Voice Analysis with Machine Learning: One Step Closer to an Objective Diagnosis of Essential Tremor

2021 ◽  
Author(s):  
Antonio Suppa ◽  
Francesco Asci ◽  
Giovanni Saggio ◽  
Pietro Di Leo ◽  
Zakarya Zarezadeh ◽  
...  
2020 ◽  
pp. 1-1
Author(s):  
Ekaterina Kovalenko ◽  
Aleksandr Talitckii ◽  
Anna Anikina ◽  
Aleksei Shcherbak ◽  
Olga Zimniakova ◽  
...  

2021 ◽  
Vol 36 (5) ◽  
pp. 1282-1283
Author(s):  
Jan Rusz ◽  
Jan Švihlík ◽  
Petr Krýže ◽  
Michal Novotný ◽  
Tereza Tykalová

2021 ◽  
Vol 429 ◽  
pp. 119592
Author(s):  
Francesco Asci ◽  
Pietro Di Leo ◽  
Giovanni Ruoppolo ◽  
Giovanni Saggio ◽  
Giovanni Costantini ◽  
...  

Author(s):  
MadhuSudan Rao Kummara ◽  
Bhaskara Rao Guntreddy ◽  
Ines Garcia Vega ◽  
Yun Hsuan Tai

2019 ◽  
Vol 29 (12) ◽  
pp. 7037-7046 ◽  
Author(s):  
Shweta Prasad ◽  
Umang Pandey ◽  
Jitender Saini ◽  
Madhura Ingalhalikar ◽  
Pramod Kumar Pal

2021 ◽  
Author(s):  
Jan Wolff ◽  
Ansgar Klimke ◽  
Michael Marschollek ◽  
Tim Kacprowski

Introduction The COVID-19 pandemic has strong effects on most health care systems and individual services providers. Forecasting of admissions can help for the efficient organisation of hospital care. We aimed to forecast the number of admissions to psychiatric hospitals before and during the COVID-19 pandemic and we compared the performance of machine learning models and time series models. This would eventually allow to support timely resource allocation for optimal treatment of patients. Methods We used admission data from 9 psychiatric hospitals in Germany between 2017 and 2020. We compared machine learning models with time series models in weekly, monthly and yearly forecasting before and during the COVID-19 pandemic. Our models were trained and validated with data from the first two years and tested in prospectively sliding time-windows in the last two years. Results A total of 90,686 admissions were analysed. The models explained up to 90% of variance in hospital admissions in 2019 and 75% in 2020 with the effects of the COVID-19 pandemic. The best models substantially outperformed a one-step seasonal naive forecast (seasonal mean absolute scaled error (sMASE) 2019: 0.59, 2020: 0.76). The best model in 2019 was a machine learning model (elastic net, mean absolute error (MAE): 7.25). The best model in 2020 was a time series model (exponential smoothing state space model with Box-Cox transformation, ARMA errors and trend and seasonal components, MAE: 10.44), which adjusted more quickly to the shock effects of the COVID-19 pandemic. Models forecasting admissions one week in advance did not perform better than monthly and yearly models in 2019 but they did in 2020. The most important features for the machine learning models were calendrical variables. Conclusion Model performance did not vary much between different modelling approaches before the COVID-19 pandemic and established forecasts were substantially better than one-step seasonal naive forecasts. However, weekly time series models adjusted quicker to the COVID-19 related shock effects. In practice, different forecast horizons could be used simultaneously to allow both early planning and quick adjustments to external effects.


2021 ◽  
Vol 2021 (3) ◽  
pp. 453-473
Author(s):  
Nathan Reitinger ◽  
Michelle L. Mazurek

Abstract With the aim of increasing online privacy, we present a novel, machine-learning based approach to blocking one of the three main ways website visitors are tracked online—canvas fingerprinting. Because the act of canvas fingerprinting uses, at its core, a JavaScript program, and because many of these programs are reused across the web, we are able to fit several machine learning models around a semantic representation of a potentially offending program, achieving accurate and robust classifiers. Our supervised learning approach is trained on a dataset we created by scraping roughly half a million websites using a custom Google Chrome extension storing information related to the canvas. Classification leverages our key insight that the images drawn by canvas fingerprinting programs have a facially distinct appearance, allowing us to manually classify files based on the images drawn; we take this approach one step further and train our classifiers not on the malleable images themselves, but on the more-difficult-to-change, underlying source code generating the images. As a result, ML-CB allows for more accurate tracker blocking.


Author(s):  
Maximilian Schmitt ◽  
Björn W. Schuller

Machines are able to obtain rich information from the human voice with a certain reliability. This can comprise information about the affective or mental state, but also traits of the speaker. This chapter introduces all the different technical steps needed in such intelligent voice analysis. Typically, the first step involves extraction of meaningful acoustic features, which are then transformed into a suitable representation. The acoustic information can be augmented by linguistic features originating from a speech-to-text transcription. The features are finally decoded on different levels using machine-learning methods. Recently, ‘deep learning’ has received growing interest, where deep artificial neural networks are used to decode the information. From this, end-to-end learning has evolved, where even the feature extraction step is learned seamlessly, through to the decoding step, mimicking the recognition process in the human brain. Subsequent to the description of according and further frequently encountered methods, the chapter concludes with some future perspective.


Entropy ◽  
2020 ◽  
Vol 22 (11) ◽  
pp. 1310
Author(s):  
Ioannis Triantafyllou ◽  
Ioannis C. Drivas ◽  
Georgios Giannakopoulos

Acquiring knowledge about users’ opinion and what they say regarding specific features within an app, constitutes a solid steppingstone for understanding their needs and concerns. App review utilization helps project management teams to identify threads and opportunities for app software maintenance, optimization and strategic marketing purposes. Nevertheless, app user review classification for identifying valuable gems of information for app software improvement, is a complex and multidimensional issue. It requires foresight and multiple combinations of sophisticated text pre-processing, feature extraction and machine learning methods to efficiently classify app reviews into specific topics. Against this backdrop, we propose a novel feature engineering classification schema that is capable to identify more efficiently and earlier terms-words within reviews that could be classified into specific topics. For this reason, we present a novel feature extraction method, the DEVMAX.DF combined with different machine learning algorithms to propose a solution in app review classification problems. One step further, a simulation of a real case scenario takes place to validate the effectiveness of the proposed classification schema into different apps. After multiple experiments, results indicate that the proposed schema outperforms other term extraction methods such as TF.IDF and χ2 to classify app reviews into topics. To this end, the paper contributes to the knowledge expansion of research and practitioners with the purpose to reinforce their decision-making process within the realm of app reviews utilization.


2020 ◽  
Vol 101 (11) ◽  
pp. e44
Author(s):  
Sanghee Moon ◽  
Hyun-Je Song ◽  
Kelly Lyons ◽  
Rajesh Pahwa ◽  
Vibhash Sharma ◽  
...  

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