Bus 5730
A Perceptron is an ANN with only two layers.
False
A classification model is used to predict how long a person is likely to live.
False
A model successful for training data set means that my machine learning algorithm is ready for use.
False
A regression model is used to predict things like "how likely is someone to buy a specific item."
False
AI and Machine Learning (ML) are important for companies, but they don't impact our personal lives.
False
AI cannot classify skin lesions as cancerous or benign as well as a board certified dermatologist.
False
AI is just one part of Machine Learning.
False
Army research has shown that AI can readily be applied to various "things" on the battlefield to provide significant and reliable aid to warfighters.
False
Artificial Intelligence (AI) is a relatively new area of study.
False
Clustering is an example of supervised machine learning.
False
Constructing a decision tree is all about finding an attribute that returns the highest entropy and the smallest information gain.
False
During the data preparation process (step 4), we should simply delete any sample with missing values.
False
Edge computing means that data is processed in the professional data centers so it can be processed faster and safer.
False
Forward chaining in expert system answers the question "Why did this happen?".
False
Having Big Data is a prerequisite for building deep-learning ANNs.
False
It's difficult to debug expert systems because the information in the database is not explicit.
False
It's hard to get experts to select the most important items for scorecards. They seem to include far too many items.
False
One expert noted that we have many established methods to test AI for safety, fairness, and effectiveness.
False
Personal data is illegal to use in ML systems, worldwide.
False
"Reinforcement Learning" involves having computers repeat an action until something difficult goes more smoothly and then favoring the behavior that led to that outcome.
True
AI can write movie scripts but is not as creative as human.
True
AI has become more capable due to the continued improvement of computers and computing, commonly known as Moore's Law.
True
Any situation in which you have a lot of data and are trying to predict an outcome is a potential application for supervised learning systems.
True
Autonomous robots are used to boost agriculture total factor productivity (TFP) growth.
True
Big Data normally refers not just to large amounts of data, but to data that is volatile.
True
DLSS uses low resolution images and upscales them using neural networks.
True
Deep Learning is the stepping stone for efficient and effective mainstream Machine Learning models in the open marketplace.
True
Deep learning is used to develop drugs and vaccines.
True
Deep neural networks are employed in self driving cars.
True
Ensembles utilize several models, like a group of experts.
True
Ethical use is an important consideration for ML systems, but what constitutes "ethical use" is not always clear.
True
Even though we may have large amounts of data, we sometimes may have to create additional data to revise existing data or summarize it in different ways.
True
Expert systems are modeled on the belief that human cognition uses "rules."
True
Expert systems try to solve problems that are difficult enough to require significant human expertise.
True
Facial recognition systems are currently in use by some police units.
True
Heuristics are ways of reacting to situations which might or might not lead to a "solution."
True
In ML, we have software that learns from examples, rather than being explicitly programmed for a particular outcome.
True
It's often possible to develop decision trees and scorecard models that reach essentially the same predictions.
True
ML efforts to aid in controlling online comments that are abusive are likely to be limited because of the need for context in some online models.
True
ML is the use of algorithms to analyze data.
True
Multi-layer ANNs generally use the Sigmoid activation function because it has a nice derivative, needed for the training mode.
True
Natural language processing (NLP) is a branch of artificial intelligence that helps computers understand, interpret, and manipulate human languages.
True
One focus in ML systems is to provide better interfaces to business managers as the users.
True
Scorecard models are attractive because we can see what data items contribute to the score someone receives.
True
Semantic analysis helps a machine understand the meaning of a text.
True
Some data that might be highly predictive might also be illegal to collect.
True
Stemming and Lemmatization are usually used in Natural language Processing (e.g. spam filtering) to prepare text, words, and documents for further processing.
True
Supervised learning discovers patterns in the data that relate data attributes with a target attribute.
True
The aim of ML is to discover useful patterns between different items of data and use them to make inferences about the behavior of new cases when they present themselves.
True
Three areas where AI can benefit healthcare are diagnostics, treatment, and administrative processes.
True
Unsupervised learning is a type of machine learning algorithm used to draw inferences from datasets consisting of input data without labeled responses or target attribute.
True
Variable/feature selection improves the accuracy of a model if the right subset is chosen.
True
We can be misled by the results of a model -- it looks as if it's very accurate, but really isn't better than other simple models.
True
We can calculate travel time of a commute with the Bluetooth technology.
True
While implementing virtual reality technology for military use is expensive at first, it is expected to reduce costs in the long term.
True
Expert systems are best at dealing with broad domains.
False
Leaf nodes are at the beginning of a decision tree.
False
ML learning systems usually replace the entire job, process, or business model when they are applied.
False
Netflix used only one model to optimize their recommendation engine.
False
Satellite GIS data is replacing the use of UAVs in Precision Agriculture.
False
Since databases for ML systems will be extremely large, there is no way that we can understand all the kinds of data used, nor should we try to.
False
Support Vector Machines algorithm is typically used for a low number of features.
False
The concept of an AI chatbot has failed because people wouldn't use it.
False
The data that we're concerned about relative to ethical use (age, race, gender, etc.) are not usually correlated with predictions anyway.
False
The difference between "active" and "passive" ML systems is that active ones are constantly adding active data.
False
We don't ever want to change the existing data of an ML system, even to consolidate inconsistent values.
False
What products customers usually buy together from Amazon is a classification question.
False
When measuring fairness, the smaller disparate impact value is (close to 0), the fairer a prediction model is.
False
While most social media companies use AI, it has little impact on the content we see when using their applications.
False
Artificial neural networks (ANN) are better for motion tracking in virtual reality devices than convolutional neural networks (CNN).
False