# Tag Info

169

Your question as I understand is divided in two parts. One being you need more understanding for Naive Bayes classifier & second being the confusion surrounding Training set. In general all of Machine Learning Algorithms need to be trained for supervised learning tasks like classification, prediction etc. or for unsupervised learning tasks like ...

135

I've done some work for Toyota that involved using neural networks to predict when a driver was about to crash. We used a neuroevolution algorithm called NEAT to evolve networks that converted either sonar, laser rangefinder, or CCD camera input into a warning signal. The warning signal was then provided to the driver, with the goal of helping them avoid ...

120

They likely use Information Extraction techniques for this. Here is a demo of Stanford's SUTime tool: http://nlp.stanford.edu:8080/sutime/process You would extract attributes about n-grams (consecutive words) in a document: numberOfLetters numberOfSymbols length previousWord nextWord nextWordNumberOfSymbols ... And then use a classification algorithm, ...

118

If you're looking for a quick overview of the field, I recommend Christopher Bishop's 2010 Turing Lecture: Embracing Uncertainty: The new machine intelligence. An update on general trends in Microsoft Research is Eric Horvitz's Predictions, Decisions, and Intelligence in the Open World. The best formal overview I've seen so far is Stanford professor Andrew ...

117

Like others have said, I think that biases are almost always helpful. In effect, a bias value allows you to shift the activation function to the left or right, which may be critical for successful learning. It might help to look at a simple example. Consider this 1-input, 1-output network that has no bias: The output of the network is computed by ...

110

Let's say you have input data x and you want to classify the data into labels y. A generative model learns the joint probability distribution p(x,y) and a discriminative model learns the conditional probability distribution p(y|x) - which you should read as "the probability of y given x". Here's a really simple example. Suppose you have the following data ...

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That's a technology Apple actually developed a very long time ago called Apple Data Detectors. You can read more about it here: http://www.miramontes.com/writing/add-cacm/ Essentially it parses the text and detects patterns that represent specific pieces of data, then applies OS-contextual actions to it. It's neat.

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The best tutorial I have seen for LSH is in the book: Mining of Massive Datasets. Check Chapter 3 - Finding Similar Items http://infolab.stanford.edu/~ullman/mmds/ch3a.pdf Also I recommend the below slide: http://www.cs.jhu.edu/%7Evandurme/papers/VanDurmeLallACL10-slides.pdf . The example in the slide helps me a lot in understanding the hashing for cosine ...

84

Since you ask this very basic question, it looks like it's worth specifying what Machine Learning itself is. Machine Learning is a class of algorithms which is data-driven, i.e. unlike "normal" algorithms it is the data that "tells" what the "good answer" is. Example: an hypothetical non-machine learning algorithm for face recognition in images would try to ...

67

I found this article some time ago: http://www.norvig.com/spell-correct.html. It's an interesting read about the "spelling correction" topic. The examples are in Python but it's clear and simple to understand, and I think that the algorithm can be easily translated to other languages.

62

What you are looking for is called Named Entity Recognition. It is a statistical technique that uses Conditional Random Fields to find named entities, based on having been trained to learn things about named entities. Essentially, it looks at the content and context of the word, (looking back and forward a few words), to estimate the probability that the ...

61

There is also scikit-learn (BSD, with only dependencies on numpy & scipy). It includes various supervised learning algorithms such as: SVM based on libsvm and linear with scipy.sparse bindings for wide features datasets bayesian methods HMMs L1 and L1+L2 regularized regression methods aka Lasso and Elastic Net models implemented with algorithms such as ...

56

In your current code, the perceptron successfully learns the direction of the decision boundary BUT is unable to translate it. y y /\ /\ | - + \\ + | - \\ + + | - +\\ + + | - \\ + + + | - - \\ + | - - \\ + ...

54

I realize that this is an old question, with an established answer. The reason I'm posting is that is the accepted answer has many elements of kNN (k nearest neighbor), a different algorithm. Both kNN and NaiveBayes are classification algorithms. Conceptually, kNN uses the idea of "nearness" to classify new entities. In kNN 'nearness' is modeled with ideas ...

53

For the past three years or so, i have used R daily, and the largest portion of that daily use is spent on Machine Learning/Data Mining problems. I was an exclusive Matlab user while in University; at the time i thought it was an excellent set of tools/platform. I am sure it is today as well. The Neural Network Toolbox, the Optimization Toolbox, Statistics ...

