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Accueil
SOTA
Réponse à des questions
Question Answering On Wikiqa
Question Answering On Wikiqa
Métriques
MAP
MRR
Résultats
Résultats de performance de divers modèles sur ce benchmark
Columns
Nom du modèle
MAP
MRR
Paper Title
Repository
Paragraph vector
0.5110
0.5160
Distributed Representations of Sentences and Documents
DeBERTa-Large + SSP
0.901
0.914
Pre-training Transformer Models with Sentence-Level Objectives for Answer Sentence Selection
-
HyperQA
0.712
0.727
Hyperbolic Representation Learning for Fast and Efficient Neural Question Answering
PWIM
0.7090
0.7234
-
-
Paragraph vector (lexical overlap + dist output)
0.5976
0.6058
Distributed Representations of Sentences and Documents
SWEM-concat
0.6788
0.6908
Baseline Needs More Love: On Simple Word-Embedding-Based Models and Associated Pooling Mechanisms
LSTM (lexical overlap + dist output)
0.682
0.6988
Neural Variational Inference for Text Processing
Bigram-CNN (lexical overlap + dist output)
0.6520
0.6652
Deep Learning for Answer Sentence Selection
TANDA-RoBERTa (ASNQ, WikiQA)
0.920
0.933
TANDA: Transfer and Adapt Pre-Trained Transformer Models for Answer Sentence Selection
-
RE2
0.7452
0.7618
Simple and Effective Text Matching with Richer Alignment Features
PairwiseRank + Multi-Perspective CNN
0.7010
0.7180
Noise Contrastive Estimation and Negative Sampling for Conditional Models: Consistency and Statistical Efficiency
-
RoBERTa-Base + SSP
0.887
0.899
Pre-training Transformer Models with Sentence-Level Objectives for Answer Sentence Selection
-
LSTM
0.6552
0.6747
Neural Variational Inference for Text Processing
AP-CNN
0.6886
0.6957
Attentive Pooling Networks
CNN-Cnt
0.6520
0.6652
-
-
Bigram-CNN
0.6190
0.6281
Deep Learning for Answer Sentence Selection
RLAS-BIABC
0.924
0.908
RLAS-BIABC: A Reinforcement Learning-Based Answer Selection Using the BERT Model Boosted by an Improved ABC Algorithm
-
MMA-NSE attention
0.6811
0.6993
Neural Semantic Encoders
LDC
0.7058
0.7226
Sentence Similarity Learning by Lexical Decomposition and Composition
Comp-Clip + LM + LC
0.764
0.784
A Compare-Aggregate Model with Latent Clustering for Answer Selection
-
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