Semi-Supervised Learning on a Budget: Scaling Up to Large Datasets

Author(s):  
Sandra Ebert ◽  
Mario Fritz ◽  
Bernt Schiele
2020 ◽  
Vol 8 (6) ◽  
pp. 1667-1671

Speech is the most proficient method of correspondence between people groups. Discourse acknowledgment is an interdisciplinary subfield of computational phonetics that creates approaches and advances that empowers the acknowledgment and interpretation of communicated in language into content by PCs. It is otherwise called programmed discourse acknowledgment (ASR), PC discourse acknowledgment or discourse to content (STT). It consolidates information and research in the etymology, software engineering, and electrical building fields. This, being the best methodology of correspondence, could likewise be a helpful interface to speak with machines. Machine learning consists of supervised and unsupervised learning among which supervised learning is used for the speech recognition objectives. Supervised learning is that the data processing task of inferring a perform from labeled coaching information. Speech recognition is the current trend that has gained focus over the decades. Most automation technologies use speech and speech recognition for various perspectives. This paper offers a diagram of major innovative point of view and valuation for the fundamental advancement of speech recognitionand offers review method created in each phase of discourse acknowledgment utilizing supervised learning. The project will use ANN to recognize speeches using magnitudes with large datasets.


2014 ◽  
Vol 8 (2) ◽  
pp. 125-136 ◽  
Author(s):  
Barzan Mozafari ◽  
Purna Sarkar ◽  
Michael Franklin ◽  
Michael Jordan ◽  
Samuel Madden

Author(s):  
Yanjun Li ◽  
Kai Zhang ◽  
Jun Wang ◽  
Sanjiv Kumar

Random Fourier features are a powerful framework to approximate shift invariant kernels with Monte Carlo integration, which has drawn considerable interest in scaling up kernel-based learning, dimensionality reduction, and information retrieval. In the literature, many sampling schemes have been proposed to improve the approximation performance. However, an interesting theoretic and algorithmic challenge still remains, i.e., how to optimize the design of random Fourier features to achieve good kernel approximation on any input data using a low spectral sampling rate? In this paper, we propose to compute more adaptive random Fourier features with optimized spectral samples (wj’s) and feature weights (pj’s). The learning scheme not only significantly reduces the spectral sampling rate needed for accurate kernel approximation, but also allows joint optimization with any supervised learning framework. We establish generalization bounds using Rademacher complexity, and demonstrate advantages over previous methods. Moreover, our experiments show that the empirical kernel approximation provides effective regularization for supervised learning.


2012 ◽  
Vol 36 ◽  
pp. 120-128 ◽  
Author(s):  
Wenjun Hu ◽  
Fu-lai Chung ◽  
Shitong Wang ◽  
Wenhao Ying

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