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Guide : Vibhute S.R
Represented by : Osman Ansari
Shri Shivaji Institute of Engineering and
Management Studies
Class : TE CSE
1] Abstract.
2] introduction.
3] Growth Of Machine Learning
4] Learning Techniques
5] Supervised Learning
6] Unsupervised Learning
7] Reinforcement Learning
8] Advantages and Disadvantages
9] Applications
10]Future perspective
11] Conclusion
The goal of machine learning is to program
computers to use example data or past experience to
solve a given problem. Many successful applications
of machine learning exist already, including systems
that analyze past sales data to predict customer
behavior, optimize robot behavior so that a task can
be completed using minimum resources, and extract
knowledge from bioinformatics data
 A branch of artificial intelligence, concerned with the
design and development of algorithms that provides the
ability to computers to learn without being explicitly
programmed
 As intelligence requires knowledge, it is necessary for the
computers to acquire knowledge
Computer
Data
Data
Output
Program
Output
Program
Machine Learning
Computer
 Machine learning is preferred approach to
 Speech recognition, Natural language processing
 Computer vision
 Medical outcomes analysis
 Robot control
 Computational biology
 This trend is accelerating
 Improved machine learning algorithms
 Improved data capture, networking, faster computers
 Software too complex to write by hand
 New sensors / IO devices
 Supervised Learning
 Unsupervised Learning
 Reinforcement Learning
 Supervised learning --- where the algorithm
generates a function that maps inputs to desired
outputs.
 One standard formulation of the supervised
learning task is :-
 classification problem: the learner is required to
learn (to approximate the behavior of) a function
which maps a vector into one of several classes by
looking at several input-output examples of the
function.
 Unsupervised learning --- which models a set of
inputs: labeled examples are not available
 Learning “what normally happens”
 No output
 Clustering: Grouping similar instances
 Example applications
 Customer segmentation in CRM
 Image compression: Color quantization
 Bioinformatics: Learning motifs
 where the algorithm learns a policy of how to act
given an observation of the world. Every action has
some impact in the environment, and the
environment provides feedback that guides the
learning algorithm
 Applications:
 Game playing
 Robot in a maze
 Multiple agents, partial observability, ...
➨It is used by google and facebook to push relevant
advertisements based on users past search behaviour.
➨It allows time cycle reduction and efficient utilization of
resources.
➨Due to machine learning there are tools available to provide
continuous quality improvement in large and complex process
environments.
➨Source programs such as Rapidminer helps in increased
usability of algorithms for various applications.
➨Interpretation of results is also a major challenge to
determine effectiveness of machine learning algorithms.
➨Based on which action to be taken and when to be taken,
various machine learning techniques are need to be try.
Face detection
Object detection and recognition
Image segmentation
Multimedia event detection
Economical and commercial usage
1) People-Literate Technology or PLTs: They can covert
voice or text messages into retainable intelligence will
dominate personal communication and by 2020, about
40 percent people will use PLTs as the primarily mode
of technological interaction.
2) The Brain-Computer Interface: Claims to provide
certain brain patterns to the computer for controlling a
device or a program will also become popular.
3) Bioacoustics: These technologies are front-runners in
the world of digital humanism that connects humans
with digital businesses and workplaces. Apart from
connected homes, smart robots, and self-driving cars,
bioacoustics may also become important.
• Machine Learning is for everyone!
• Relatively simple algorithms lying around for use
• Can help researcher understand their data initially
• Can help drill-down into sub-populations
• Can automate monotonous labeling tasks
• Available in
– Python (Scikit-learn, Orange, Weka)
– Matlab (Statistics, Neural Net, Fuzzy Logic Toolboxes)
– Most languages (OpenCV)
 Journal of Machine Learning Research www.jmlr.org
 Machine Learning
 IEEE Transactions on Neural Networks
 IEEE Transactions on Pattern Analysis and Machine
Intelligence
 Annals of Statistics
 Journal of the American Statistical Association
 ...
