An Integrated Machine Learning and Deep Learning Model for Predictive Analysis
- Indbinding:
- Paperback
- Sideantal:
- 142
- Udgivet:
- 11. december 2023
- Størrelse:
- 216x9x280 mm.
- Vægt:
- 377 g.
- 2-4 uger.
- 19. december 2024
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- 1 valgfrit digitalt ugeblad
- 20 timers lytning og læsning
- Adgang til 70.000+ titler
- Ingen binding
Abonnementet koster 75 kr./md.
Ingen binding og kan opsiges når som helst.
Beskrivelse af An Integrated Machine Learning and Deep Learning Model for Predictive Analysis
Every year, there are more patients with chronic diseases, and they tend to be younger people as the speed of life hastens aging. This is both a big problem for society's health and a problem for your health. Chronic diseases will significantly impact patients' health and quality of life. The effects of some disorders are permanent and even incurable. This places a significant load on the communities and relatives of the patients. Every year, there are more people with chronic diseases, and many of them are younger because of how fast life is moving. This is a serious problem for both personal health and public health that harms society. Chronic diseases will have a substantial influence on patients' health and quality of life, and many chronic Some illnesses have long-lasting, even incurable, impacts. It will bring an enormous burden to the family and community of the patient.
In recent years, there is considerable progress has been made in the treatment of illness, and this has had a big impact on the results for chronic diseases, including the monitoring of therapy and clinical diagnosis, amongst other things. The large amounts of obscure health data will be analyzed to extract previously unknown and useful information as well as predict future trends.
Corporations are now overwhelmed by the amount of data contained in database systems, consisting of unstructured data such as pictures, video, and sensor data. To discover the data trends and prediction of the scopes, deep learning, and machine learning algorithms are utilized in this case, along with other optimization techniques. We employed a variety of machine learning algorithms for these strategies, including SVM, neural networks, and linear and nonlinear regression techniques. Then, prescriptive analytics may apply the knowledge gained from predictive analytics to prescribe actions based on predicted findings. Machine learning is a type of predictive analytics that helps enterprises move up the business intelligence maturity curve by expanding their usage of predictive analytics to include autonomous, forward-looking decision support instead of just descriptive analytics focusing on the past. Although the technology has been there for a while, many businesses are now taking a fresh look at it due to the excitement surrounding new methods and goods.
Machine learning-based analytical solutions frequently function in real-time, giving business a new dimension. Real-time analytics provides information to staff "on the front lines" to improve performance hour-by-hour. However, older models will still provide important reports and analyses to senior decision-makers. Machine learning, a branch of artificial intelligence, train machines to use certain algorithms to analyse, learn from, and provide predictions and recommendations from massive volumes of data. Without human interaction, predictive models may adjust to new data and learn from past iterations to make decisions and outcomes that are ever more consistent and trustworthy.
In recent years, there is considerable progress has been made in the treatment of illness, and this has had a big impact on the results for chronic diseases, including the monitoring of therapy and clinical diagnosis, amongst other things. The large amounts of obscure health data will be analyzed to extract previously unknown and useful information as well as predict future trends.
Corporations are now overwhelmed by the amount of data contained in database systems, consisting of unstructured data such as pictures, video, and sensor data. To discover the data trends and prediction of the scopes, deep learning, and machine learning algorithms are utilized in this case, along with other optimization techniques. We employed a variety of machine learning algorithms for these strategies, including SVM, neural networks, and linear and nonlinear regression techniques. Then, prescriptive analytics may apply the knowledge gained from predictive analytics to prescribe actions based on predicted findings. Machine learning is a type of predictive analytics that helps enterprises move up the business intelligence maturity curve by expanding their usage of predictive analytics to include autonomous, forward-looking decision support instead of just descriptive analytics focusing on the past. Although the technology has been there for a while, many businesses are now taking a fresh look at it due to the excitement surrounding new methods and goods.
Machine learning-based analytical solutions frequently function in real-time, giving business a new dimension. Real-time analytics provides information to staff "on the front lines" to improve performance hour-by-hour. However, older models will still provide important reports and analyses to senior decision-makers. Machine learning, a branch of artificial intelligence, train machines to use certain algorithms to analyse, learn from, and provide predictions and recommendations from massive volumes of data. Without human interaction, predictive models may adjust to new data and learn from past iterations to make decisions and outcomes that are ever more consistent and trustworthy.
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