51

Particularly given the technique (k-Nearest Neighbors) that you mentioned in your Q, i would strongly recommend scikits.learn. [Note: after this Answer was posted, the lead developer of this Project informed me of a new homepage for this Project.] A few features that i believe distinguish this library from the others (at least the other Python ML libraries ...

50

A generative algorithm models how the data was generated in order to categorize a signal. It asks the question: based on my generation assumptions, which category is most likely to generate this signal? A discriminative algorithm does not care about how the data was generated, it simply categorizes a given signal.

50

What is a machine learning ? Essentially, it is a method of teaching computers to make and improve predictions or behaviors based on some data. What is this "data"? Well, that depends entirely on the problem. It could be readings from a robot's sensors as it learns to walk, or the correct output of a program for certain input. Another way to think ...

45

From wikipedia: A genetic algorithm (GA) is a search technique used in computing to find exact or approximate solutions to optimization and search problems. and: Neural networks are non-linear statistical data modeling tools. They can be used to model complex relationships between inputs and outputs or to find patterns in data. If you have a ...

45

I would expect soft-margin SVM to be better even when training dataset is linearly separable. The reason is that in a hard-margin SVM, a single outlier can determine the boundary, which makes the classifier overly sensitive to noise in the data. In the diagram below, a single red outlier essentially determines the boundary, which is the hallmark of ...

44

In 2007 I was part of a group of master students put to the task of classifying ground (vs. buildings, cars, trees, etc.) in a photograph. The project was focused on image processing and understanding, where the task was to attempt to extrapolate parts of panoramic 360° photographs. For example, we would take the photograph below (taken with a customized ...

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I currently study such problems -- classification, nearest neighbor searching -- for music information retrieval. You may be interested in Approximate Nearest Neighbor (ANN) algorithms. The idea is that you allow the algorithm to return sufficiently near neighbors (perhaps not the nearest neighbor); in doing so, you reduce complexity. You mentioned the ...

41

From this guy's paper here: http://www.inference.phy.cam.ac.uk/mackay/BayesGP.html ('Gaussian Processes - A Replacement for Supervised Neural Networks?') he states "The most interesting problems, the task of feature discovery for example, are not ones which Gaussian processes will solve. But maybe multilayer perceptrons can't solve them either." ...

41

The thing you're describing is a recommendation engine; more specifically collaborative filtering. It's the heart of Amazon's "people who bought x also bought y" feature, and Netflix's recommendation engine. It's a non-trivial undertaking. As in, to get anything that's even remotely useful could easily take more than building the ecommerce site in the ...

39

I think you're overestimating the capabilities of most modern game AI; which is great, because that's exactly what modern game developers are hoping for. They invest time into making the system appear more intelligent than it is, for example by having the AI characters talk about what they're going to do, or by occasionally following pre-set scripts that ...

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This related stackoverflow question has some nice answers: What are good starting points for someone interested in natural language processing? This is a very big field. The prerequisites mostly consist of probability/statistics, linear algebra, and basic computer science, although Natural Language Processing requires a more intensive computer science ...

36

AFAIK, Orange may be the best choice at the moment. PyML is good too. PyMC for Bayesian estimation. and, there is a Book "Machine Learning: An Algorithmic Perspective", There are lots of Python code examples in the book, maybe it is worth reading. and there is a blog post: Pragmatic Classification with Python. Just my two cents.

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A classic paper by Peter Turney (2002) explains a method to do unsupervised sentiment analysis (positive/negative classification) using only the words excellent and poor as a seed set. Turney uses the mutual information of other words with these two adjectives to achieve an accuracy of 74%.

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Judging from the examples you provide, I'm assuming that by ANNs, you mean multilayer feed-forward networks (FF nets for short), such as multilayer perceptrons, because those are in direct competition with SVMs. One specific benefit that these models have over SVMs is that their size is fixed: they are parametric models, while SVMs are non-parametric. That ...

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I think the phrase 'no longer fashionable' is more appropriate than 'obselete'. The fact is that the research community is just as susceptible to hype and fashion as any other community. Neural networks were hyped a lot several years ago as one of the early AI technologies which was going to solve all the problems in the world. Neural networks have since ...

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