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Introduction Course Name: Cs101 Student ID: bc120201817 Student Name: Zohaib Siddiq Study Program: Bs information Technology – PowerPoint PPT presentation

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Title: Course Name: Cs101


1
Introduction
  • Course Name Cs101
  • Student ID bc120201817
  • Student Name Zohaib Siddiq
  • Study Program Bs information Technology

2
Topic NameNeural Network Learning Paradigm with
Applications
  • Topic Introduction
  • In the artificial intelligence field, artificial
    neural networks have been applied successfully to
    speech recognition, image analysis and adaptive
    control, in order to construct software agents
    (in computer and video games) or autonomous
    robots. Most of the currently employed artificial
    neural networks for artificial intelligence are
    based on statistical estimations, classification
    optimization and control theory.
  • The cognitive modeling field involves the
    physical or mathematical modeling of the behavior
    of neural systems ranging from the individual
    neural level (e.g. modeling the spike response
    curves of neurons to a stimulus), through the
    neural cluster level (e.g. modeling the release
    and effects of dopamine in the basal ganglia) to
    the complete organism (e.g. behavioral modeling
    of the organism's response to stimuli).
    Artificial intelligence, cognitive modeling, and
    neural networks are information processing
    paradigms inspired by the way biological neural
    systems process data.

3
Description of Neural Network
  • Neural networks, as used in artificial
    intelligence, have traditionally been viewed as
    simplified models of neural processing in the
    brain, even though the relation between this
    model and brain biological architecture is
    debated, as it is not clear to what degree
    artificial neural networks mirror brain function.
  • A subject of current research in computational
    neuroscience is the question surrounding the
    degree of complexity and the properties that
    individual neural elements should have to
    reproduce something resembling animal cognition.
  • Historically, computers evolved from the von
    Neumann model, which is based on sequential
    processing and execution of explicit
    instructions. On the other hand, the origins of
    neural networks are based on efforts to model
    information processing in biological systems,
    which may rely largely on parallel processing as
    well as implicit instructions based on
    recognition of patterns of 'sensory' input from
    external sources. In other words, at its very
    heart a neural network is a complex statistical
    processor (as opposed to being tasked to
    sequentially process and execute).
  • Neural coding is concerned with how sensory and
    other information is represented in the brain by
    neurons. The main goal of studying neural coding
    is to characterize the relationship between the
    stimulus and the individual or ensemble neuronal
    responses and the relationship among electrical
    activity of the neurons in the ensemble.

4
Advantages disadvantages of Neural Networks
  • Advantages
  • Capable of handling large number of features
  • Capable of detecting complex relationships
  • Can solve numerous complex and miscellaneous
    tasks
  • Easy to theorize
  • Identify all possible connections
  • Large amount of academic study
  • Need less formal arithmetical training
  • Speedy and fast calculation
  • Several training algorithms are accessible
  • Disadvantages
  • Computing one input path needs calculating the
    network
  • Cant resolve all machine learning difficulties
  • Difficult to implement trial and error
    for choosing many neurons
  • Experimental nature of model improvement
  • Greater computational load

5
Conclusion
  • Todays Computers and Technology orb can learn
    and achieve a lot from neural networks. Neural
    networks capability to learn from examples makes
    them great and influential. Moreover it is not
    essential to create an algorithm to complete a
    particular job. Have no need to know the inner
    parameters of the task. Furthermore neural
    networks are well-matched for systems due to
    their fast reaction and calculating times as to
    their consistent structure.
  • They also add great values to other fields
    of medical science like neurology and psychology
    Neural networks used to design different parts of
    organisms and to inspect the inner structures of
    the brain.
  • Possibly the great inspiring feature which
    also seems to be promising is, in the future
    conscious networks might come. Many experts and
    scientists claim that, consciousness is a
    mechanical property and it seems possible to
    create conscious neural networks.
  • In conclusion, nevertheless neural
    networks have a massive potential but human kind
    can only take the great benefits, as soon as
    these networks are combined with computing.
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