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Multilayer perceptrons
Multilayer perceptrons

Probability Distributions over Structured Spaces
Probability Distributions over Structured Spaces

... 2007). Again, different spaces often require special-purpose learning algorithms, and the structure of the probability space is rarely taken into account explicitly. Moreover, the probabilistic representations that support logical constraints do not support the learning of such constraints, with the ...
chp10
chp10

... Because we still have a multitude of problems that cannot be solved by a computer at all. Because we still have a multitude of (unfortunately practiceclose) problems that are solvable but need years or hundreds of years to come to a result. Because humans are “more intelligent” than computers in a v ...
Intelligence: Real and Artificial
Intelligence: Real and Artificial

... What about Sapir-Whorf? • Anthropologist John Lucy – Speakers of languages with different basic color vocabularies might sort non-primary colors (e.g., turquoise, chartruese) in slightly different ways ...
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CZ24655657

Homework 5 (due October 27, 2009)
Homework 5 (due October 27, 2009)

... We will then keep track of scores over a certain time span, and conclude that the meteorologist with the highest average score is the best predictor of weather. Suppose now that a given meteorologist is aware of this and so wants to maximize his or her expected score. If this person truly believes t ...
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On the Non-Existence of a Universal Learning Algorithm for

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Compete to Compute

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The Impact of Sample Reduction on PCA-based Feature Mykola Pechenizkiy Seppo Puuronen

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Intro-1-fall08

... – sounds made by this “lookup” approach sound unnatural – sounds are not independent • e.g., “act” and “action” • modern systems (e.g., at AT&T) can handle this pretty well – a harder problem is emphasis, emotion, etc • humans understand what they are saying • machines don’t: so they sound unnatural ...
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Powerpoint slides - Computer Science

... • Given new s, predict a, guided by case outcomes as well as similarities ...
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View/Download-PDF - International Journal of Computer Science

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Why Machine Learning? - Lehrstuhl für Informatik 2

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Intro to Metrics

... • An objective distribution is when the probabilities of each outcome are based on the number of times the outcome occurs divided by the total number of outcomes. • EX: The probability of drawing a red ball from a jar with 5 red balls and a total of 50 balls is 5/50 or 1 chance in 10. • Should all p ...
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Survey Paper on Cube Computation Techniques

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INTRODUCTION - Department of Computer Science

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42 PERCENT

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Machine Learning: Probability Theory

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Modeling Estuarine Salinity Using Artificial Neural Networks

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Peer Mentoring

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Electronic Relay Reset Module

... ASTS USA’s Electronic Relay Reset Module supports the PV250E and TRU-III units in MicroLok II cab signal track circuit applications that do not incorporate a Track Relay. Using an output of this module, the PV-250E or TRU-III can provide a direct input to MicroLok II for train detection, or use an A ...
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... 500 of the most informative features are selected. The F1 metric is adopted as our evaluation metric, which has been shown to be more reliable metric than other metrics such as the classification accuracy. More specifically, the F1 is defined as ...
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Performance Analysis of Data Mining Algorithms to Generate

Mouse in a Maze - Bowdoin College
Mouse in a Maze - Bowdoin College

< 1 ... 109 110 111 112 113 114 115 116 117 ... 193 >

Pattern recognition

Pattern recognition is a branch of machine learning that focuses on the recognition of patterns and regularities in data, although it is in some cases considered to be nearly synonymous with machine learning. Pattern recognition systems are in many cases trained from labeled ""training"" data (supervised learning), but when no labeled data are available other algorithms can be used to discover previously unknown patterns (unsupervised learning).The terms pattern recognition, machine learning, data mining and knowledge discovery in databases (KDD) are hard to separate, as they largely overlap in their scope. Machine learning is the common term for supervised learning methods and originates from artificial intelligence, whereas KDD and data mining have a larger focus on unsupervised methods and stronger connection to business use. Pattern recognition has its origins in engineering, and the term is popular in the context of computer vision: a leading computer vision conference is named Conference on Computer Vision and Pattern Recognition. In pattern recognition, there may be a higher interest to formalize, explain and visualize the pattern, while machine learning traditionally focuses on maximizing the recognition rates. Yet, all of these domains have evolved substantially from their roots in artificial intelligence, engineering and statistics, and they've become increasingly similar by integrating developments and ideas from each other.In machine learning, pattern recognition is the assignment of a label to a given input value. In statistics, discriminant analysis was introduced for this same purpose in 1936. An example of pattern recognition is classification, which attempts to assign each input value to one of a given set of classes (for example, determine whether a given email is ""spam"" or ""non-spam""). However, pattern recognition is a more general problem that encompasses other types of output as well. Other examples are regression, which assigns a real-valued output to each input; sequence labeling, which assigns a class to each member of a sequence of values (for example, part of speech tagging, which assigns a part of speech to each word in an input sentence); and parsing, which assigns a parse tree to an input sentence, describing the syntactic structure of the sentence.Pattern recognition algorithms generally aim to provide a reasonable answer for all possible inputs and to perform ""most likely"" matching of the inputs, taking into account their statistical variation. This is opposed to pattern matching algorithms, which look for exact matches in the input with pre-existing patterns. A common example of a pattern-matching algorithm is regular expression matching, which looks for patterns of a given sort in textual data and is included in the search capabilities of many text editors and word processors. In contrast to pattern recognition, pattern matching is generally not considered a type of machine learning, although pattern-matching algorithms (especially with fairly general, carefully tailored patterns) can sometimes succeed in providing similar-quality output of the sort provided by pattern-recognition algorithms.
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