Machine Learning Becoming Smarter Through Science

Machine Learning Becoming Smarter Through Science
Machine Learning as a part of AI

It is going to be interesting to see how society deals with AI, but it will definitely be cool-Colin Angle.

To know about Machine Learning one should know what is Artificial IntelligenceArtificial Intelligence is a Science and Engineering to make machines smart and Intelligent especially developing intelligent programs. It is coined by famous personality John MacCarthy and is called as one of the founding fathers of AI. It is not a new word but is reflected back in 1955 by John.

Machine Learning is an application of AI that makes the system to learn from experience not by explicitly programmed. It just works on the same basics as human intelligence works i.e learning from experience. Just imagine the magic that machines are automatically identifying the unlabelled data. Training is an important phase of Machine Learning and once training is complete machines start behaving like the human.

Machine Learning Algorithms: Machine Learning algorithms are either supervised, unsupervised, semi-supervised and reinforcement.

1) Supervised Learning: It can be compared with a teacher i.e for every input there is a corresponding target. If the target is in the form of some classes then it is called classification problem. If the target is continuous it is called regression problem. ‘

2) Unsupervised Learning:  It is without a teacher where only a set of inputs are present. This algorithm tries to find the relationship between inputs more logically. Unsupervised learning refers to clustering which will create difference clusters and will fit the new data in the appropriate cluster. Other than clustering Anomaly Detection, Hebbian Learning, Latent Variable model such as expectation maximization algorithm, Blind Signal separation, PCA and singular value decomposition can be done.

3) Semi-Supervised: It falls between supervised and unsupervised both which uses labeled and unlabeled data for training. Basically, it is a hybrid version of supervised and semi-supervised to improve learning accuracy.

4) Reinforcement Machine Learning: It is close to human learning. Basically, these are the algorithms by which machines are trained to act in a given environment.

In simple words, every action has some impact on the environment and this environment provides rewards which help in learning. Basically, it is also called as learning through trial and error interaction with the dynamic environment. Feedback is provided that evaluates the learner performer.  Reinforcement means reward from the environment.

Basic steps involved in Machine Learning:

1) Gathering Data: First and most important step in machine learning is together the appropriate data. the quality and quantity of data collection is crucial while building the model.

2) Data Analysis and Pre-Processing: Once you are done with data gathering look carefully at the data. If there is no target, unsupervised learning algorithm should be clicked in our mind and if there is specified target, supervised learning must be clicked in our mind. This is the job of data analysis. Once analysis is done it is time to perform cleaning and pre-processing which include removing undefined values from data and operations like image enhancement, skewing, histogram equalisation and sharpening in image processing.

3) Feature Extraction and Feature Selection: Once data or images are pre-processed then the time of feature extraction and selection comes. At the first stage features are extracted using suitable feature extraction algorithm like principal component analysis, partial least square, auto-encoders and then features are selected using appropriate algorithm like one may opt for Pearson’s co-relation, Anova, LDA and chi-square.

4) Classification or Regression Model:  After feature selection, it is time to train the model. Training algorithm depends upon whether the data is continuous or having classes or categories. Hence search for either classification model or regression model. Further to improve the accuracy these models can be tuned with best parameters like tuning of SVM using Grid Search.

Pictorial representation of steps are shown in the following image.

Machine Learning Becoming Smarter Through Science
Machine Learning Steps

Growth of Machine Learning: Machine Learning is an integral part and preferable approach of following:

  • Speech Recognition
  • NLP (Natural Language Processing)
  • Computer Vision
  • Weather Forecasting
  • Stock Prediction
  • Robotics
  • Face Recognition
  • Age Invariant

Applications of Machine Leaning: Following are some applications of Machine Learning.

Different Disease Prediction, Image Classification, Object Detection, Fingerprint Matching, Robot Building, Self Driving Cars, Offline Handwritten Optical Character Recognition and many more. It is utilising in most of all fields so there are a lot of applications of Machine Learning.

Conclusion: From all of above discussion, and observations it can be concluded that future belongs to AI and more precisely to Machine Learning. Seeing its application in forensic, healthcare, mining, education, assisting human, Stock Prediction and future forecasting. It is quite obvious and necessary to learn it. Even big companies like Facebook, IBM, Amazon, Google, Microsoft has entirely shifted on it because of its magical results and positive services to mankind. Hope this article is helpful somehow. I have tried to introduce you with Machine Learning and AI.

Related articles:

Artificial intelligence definition with applications

Electronics and Communication Engineering jobs



Click here to post a comment

  • Whats Taking place i am new to this, I stumbled upon this I have found It positively helpful and it has aided me out loads. I hope to contribute &amp assist other users like its helped me. Great job. ddbcecbbdadagaga

    • I would thanks you for giving your previous time in reading the topic from this site. Best part that I love is that your basic concepts regarding machine learning has improved. Thanks again for your comments. Self awareness is formed to make a difference and it is achieving its motto.

  • Very well written and informative article. Thanks for posting! As humans start to grow more and more dependent on machines and AI, wonder what the future holds for us!

  • Machine learning has become an important part of life in today’s scenario. No one can deny this at any cost. If you look at the portfolio of all the big companies they introduces machine learning as one of the field. Today interaction of machines with humans could be seen in the banking sector, mining and many others. If you look at the MIT, they have artificial department and same holds for AT&T Laboratory.

    With respect to my understanding, I loved reading this post and you wrote in very simple way which makes your block quite effective.

    I would love to visit this site again…

    With Regards
    Cool Dude

  • Human can find tools which makes us better than other species of the planet. Machine Learning is the field that studies how to make computers learn. In other words, a Machine Learning algorithm is a computer program that teaches computers how to program themselves so that we don’t have to explicitly describe how to perform the task we want to achieve. Machine Learning is the way to make computers learn how to perform complex task

    With regards
    Cool dude

    • If I could remember properly, once Steve Jobs said that coding is just a bicycle and we are driving it. I do not remember exact words. Yes making machines to learn by themselves can save a lot of time and further aids in doing some task which are very risky for humans.

      With regards

  • I just want to mention I’m new to blogs and honestly savored your blog site. More than likely I’m planning to bookmark your blog post . You certainly have beneficial writings. Bless you for revealing your blog site.

  • Somehow when I watched some movies related to invention or future of robotics, I was just lost in Dystopia. But this is not properly true. All depends upon how we program them and with what intention. Today machine learning has become an important part of many reputed and multinational companies and here is the list
    Pinterest: If I talk about this company, this is one of the biggest users of machine learning algorithm. In 2015, it has acquired kosei (machine learning company) for content discovery and recommendation algorithm. This helped it to produce more diversification which leads to its economic growth.
    Facebook: Today Facebook is different from what we have seen when it was first introduced. Friend’s recommendation system and AI in spam filtering and content verification makes it one of the most popular apps in the world.
    IBM: Who can forget Watson (AI of IBM).
    Microsoft: Cortana of Microsoft, Siri of Apple and Alexa of Amazon are other examples where AI and machine learning algorithms came into play.
    Baidu: I would be wrong If I could not mention Baidu. It is also called future of voice recognition.
    Google: No one can leave giant company Google. Google brain and deep mind network are one of the good examples to support what I am saying
    As a concluding part, I would reflect that really selfawarenesshub has written a very beautiful article. I have added all my knowledge to it because when you read some effective and worthful articles, it becomes a sense of responsibility to reflect back what you know about it.

    With Regards
    Jane Smith

    • Yes, felt with joy when such sharing is done. Precious time you spend in writing this comment really reflects where your knowledge stands. Thanks again for such productive and useful information.

      With Regards

More Posts

Get your Language »