| 紀錄類型: |
書目-電子資源
: Monograph/item
|
| 正題名/作者: |
Statistical models and learning methods for complex data / edited by Giuseppe Giordano ... [et al.]. |
| 其他作者: |
Giordano, Giuseppe. |
| 出版者: |
Cham :Springer Nature Switzerland : : 2025., |
| 面頁冊數: |
viii, 189 p. :ill. (chiefly col.), digital ;24 cm. |
| 內容註: |
- Exploring latent evolving ability in test equating and its effects on final rankings -- Hidden Markov and related discrete latent variable models An application to compositional data -- An application of Natural Language Processing Analysis on TripAdvisor Reviews -- Modelling football players field position via mixture of Gaussians with flexible weights -- Estimation Issues in Multivariate Panel Data -- Testing linearity in the single functional index model for dependent data -- A multi-step approach for streamflow classification -- Identification of misogynistic accounts on Twitter through Graph Convolutional Networks -- Topic modeling of publication activity in Hungary and Poland in the fields of economics, finance, and business -- Circular kernel classification with errors-in-variables -- Classification Trees Applied to Time Lagged Data to Improve Quality in Official Statistics -- Trimmed factorial k-means a clustering application to a cookies dataset_Farné and Camillo -- Visualization of Proximity and Role-based Embeddings in a Regional Labour Flow Network -- Bridging the Gap Investigating Correlation Clustering and Manifold Learning Connections -- Improving Performance in Neural Networks by Dendrite-Activated Connection -- Regression models with compositional regressors in case of structural zeros -- Multi-Dimensional Robinson Dissimilarities -- Composite selection criteria for the number of components of a finite mixture for ordinal data -- Clustering of Italian higher education institutions based on a destination-specific approach -- Analyzing Italian crime data using matrix-variate hidden Markov models. |
| Contained By: |
Springer Nature eBook |
| 標題: |
Mathematical statistics - Congresses. - |
| 電子資源: |
https://doi.org/10.1007/978-3-031-84702-8 |
| ISBN: |
9783031847028 |