- By Osman Ansari

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Machine learning

  • 1. Guide : Vibhute S.R Represented by : Osman Ansari Shri Shivaji Institute of Engineering and Management Studies Class : TE CSE
  • 2. 1] Abstract. 2] introduction. 3] Growth Of Machine Learning 4] Learning Techniques 5] Supervised Learning 6] Unsupervised Learning 7] Reinforcement Learning 8] Advantages and Disadvantages 9] Applications 10]Future perspective 11] Conclusion
  • 3. The goal of machine learning is to program computers to use example data or past experience to solve a given problem. Many successful applications of machine learning exist already, including systems that analyze past sales data to predict customer behavior, optimize robot behavior so that a task can be completed using minimum resources, and extract knowledge from bioinformatics data
  • 4.  A branch of artificial intelligence, concerned with the design and development of algorithms that provides the ability to computers to learn without being explicitly programmed  As intelligence requires knowledge, it is necessary for the computers to acquire knowledge
  • 6.  Machine learning is preferred approach to  Speech recognition, Natural language processing  Computer vision  Medical outcomes analysis  Robot control  Computational biology  This trend is accelerating  Improved machine learning algorithms  Improved data capture, networking, faster computers  Software too complex to write by hand  New sensors / IO devices
  • 7.  Supervised Learning  Unsupervised Learning  Reinforcement Learning
  • 8.  Supervised learning --- where the algorithm generates a function that maps inputs to desired outputs.  One standard formulation of the supervised learning task is :-  classification problem: the learner is required to learn (to approximate the behavior of) a function which maps a vector into one of several classes by looking at several input-output examples of the function.
  • 9.  Unsupervised learning --- which models a set of inputs: labeled examples are not available  Learning “what normally happens”  No output  Clustering: Grouping similar instances  Example applications  Customer segmentation in CRM  Image compression: Color quantization  Bioinformatics: Learning motifs
  • 10.  where the algorithm learns a policy of how to act given an observation of the world. Every action has some impact in the environment, and the environment provides feedback that guides the learning algorithm  Applications:  Game playing  Robot in a maze  Multiple agents, partial observability, ...
  • 11. ➨It is used by google and facebook to push relevant advertisements based on users past search behaviour. ➨It allows time cycle reduction and efficient utilization of resources. ➨Due to machine learning there are tools available to provide continuous quality improvement in large and complex process environments. ➨Source programs such as Rapidminer helps in increased usability of algorithms for various applications.
  • 12. ➨Interpretation of results is also a major challenge to determine effectiveness of machine learning algorithms. ➨Based on which action to be taken and when to be taken, various machine learning techniques are need to be try.
  • 13. Face detection Object detection and recognition Image segmentation Multimedia event detection Economical and commercial usage
  • 14. 1) People-Literate Technology or PLTs: They can covert voice or text messages into retainable intelligence will dominate personal communication and by 2020, about 40 percent people will use PLTs as the primarily mode of technological interaction. 2) The Brain-Computer Interface: Claims to provide certain brain patterns to the computer for controlling a device or a program will also become popular. 3) Bioacoustics: These technologies are front-runners in the world of digital humanism that connects humans with digital businesses and workplaces. Apart from connected homes, smart robots, and self-driving cars, bioacoustics may also become important.
  • 15. • Machine Learning is for everyone! • Relatively simple algorithms lying around for use • Can help researcher understand their data initially • Can help drill-down into sub-populations • Can automate monotonous labeling tasks • Available in – Python (Scikit-learn, Orange, Weka) – Matlab (Statistics, Neural Net, Fuzzy Logic Toolboxes) – Most languages (OpenCV)
  • 16.  Journal of Machine Learning Research www.jmlr.org  Machine Learning  IEEE Transactions on Neural Networks  IEEE Transactions on Pattern Analysis and Machine Intelligence  Annals of Statistics  Journal of the American Statistical Association  ...
  • 17. - By Osman Ansari