SOTAVerified

Data-to-Text Generation

A classic problem in natural-language generation (NLG) involves taking structured data, such as a table, as input, and producing text that adequately and fluently describes this data as output. Unlike machine translation, which aims for complete transduction of the sentence to be translated, this form of NLG is usually taken to require addressing (at least) two separate challenges: what to say, the selection of an appropriate subset of the input data to discuss, and how to say it, the surface realization of a generation.

( Image credit: Data-to-Text Generation with Content Selection and Planning )

Papers

Showing 101150 of 219 papers

TitleStatusHype
HTLM: Hyper-Text Pre-Training and Prompting of Language Models0
Impact of Model Size on Fine-tuned LLM Performance in Data-to-Text Generation: A State-of-the-Art Investigation0
Large Language Models as Span Annotators0
Learning Semantic Correspondences from Noisy Data-text Pairs by Local-to-Global Alignments0
Machine Translation Aided Bilingual Data-to-Text Generation and Semantic Parsing0
Machine Translation Pre-training for Data-to-Text Generation -- A Case Study in Czech0
Machine Translation Pre-training for Data-to-Text Generation - A Case Study in Czech0
Mapping Process for the Task: Wikidata Statements to Text as Wikipedia Sentences0
May the Force Be with Your Copy Mechanism: Enhanced Supervised-Copy Method for Natural Language Generation0
Modeling Comparative Logical Relation with Contrastive Learning for Text Generation0
Modeling Graph Structure via Relative Position for Text Generation from Knowledge Graphs0
MURMUR: Modular Multi-Step Reasoning for Semi-Structured Data-to-Text Generation0
Neural Data-to-Text Generation Based on Small Datasets: Comparing the Added Value of Two Semi-Supervised Learning Approaches on Top of a Large Language Model0
Neural Data-to-Text Generation via Jointly Learning the Segmentation and Correspondence0
Neural Data-to-Text Generation with Dynamic Content Planning0
Neural Data-to-Text Generation with LM-based Text Augmentation0
Neural Generation for Czech: Data and Baselines0
Neural Micro-Planning for Data to Text Generation Produces more Cohesive Text0
Neural Pipeline for Zero-Shot Data-to-Text Generation0
NILC at SR’20: Exploring Pre-Trained Models in Surface Realisation0
NILC at WebNLG+: Pretrained Sequence-to-Sequence Models on RDF-to-Text Generation0
NUIG-DSI’s submission to The GEM Benchmark 20210
On Hallucination and Predictive Uncertainty in Conditional Language Generation0
On Training Instance Selection for Few-Shot Neural Text Generation0
Open Domain Question Answering over Virtual Documents: A Unified Approach for Data and Text0
Operation-guided Neural Networks for High Fidelity Data-To-Text Generation0
PASS: A Dutch data-to-text system for soccer, targeted towards specific audiences0
Point Precisely: Towards Ensuring the Precision of Data in Generated Texts Using Delayed Copy Mechanism0
Probabilistic Verb Selection for Data-to-Text Generation0
R2D2: Relational Text Decoding with Transformers0
Refining Data for Text Generation0
SCOPE: A Self-supervised Framework for Improving Faithfulness in Conditional Text Generation0
