3x.
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exams-qaA Multi-subject High School Examinations Dataset for Cross-lingual and Multilingual Question Answering
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banglabertThis repository contains the official release of the model "BanglaBERT" and associated downstream finetuning code and datasets introduced in the paper titled "BanglaBERT: Language Model Pretraining and Benchmarks for Low-Resource Language Understanding Evaluation in Bangla" accpeted in Findings of the Annual Conference of the North American Chap…
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semanticilpQuestion Answering as Global Reasoning over Semantic Abstractions (AAAI-18)
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fuzzymaxCode for the paper: Don't Settle for Average, Go for the Max: Fuzzy Sets and Max-Pooled Word Vectors, ICLR 2019.
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RECCONThis repository contains the dataset and the PyTorch implementations of the models from the paper Recognizing Emotion Cause in Conversations.
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CONVEXAs far as we know, CONVEX is the first unsupervised method for conversational question answering over knowledge graphs. A demo and our benchmark (and more) can be found at
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TCEThis repository contains the code implementation used in the paper Temporally Coherent Embeddings for Self-Supervised Video Representation Learning (TCE).
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FUSIONPyTorch code for NeurIPSW 2020 paper (4th Workshop on Meta-Learning) "Few-Shot Unsupervised Continual Learning through Meta-Examples"
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MTL-AQAWhat and How Well You Performed? A Multitask Learning Approach to Action Quality Assessment [CVPR 2019]
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reprieveA library for evaluating representations.
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anatomeἈνατομή is a PyTorch library to analyze representation of neural networks
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lets-quizA quiz website for organizing online quizzes and tests. It's build using Python/Django and Bootstrap4 frameworks. 🤖
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VQ-APCVector Quantized Autoregressive Predictive Coding (VQ-APC)
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HARCode for WWW2019 paper "A Hierarchical Attention Retrieval Model for Healthcare Question Answering"
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ReQuestIndirect Supervision for Relation Extraction Using Question-Answer Pairs (WSDM'18)
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M-NMFAn implementation of "Community Preserving Network Embedding" (AAAI 2017)
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sisterSImple SenTence EmbeddeR
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causal-mlMust-read papers and resources related to causal inference and machine (deep) learning
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Fill-the-GAP[ACL-WS] 4th place solution to gendered pronoun resolution challenge on Kaggle
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EBIM-NLIEnhanced BiLSTM Inference Model for Natural Language Inference
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Word2VecfJavaWord2VecfJava: Java implementation of Dependency-Based Word Embeddings and extensions
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two-stream-cnnA two-stream convolutional neural network for learning abitrary similarity functions over two sets of training data
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dasemDanish Semantic analysis
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hcrn-videoqaImplementation for the paper "Hierarchical Conditional Relation Networks for Video Question Answering" (Le et al., CVPR 2020, Oral)
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CIANImplementation of the Character-level Intra Attention Network (CIAN) for Natural Language Inference (NLI) upon SNLI and MultiNLI corpus
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amrOfficial adversarial mixup resynthesis repository
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ParametricUMAP paperParametric UMAP embeddings for representation and semisupervised learning. From the paper "Parametric UMAP: learning embeddings with deep neural networks for representation and semi-supervised learning" (Sainburg, McInnes, Gentner, 2020).
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KitanaQAKitanaQA: Adversarial training and data augmentation for neural question-answering models
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