mirror of https://github.com/davisking/dlib.git
152 lines
6.8 KiB
Python
Executable File
152 lines
6.8 KiB
Python
Executable File
#!/usr/bin/python
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# The contents of this file are in the public domain. See LICENSE_FOR_EXAMPLE_PROGRAMS.txt
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#
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#
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# This is an example illustrating the use of the SVM-Rank tool from the dlib C++
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# Library. This is a tool useful for learning to rank objects. For example,
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# you might use it to learn to rank web pages in response to a user's query.
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# The idea being to rank the most relevant pages higher than non-relevant pages.
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#
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# In this example, we will create a simple test dataset and show how to learn a
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# ranking function from it. The purpose of the function will be to give
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# "relevant" objects higher scores than "non-relevant" objects. The idea is
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# that you use this score to order the objects so that the most relevant objects
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# come to the top of the ranked list.
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#
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#
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# COMPILING/INSTALLING THE DLIB PYTHON INTERFACE
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# You can install dlib using the command:
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# pip install dlib
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#
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# Alternatively, if you want to compile dlib yourself then go into the dlib
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# root folder and run:
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# python setup.py install
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#
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# Compiling dlib should work on any operating system so long as you have
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# CMake installed. On Ubuntu, this can be done easily by running the
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# command:
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# sudo apt-get install cmake
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#
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import dlib
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# Now let's make some testing data. To make it really simple, let's suppose
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# that we are ranking 2D vectors and that vectors with positive values in the
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# first dimension should rank higher than other vectors. So what we do is make
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# examples of relevant (i.e. high ranking) and non-relevant (i.e. low ranking)
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# vectors and store them into a ranking_pair object like so:
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data = dlib.ranking_pair()
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# Here we add two examples. In real applications, you would want lots of
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# examples of relevant and non-relevant vectors.
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data.relevant.append(dlib.vector([1, 0]))
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data.nonrelevant.append(dlib.vector([0, 1]))
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# Now that we have some data, we can use a machine learning method to learn a
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# function that will give high scores to the relevant vectors and low scores to
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# the non-relevant vectors.
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trainer = dlib.svm_rank_trainer()
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# Note that the trainer object has some parameters that control how it behaves.
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# For example, since this is the SVM-Rank algorithm it has a C parameter that
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# controls the trade-off between trying to fit the training data exactly or
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# selecting a "simpler" solution which might generalize better.
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trainer.c = 10
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# So let's do the training.
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rank = trainer.train(data)
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# Now if you call rank on a vector it will output a ranking score. In
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# particular, the ranking score for relevant vectors should be larger than the
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# score for non-relevant vectors.
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print("Ranking score for a relevant vector: {}".format(
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rank(data.relevant[0])))
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print("Ranking score for a non-relevant vector: {}".format(
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rank(data.nonrelevant[0])))
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# The output is the following:
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# ranking score for a relevant vector: 0.5
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# ranking score for a non-relevant vector: -0.5
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# If we want an overall measure of ranking accuracy we can compute the ordering
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# accuracy and mean average precision values by calling test_ranking_function().
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# In this case, the ordering accuracy tells us how often a non-relevant vector
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# was ranked ahead of a relevant vector. In this case, it returns 1 for both
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# metrics, indicating that the rank function outputs a perfect ranking.
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print(dlib.test_ranking_function(rank, data))
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# The ranking scores are computed by taking the dot product between a learned
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# weight vector and a data vector. If you want to see the learned weight vector
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# you can display it like so:
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print("Weights: {}".format(rank.weights))
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# In this case the weights are:
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# 0.5
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# -0.5
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# In the above example, our data contains just two sets of objects. The
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# relevant set and non-relevant set. The trainer is attempting to find a
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# ranking function that gives every relevant vector a higher score than every
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# non-relevant vector. Sometimes what you want to do is a little more complex
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# than this.
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#
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# For example, in the web page ranking example we have to rank pages based on a
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# user's query. In this case, each query will have its own set of relevant and
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# non-relevant documents. What might be relevant to one query may well be
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# non-relevant to another. So in this case we don't have a single global set of
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# relevant web pages and another set of non-relevant web pages.
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#
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# To handle cases like this, we can simply give multiple ranking_pair instances
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# to the trainer. Therefore, each ranking_pair would represent the
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# relevant/non-relevant sets for a particular query. An example is shown below
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# (for simplicity, we reuse our data from above to make 4 identical "queries").
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queries = dlib.ranking_pairs()
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queries.append(data)
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queries.append(data)
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queries.append(data)
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queries.append(data)
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# We can train just as before.
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rank = trainer.train(queries)
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# Now that we have multiple ranking_pair instances, we can also use
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# cross_validate_ranking_trainer(). This performs cross-validation by splitting
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# the queries up into folds. That is, it lets the trainer train on a subset of
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# ranking_pair instances and tests on the rest. It does this over 4 different
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# splits and returns the overall ranking accuracy based on the held out data.
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# Just like test_ranking_function(), it reports both the ordering accuracy and
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# mean average precision.
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print("Cross validation results: {}".format(
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dlib.cross_validate_ranking_trainer(trainer, queries, 4)))
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# Finally, note that the ranking tools also support the use of sparse vectors in
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# addition to dense vectors (which we used above). So if we wanted to do
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# exactly what we did in the first part of the example program above but using
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# sparse vectors we would do it like so:
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data = dlib.sparse_ranking_pair()
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samp = dlib.sparse_vector()
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# Make samp represent the same vector as dlib.vector([1, 0]). In dlib, a sparse
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# vector is just an array of pair objects. Each pair stores an index and a
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# value. Moreover, the svm-ranking tools require sparse vectors to be sorted
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# and to have unique indices. This means that the indices are listed in
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# increasing order and no index value shows up more than once. If necessary,
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# you can use the dlib.make_sparse_vector() routine to make a sparse vector
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# object properly sorted and contain unique indices.
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samp.append(dlib.pair(0, 1))
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data.relevant.append(samp)
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# Now make samp represent the same vector as dlib.vector([0, 1])
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samp.clear()
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samp.append(dlib.pair(1, 1))
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data.nonrelevant.append(samp)
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trainer = dlib.svm_rank_trainer_sparse()
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rank = trainer.train(data)
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print("Ranking score for a relevant vector: {}".format(
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rank(data.relevant[0])))
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print("Ranking score for a non-relevant vector: {}".format(
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rank(data.nonrelevant[0])))
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# Just as before, the output is the following:
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# ranking score for a relevant vector: 0.5
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# ranking score for a non-relevant vector: -0.5
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