Selective Token Generation for Few-shot Language Modeling0
Sticking to the Facts: Confident Decoding for Faithful Data-to-Text Generation0
ReTAG: Reasoning Aware Table to Analytic Text Generation0
Stylized Data-to-Text Generation: A Case Study in the E-Commerce Domain0
Survey of Hallucination in Natural Language Generation0
Table-To-Text generation and pre-training with TabT50
Technical Report for E2E NLG Challenge0
Text Generation with Exemplar-based Adaptive Decoding0
The CACAPO Dataset: A Multilingual, Multi-Domain Dataset for Neural Pipeline and End-to-End Data-to-Text Generation0
The Code2Text Challenge: Text Generation in Source Libraries0
The GEM Benchmark: Natural Language Generation, its Evaluation and Metrics0
The Natural Language Pipeline, Neural Text Generation and Explainability0
Time-aware Prompting for Text Generation0
TNT-NLG, System 1: Using a statistical NLG to massively augment crowd-sourced data for neural generation0
Towards Automatic Generation of Product Reviews from Aspect-Sentiment Scores0
Towards Faithful Neural Table-to-Text Generation with Content-Matching Constraints0
TrICy: Trigger-guided Data-to-text Generation with Intent aware Attention-Copy0
TWT: Table with Written Text for Controlled Data-to-Text Generation0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1Control Prefixes (A1, T5-large)BLEU67.32Unverified
2Control Prefixes (A1, A2, T5-large)BLEU67.15Unverified
3JointGT BaselineBLEU67.08Unverified
4FactT5BBLEU67.04Unverified
5T5B BaselineBLEU67.04Unverified
6FactJointGTBLEU66.89Unverified
7T5-large + Wiki + PositionBLEU66.07Unverified
8HTML (fine-tuning)BLEU65.4Unverified
9T5-smallBLEU65.05Unverified
10TrICy (trK = trk* = 0.24)BLEU64.73Unverified
#ModelMetricClaimedVerifiedStatus
1S_1^RBLEU68.6Unverified
2EDA_CSBLEU67.05Unverified
3TrICy (trK = 0)BLEU66.43Unverified
4SlugBLEU66.19Unverified
5TGenBLEU65.93Unverified
6EDA_CS (TL)BLEU65.8Unverified
7Sys1-PrimaryBLEU65.61Unverified
8ZhangBLEU65.45Unverified
9Self-memoryBLEU65.11Unverified
10GongBLEU64.22Unverified
#ModelMetricClaimedVerifiedStatus
1Control Prefixes (A1, A2, T5-large)BLEU62.27Unverified
2Control Prefixes (A1, T5-large)BLEU61.94Unverified
3T5-large + Wiki + PositionBLEU60.56Unverified
4T5-largeBLEU59.7Unverified
5T5-LargeBLEU57.1Unverified
6HTLM (prefix 0.1%)BLEU56.3Unverified
7DATATUNER_NO_FCBLEU52.9Unverified
8Transformer (Pipeline)BLEU51.68Unverified
#ModelMetricClaimedVerifiedStatus
1Control Prefixes (T5-large)BLEU (Test set)44.15Unverified
2DataTuner_FCBLEU (Test set)43.6Unverified
3TGenBLEU (Test set)40.73Unverified
4LSTMMETEOR (Validation set)0.39Unverified
5TGenMETEOR (Validation set)0.39Unverified
6BARTMETEOR (Validation set)0.37Unverified
7T5METEOR (Validation set)0.37Unverified
#ModelMetricClaimedVerifiedStatus
1HierarchicalEncoder + NR + IRBLEU17.96Unverified
2Hierarchical transformer encoder + conditional copyBLEU17.5Unverified
3Force-CopyBLEU17.26Unverified
4Neural Content Planning + conditional copyBLEU16.5Unverified
5MacroBLEU15.46Unverified
6Encoder-decoder + conditional copyBLEU14.19Unverified
#ModelMetricClaimedVerifiedStatus
1SeqPlanPrecision97.6Unverified
2MacroPrecision97.6Unverified
