Soft Computing FT1
  • 1. ANN is composed of large number of highly interconnected processing elements(neurons) working in unison to solve problems.
A) TRUE
B) FALSE
  • 2. Artificial neural network used for
A) Clustering
B) Classification
C) All of these
D) Pattern recognition
  • 3. A Neural Network can answer
A) For Loop questions
B) IF-The-Else Analysis Questions
C) What-if question
  • 4. Ability to learn how to do tasks based on the data given for training or initial experience
A) Self Organization
B) Fault tolerance
C) Adaptive Learning
D) Robustness
  • 5. Feature of ANN in which ANN  creates its own organization or representation of information it receives during learning time is
A) Supervised Learning
B) Self Organization
C) Adaptive Learning
D) What-If Analysis
  • 6. In artificial Neural Network interconnected processing elements are called
A) axons
B) nodes or neurons
C) Soma
D) weights
  • 7. Each connection link in ANN is associated with ________  which has information about the input signal.
A) activation function
B) neurons
C) bias
D) weights
  • 8. Neurons or artificial neurons  have the capability to model networks of original neurons as found in brain
A) TRUE
B) FALSE
  • 9. Internal state of neuron is called __________,  is the function of the inputs the neurons receives
A) Bias
B) Weight
C) None of these
D) activation or activity level of neuron
  • 10. Neuron can send  ________  signal at a time.
A) multiple
B) any number of
C) none
D) one
  • 11. The network that involves backward links from output to the input and hidden layers is called as ____.
A) Perceptrons
B) Self organizing maps
C) Multi layered perceptron
D) Recurrent neural network
  • 12. Automated vehicle is an example of ______.
A) Active learning
B) Unsupervised learning
C) Supervised learning
D) Reinforcement learning
  • 13. In an Unsupervised learning.
A) Both inputs and outputs are given
B) specific output values are not given
C) No specific Inputs are given
D) Specific output values are given
  • 14. Neural Networks are complex -----------------------with many parameters.
A) Linear Functions
B) Exponential Functions
C) Nonlinear Functions
D) Discrete Functions
  • 15. Neural networks in which information is fed both backward and forward are called as ________
A) Feedforward neural networks
B) Recurrent neural networks
  • 16. Neural networks in which output from one layer is fed as input to another layer are called as ________
A) Feedforward neural networks
B) Recurrent neural networks
  • 17. Activation models are --------------
A) Dynamic
B) Static
C) Deterministic
  • 18. What’s the main point of difference between human & machine intelligence?
A) human have emotions
B) human have more IQ & intellect
C) human have sense organs
D) human perceive everything as a pattern while machine perceive it merely as data
  • 19. The fundamental unit of network is
A) neuron
B) axon
C) nucleus
D) brain
  • 20. What is hebb’s rule of learning
A) the system learns from its past mistakes
B) the system recalls previous reference inputs & respective ideal outputs
C) the strength of neural connection get modified accordingly
Created with That Quiz — where a math practice test is always one click away.