04022nam 22006255 450 991101596490332120250722130302.0981-9688-53-110.1007/978-981-96-8853-1(CKB)39698594900041(MiAaPQ)EBC32227303(Au-PeEL)EBL32227303(DE-He213)978-981-96-8853-1(EXLCZ)993969859490004120250722d2025 u| 0engur|||||||||||txtrdacontentcrdamediacrrdacarrierTopic Modeling Advanced Techniques and Applications /by Yanghui Rao, Qing Li1st ed. 2025.Singapore :Springer Nature Singapore :Imprint: Springer,2025.1 online resource (291 pages)Machine Learning: Foundations, Methodologies, and Applications,2730-9916981-9688-52-3 Chapter 1. Introduction -- Chapter 2. Classical Topic Models -- Chapter 3. Modern Topic Models -- Chapter 4. Applications -- Chapter 5. Discussions.As a well-known text mining tool, topic modeling can effectively discover the latent semantic structure of text data. Extracting topics from documents is also one of the fundamental challenges in natural language processing. Although topic models have seen significant achievements over the past three decades, there remains a scarcity of methods that effectively model temporal aspect. Moreover, many contemporary topic models continue to grapple with the issue of noise contamination, particularly in social media data. This book presents several approaches designed to address these two limitations. Initially, traditional lifelong topic models aim to accumulate knowledge learned from experience for future task. However, the sequence of topics extracted by these methods may shift over time, leading to semantic misalignment between the topic representations across document streams. Such misalignment can degrade the performances of various downstream tasks, including online document classification and dynamic information retrieval at the topic level. Additionally, the challenge of coherent topic modeling is particularly relevant due to the noise and large scale of social media datasets. Messages on social media platforms often consists of only a few words, resulting in a lack of significant context. Models applied directly to this type of text frequently encounter the problem of feature sparsity, which can yield unsatisfactory outcomes. In the context of emotion detection, public emotions are known to fluctuate across different topics, and topics can evoke public emotion. Thus, there is a strong interconnection between topic discovery and emotion detection. Jointly modeling topics and emotions is a suitable strategy for these tasks. This book also examines the impact of topics on emotion detection and other related areas.Machine Learning: Foundations, Methodologies, and Applications,2730-9916Natural language processing (Computer science)Machine learningArtificial intelligenceData processingComputational linguisticsNatural Language Processing (NLP)Machine LearningData ScienceComputational LinguisticsNatural language processing (Computer science)Machine learning.Artificial intelligenceData processing.Computational linguistics.Natural Language Processing (NLP).Machine Learning.Data Science.Computational Linguistics.006.35Rao Yanghui1834967Li Qing431258MiAaPQMiAaPQMiAaPQBOOK9911015964903321Topic Modeling4410650UNINA