3Force-CopyPrecision95.4Unverified
4Hierarchical Transformer Encoder + conditional copyPrecision89.46Unverified
5Neural Content Planning + conditional copyPrecision87.47Unverified
6Encoder-decoder + conditional copyPrecision74.8Unverified
#ModelMetricClaimedVerifiedStatus
1T5-3BBLEU49.5Unverified
2LATTICE (T5-base)BLEU48.4Unverified
3BERT-to-BERTBLEU44Unverified
4Pointer GeneratorBLEU41.6Unverified
5NCP+CC (Puduppully et al 2019)BLEU19.2Unverified
6T5METEOR0.36Unverified
#ModelMetricClaimedVerifiedStatus
1Fact-aware embedding with mT5BLEU429.27Unverified
2Bi-lingual mT5BLEU425.88Unverified
3mT5BLEU425Unverified
4Vanilla TransformerBLEU419.9Unverified
5Translate-Output mT5BLEU418.91Unverified
6Graph Attention Network Encoder +Transformer DecoderBLEU418.3Unverified
#ModelMetricClaimedVerifiedStatus
1T5B BaselineBLEU48.47Unverified
2FactT5BBLEU48.37Unverified
3self-mem + new dataBLEU47.76Unverified
4JointGT BaselineBLEU47.51Unverified
5FactJointGTBLEU47.39Unverified
#ModelMetricClaimedVerifiedStatus
1T5-BaseBLEU35.1Unverified
2T5-smallBLEU34.96Unverified
3T2G2BLEU34.91Unverified
4SC-GPT2BLEU30.76Unverified
5HDSABLEU26.48Unverified
#ModelMetricClaimedVerifiedStatus
1Hierarchical Transformer Encoder + conditional copyDLD18.9Unverified
2Neural Content Planning + conditional copyDLD18.58Unverified
3MacroDLD17.7Unverified
4Force-CopyDLD17.26Unverified
5Encoder-decoder + conditional copyDLD8.68Unverified
#ModelMetricClaimedVerifiedStatus
1Hierarchical Transformer Encoder + conditional copyPrecision39.47Unverified
2Force-CopyPrecision34.34Unverified
3Neural Content Planning + conditional copyPrecision34.18Unverified
4MacroPrecision34.1Unverified
5Encoder-decoder + conditional copyPrecision29.49Unverified
#ModelMetricClaimedVerifiedStatus
1SeqPlanBLEU14.29Unverified
2MacroBLEU12.62Unverified
3ENTBLEU11.5Unverified
4Force-CopyBLEU10.5Unverified
#ModelMetricClaimedVerifiedStatus
1SeqPlanDLD22.7Unverified
2MacroDLD21.8Unverified
3Force-CopyDLD21.16Unverified
4ENTDLD20.7Unverified
#ModelMetricClaimedVerifiedStatus
1SeqPlanPrecision95.9Unverified
2MacroPrecision94.4Unverified
3Force-CopyPrecision84.5Unverified
4ENTPrecision81.1Unverified
#ModelMetricClaimedVerifiedStatus
1binmtBLEU score26.35Unverified
2tgenBLEU score21.96Unverified
3massBLEU score17.72Unverified
#ModelMetricClaimedVerifiedStatus
1Force-CopyPrecision49.39Unverified
2SeqPlanPrecision43.3Unverified
3MacroPrecision40.8Unverified
#ModelMetricClaimedVerifiedStatus
1self-mem + new data (random)METEOR46.11Unverified
2self-mem + new data (fixed)METEOR46.07Unverified
#ModelMetricClaimedVerifiedStatus
1Transition based Deep Input LinearizationBLEU80.49Unverified
2GCN + featBLEU0.67Unverified
#ModelMetricClaimedVerifiedStatus
1DataTuner_FCBLEU53.6Unverified
2Bo3BLEU52.1Unverified
#ModelMetricClaimedVerifiedStatus
1mBARTMETEOR0.46Unverified
2mT5METEOR0.29Unverified
#ModelMetricClaimedVerifiedStatus
1mBARTMETEOR0.61Unverified
2mT5METEOR0.18Unverified
#ModelMetricClaimedVerifiedStatus
1StructAdaptBleu48Unverified
#ModelMetricClaimedVerifiedStatus
1T5-largeBLEU45.85Unverified
#ModelMetricClaimedVerifiedStatus
1T5-largeBLEU69.27Unverified
#ModelMetricClaimedVerifiedStatus
1OursBLEU24.56Unverified