Journal Article10.1198/TAS.2003.S255
Problems in Probability
10
TL;DR: Sets, measure, and probability elementary probability discrete random variables continuous random variables limit theorems random walks as discussed by the authors, which is a generalization of the random walk limit theorem.
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Abstract: Sets, measure and probability elementary probability discrete random variables continuous random variables limit theorems random walks.
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Network Embedding as Matrix Factorization: Unifying DeepWalk, LINE, PTE, and node2vec.
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Heads or Tails gambling — what can be learned about probability?
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References
Network Embedding as Matrix Factorization: Unifying DeepWalk, LINE, PTE, and node2vec
Jiezhong Qiu,Yuxiao Dong,Hao Ma,Jian Li,Kuansan Wang,Jie Tang +5 more
- 02 Feb 2018
TL;DR: In this paper, a unified matrix factorization framework for skip-gram based network embedding was proposed, leading to a better understanding of latent network representation learning and the theory of graph Laplacian.
880
Interactive Learning Environment Supporting Visualization in the Teaching of Probability
Stanislav Lukáč,Tadeáš Gavala +1 more
- 01 Mar 2019
TL;DR: The main objectives and the structure of an interactive worksheet, prepared in spreadsheet environment, in which students are guided to use the visualization to solve probability problems, and an evaluation of the results and experiences of problem solving in the teaching of probability at grammar schools.
6
Heads or Tails gambling — what can be learned about probability?
TL;DR: In this article, examples of methods that can resolve this difficulty are demonstrated, which could in future allow school students to tackle and solve a wide variety of problems involving probability, such as the one described in this paper.
2
Statistical properties of Faraday rotation measure in external galaxies – I: intervening disc galaxies
Aritra Basu,Aritra Basu,S. A. Mao,Andrew Fletcher,Nissim Kanekar,Anvar Shukurov,Dominic Schnitzeler,Valentina Vacca,Henrik Junklewitz +8 more
TL;DR: In this paper, the authors derived the analytical form of the probability distribution function (PDF) of RM produced by a single galaxy with an axisymmetric large-scale magnetic field.
Infinite-Dimensional Monte-Carlo Integration
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