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Kuhn, R.,
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Word clustering; Language modeling; Distance bigrams; Probabilistic
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learning (artificial intelligence),
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undirected graphical modeling
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Semantics, Standards, Interpolation, Speech recognition, Probability,
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Text generation, Generative adversarial Networks,
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IEEE DOI
2204
Decoding, Lattices, Chaos, Artificial neural networks, Vocabulary,
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2302
Unsupervised sentence simplification, Masked language modeling,
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Signed network, Graph representations learning,
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Ma, Y.K.[Yu-Kun],
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IEEE DOI
2407
Speech recognition, Task analysis, Speech processing, Training,
Adaptation models, Acoustics, Tokenization, re-tokenization
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Lee, C.W.[Chae-Won],
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Language Model Personalization for Speech Recognition: A Clustered
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IEEE DOI
2410
Data models, Adaptation models, Mathematical models,
Federated learning, Training, Speech recognition, Degradation,
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Akman, A.[Alican],
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Improving Audio Explanations Using Audio Language Models,
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IEEE DOI
2502
Computational modeling, Speech recognition, Foundation models,
Feature extraction, Vectors, Standards, Mathematical models,
explainable artificial intelligence
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Lee, M.H.[Mun-Hak],
Mo, J.H.[Ji-Hwan],
Kang, J.H.[Ji-Hun],
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Bayesian Language Model Adaptation for Personalized Speech
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SPLetters(32), 2025, pp. 1620-1624.
IEEE DOI
2505
Computational modeling, Decoding, Calibration, Training,
Bayes methods, Degradation, Adaptation models, Vocabulary,
language model adaptation
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Alawwad, H.A.[Hessa A.],
Alhothali, A.[Areej],
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Natural language processing, Textbook question answering,
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A Natural Language-Based Automatic Identification System Trajectory
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Besta, M.[Maciej],
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Demystifying Chains, Trees, and Graphs of Thoughts,
PAMI(47), No. 12, December 2025, pp. 10967-10989.
IEEE DOI
2511
Cognition, Topology, Pipelines, Retrieval augmented generation,
Internet, Taxonomy, Prompt engineering, Costs, Backtracking, Training,
vision-language models
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Duca, A.L.[Angelica Lo],
Duca, R.L.[Rosa Lo],
Marinelli, A.[Arianna],
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Semi-Automated Reporting from Environmental Monitoring Data Using a
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Gui, W.J.[Wen-Jing],
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Dual-Channel Retrieval-Augmented In-Context Learning for Comparative
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2606
Sentiment analysis, Reviews, Feature extraction, Semantics,
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2606
Temporal knowledge graph, Large language models,
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2606
Psychological counseling dialogues, Multi-task benchmarking,
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RobotFlags: AI-Powered Semaphore Interacting Between Chatbot and
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IVCNZ25(1-6)
IEEE DOI
2601
Learning systems, Adaptation models, Visualization, Accuracy,
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Optimus-2: Multimodal Minecraft Agent with Goal-Observation-Action
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CVPR25(9039-9049)
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WWW Link.
2508
Training, Large language models, Buildings, Predictive models,
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MotionLM: Multi-Agent Motion Forecasting as Language Modeling,
ICCV23(8545-8556)
IEEE DOI
2401
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CVPR24(21853-21862)
IEEE DOI
2410
BibRef
Earlier: A1, A2, A3, A5, A6, Only:
VLAR23(4631-4635)
IEEE DOI
2401
Codes, TV, Large language models, Computational modeling,
Human intelligence, Cognition, Numerical models
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Subramanian, S.[Sanjay],
Klein, D.[Dan],
Kanazawa, A.[Angjoo],
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Can Language Models Learn to Listen?,
ICCV23(10049-10059)
IEEE DOI
2401
BibRef
Amarouche, S.[Sylia],
Mostefai, S.[Sabrina],
Amirouche, F.[Fatiha],
Talbi, S.[Said],
New approach of smoothing to extend language model in Lucene,
ISCV22(1-7)
IEEE DOI
2208
Java, Smoothing methods, Computational modeling,
Search engines, Intelligent systems, Indexing, Lucene
BibRef
Kaddari, Z.,
Mellah, Y.,
Berrich, J.,
Bouchentouf, T.,
Belkasmi, M.G.,
Applying the T5 language model and duration units normalization to
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ISCV20(1-4)
IEEE DOI
2011
natural language processing, text analysis,
temporal common sense understanding, MCTACO
BibRef
Naszádi, K.[Kata],
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Image-Sensitive Language Modeling for Automatic Speech Recognition,
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Springer DOI
1905
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Position Models and Language Modeling,
SSPR08(76-85).
Springer DOI
0812
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Justo, R.[Raquel],
Torres, M.I.[María Inés],
Segment-Based Classes for Language Modeling Within the Field of CSR,
CIARP07(714-723).
Springer DOI
0711
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Justo, R.[Raquel],
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Hierarchical Models for Rescoring Graphs vs. Full Integration,
CIARP13(I:496-503).
Springer DOI
1311
BibRef
Earlier:
An Approach to Estimate Perplexity Values for Language Models Based on
Phrase Classes,
IbPRIA09(409-416).
Springer DOI
0906
BibRef
Earlier:
Word Segments in Category-Based Language Models for Automatic Speech
Recognition,
IbPRIA07(I: 249-256).
Springer DOI
0706
BibRef
Sánchez, J.A.[Joan Andreu],
Benedí, J.M.[José Miguel],
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Performance of a SCFG-Based Language Model with Training Data Sets of
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IbPRIA05(II:586).
Springer DOI
0509
BibRef
Chapter on New Unsorted Entries, and Other Miscellaneous Papers continues in
Text Generation, Text Synthesis, Text Placement on Maps .