SOTAVerified

Intent Classification

Intent Classification is the task of correctly labeling a natural language utterance from a predetermined set of intents

Source: Multi-Layer Ensembling Techniques for Multilingual Intent Classification

Papers

Showing 151200 of 344 papers

TitleStatusHype
Meta-Inductive Node Classification across Graphs0
Meta learning to classify intent and slot labels with noisy few shot examples0
MMIU: Dataset for Visual Intent Understanding in Multimodal Assistants0
Modeling Temporality of Human Intentions by Domain Adaptation0
mSLAM: Massively multilingual joint pre-training for speech and text0
Multi-Layer Ensembling Techniques for Multilingual Intent Classification0
Multilingual Name Entity Recognition and Intent Classification Employing Deep Learning Architectures0
Multilingual Paraphrase Generation For Bootstrapping New Features in Task-Oriented Dialog Systems0
Multi-modal Intent Classification for Assistive Robots with Large-scale Naturalistic Datasets0
Multitask Learning for Low Resource Spoken Language Understanding0
Multi-task Learning of Spoken Language Understanding by Integrating N-Best Hypotheses with Hierarchical Attention0
Multi-task pre-finetuning for zero-shot cross lingual transfer0
Multi-Task Pre-Training for Plug-and-Play Task-Oriented Dialogue System0
Multi-task Sentence Encoding Model for Semantic Retrieval in Question Answering Systems0
NaRLE: Natural Language Models using Reinforcement Learning with Emotion Feedback0
Natural language understanding for task oriented dialog in the biomedical domain in a low resources context0
Neural Graph Machines: Learning Neural Networks Using Graphs0
Not So Fast, Classifier – Accuracy and Entropy Reduction in Incremental Intent Classification0
NUBOT: Embedded Knowledge Graph With RASA Framework for Generating Semantic Intents Responses in Roman Urdu0
OmniActions: Predicting Digital Actions in Response to Real-World Multimodal Sensory Inputs with LLMs0
OmniDialog: An Omnipotent Pre-training Model for Task-Oriented Dialogue System0
On Building Spoken Language Understanding Systems for Low Resourced Languages0
On Spoken Language Understanding Systems for Low Resourced Languages0
Open-Domain Neural Dialogue Systems0
Optimizing NLU Reranking Using Entity Resolution Signals in Multi-domain Dialog Systems0
Outlier Detection for Improved Data Quality and Diversity in Dialog Systems0
Paraphrase and Aggregate with Large Language Models for Minimizing Intent Classification Errors0
PerSHOP -- A Persian dataset for shopping dialogue systems modeling0
Practical Application of Domain Dependent Confidence Measurement for Spoken Language Understanding Systems0
Practical token pruning for foundation models in few-shot conversational virtual assistant systems0
Privacy-preserving Active Learning on Sensitive Data for User Intent Classification0
Privacy-preserving Representation Learning for Speech Understanding0
Prompt Learning for Domain Adaptation in Task-Oriented Dialogue0
Prompt Perturbation Consistency Learning for Robust Language Models0
ProtoDA: Efficient Transfer Learning for Few-Shot Intent Classification0
PythonPal: Enhancing Online Programming Education through Chatbot-Driven Personalized Feedback0
Quick Starting Dialog Systems with Paraphrase Generation0
Real-world Conversational AI for Hotel Bookings0
Recent Neural Methods on Slot Filling and Intent Classification for Task-Oriented Dialogue Systems: A Survey0
Reliable and Interpretable Drift Detection in Streams of Short Texts0
Reward-Driven Interaction: Enhancing Proactive Dialogue Agents through User Satisfaction Prediction0
Robust Task Clustering for Deep Many-Task Learning0
Scalable Semi-Supervised Query Classification Using Matrix Sketching0
SciWING– A Software Toolkit for Scientific Document Processing0
Semi-Supervised Few-Shot Intent Classification and Slot Filling0
Semi-supervised Meta-learning for Cross-domain Few-shot Intent Classification0
Simple, Fast, Accurate Intent Classification and Slot Labeling for Goal-Oriented Dialogue Systems0
Simple is Better! Lightweight Data Augmentation for Low Resource Slot Filling and Intent Classification0
Single Example Can Improve Zero-Shot Data Generation0
SNOiC: Soft Labeling and Noisy Mixup based Open Intent Classification Model0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1TDT 0-8Accuracy (%)90.07Unverified
2Partially Fine-tuned HuBERTAccuracy (%)87.51Unverified
3Multi-SLURPAccuracy (%)78.33Unverified
4Finstreder (Conformer)Accuracy (%)53.11Unverified
5Finstreder (Quartznet)Accuracy (%)43.15Unverified
#ModelMetricClaimedVerifiedStatus
1mT5 Base (encoder-only)Intent Accuracy86.1Unverified
2mT5 Base (text-to-text)Intent Accuracy85.3Unverified
3XLM-R BaseIntent Accuracy85.1Unverified
#ModelMetricClaimedVerifiedStatus
1RoBERTa-wwm-ext-baseAccuracy85.5Unverified
#ModelMetricClaimedVerifiedStatus
1BERT (query + URL)F1-score0.77Unverified