Chromium Code Reviews| Index: appengine/findit/crash/loglinear/training.py |
| diff --git a/appengine/findit/crash/loglinear/training.py b/appengine/findit/crash/loglinear/training.py |
| index f094848713c5f024c0cd5d594615c9c33e169f43..3538a51bf50eee3d0e2173c914478be09d45e3a6 100644 |
| --- a/appengine/findit/crash/loglinear/training.py |
| +++ b/appengine/findit/crash/loglinear/training.py |
| @@ -33,7 +33,7 @@ class TrainableLogLinearModel(LogLinearModel): |
| ``float``. N.B., the length of the list must be the same for all |
| ``x`` and ``y``, and must be the same as the length of the list |
| of weights. |
| - initial_weights (list of float): the pre-training coefficients |
| + initial_weights (dict from str to float): the pre-training coefficients |
| for how much we believe components of the feature vector. This |
| provides the seed for training; this starting value shouldn't |
| affect the final weights obtained by training (thanks to |
| @@ -47,6 +47,7 @@ class TrainableLogLinearModel(LogLinearModel): |
| super(TrainableLogLinearModel, self).__init__( |
| Y_given_X, feature_function, initial_weights, epsilon) |
| self._training_data = training_data |
| + self._feature_order = initial_weights.keys() |
|
wrengr
2017/01/11 20:38:30
You should explicitly convert this to a list (or t
Sharu Jiang
2017/01/12 01:41:38
I think the ``.keys()`` will return a list, but ex
wrengr
2017/01/12 18:16:16
So it does. Weird.
|
| self._observed_feature_vector = vsum([ |
| self.FeaturesAsNumPyArray(x)(y) |
| @@ -65,33 +66,26 @@ class TrainableLogLinearModel(LogLinearModel): |
| return self._weights |
| @weights.setter |
| - def weights(self, new_weights): # pylint: disable=W0221 |
| + def weights(self, new_np_weights): # pylint: disable=W0221 |
| """Mutate the weight covector, and clear memos as necessary. |
| This setter attempts to avoid clearing memos whenever possible, |
| but errs on the side of caution/correctness when it needs to. |
| Args: |
| - new_weights (np.ndarray): the new weights to use. Must have the |
| - same shape as the old ``np.ndarray``. |
| + new_np_weights (np.ndarray): the new weights to use. It will be converted |
| + to weights dict mapping feature_name to its weight. |
| """ |
| - if new_weights is self._weights: |
| - return |
| - |
| - if not isinstance(new_weights, np.ndarray): |
| - raise TypeError('Expected an np.ndarray but got %s instead' |
| - % new_weights.__class__.__name__) |
| - |
| - if new_weights.shape != self._weights.shape: |
| - raise TypeError('Weight shape mismatch: %s != %s' |
| - % (new_weights.shape, self._weights.shape)) |
| - |
| + new_weights = self.NumPyArrayToWeights(new_np_weights) |
| self.ClearWeightBasedMemos() |
| self._weights = new_weights |
|
wrengr
2017/01/11 20:38:31
To avoid excessive conversion back and forth, this
Sharu Jiang
2017/01/12 01:41:38
Done.
|
| def FeaturesAsNumPyArray(self, x): |
| """A variant of ``Features`` which returns a ``np.ndarray``. |
| + Note, the features nparray should have the same order as in |
| + self._feature_order to stay aligned with weights np array. |
| + |
| For training we need to have the feature function return an |
| ``np.ndarray(float)`` rather than the ``list(FeatureValue)`` used |
| elsewhere. This function performes the necessary conversion. |
| @@ -103,7 +97,44 @@ class TrainableLogLinearModel(LogLinearModel): |
| bottleneck, we can add the extra layer of memoization to avoid that. |
| """ |
| fx = self.Features(x) |
| - return lambda y: np.array([fxy.value for fxy in fx(y)]) |
| + def FeaturesAsNumPyArrayGivenX(y): |
| + fxys = fx(y) |
| + return np.array([fxys[feature_name].value if feature_name in fxys else 0. |
|
wrengr
2017/01/11 20:38:30
is clearer to use ``fxys.get(feature_name, 0.)``
Sharu Jiang
2017/01/12 01:41:38
I have to do this, because I need ``fxys[feature_n
wrengr
2017/01/12 18:16:16
hrm... that does make it tricky.
This sort of thi
|
| + for feature_name in self._feature_order]) |
| + |
| + return FeaturesAsNumPyArrayGivenX |
| + |
| + def WeightsAsNumPyArray(self): |
| + """Converts dict (mapping feature name to weight) to numpy array. |
| + |
| + Note, this conversion is needed because model uses weights dict to organize |
| + weights for features, however SciPy trainning (e.g. BFGS) needs numpy array |
| + to do computaion. |
| + """ |
| + return np.array([self._weights.get(feature_name, 0.) |
| + for feature_name in self._feature_order]) |
|
wrengr
2017/01/11 20:38:31
Again, to avoid excessive conversion, we can do th
Sharu Jiang
2017/01/12 01:41:38
Done.
|
| + |
| + def NumPyArrayToWeights(self, np_weights): |
| + """Converts numpy array to dict (mapping feature name to weight). |
| + |
| + Note, this conversion is needed because model uses weights dict to organize |
| + weights for features, however SciPy trainning (e.g. BFGS) needs numpy array |
| + to do computaion. |
| + |
| + Args: |
| + np_weights (np.ndarray): Weights which have the same order of |
| + self._feature_order. Note, featuer np array should also be serialized by |
| + the same order as self._feature_order to match. |
| + |
| + Returns: |
| + A dict mapping feature name to weight. |
| + """ |
| + if not isinstance(np_weights, np.ndarray): |
| + raise TypeError('Expected an np.ndarray but got %s instead' |
| + % np_weights.__class__.__name__) |
| + |
| + return {feature_name: weight |
| + for feature_name, weight in zip(self._feature_order, np_weights)} |
| def LogLikelihood(self): |
| """The conditional log-likelihood of the training data. |
| @@ -122,7 +153,8 @@ class TrainableLogLinearModel(LogLinearModel): |
| will be the log-likelihood plus some penalty terms for regularization. |
| """ |
| observed_zeta = math.fsum(self.LogZ(x) for x, _ in self._training_data) |
| - observed_score = self.weights.dot(self._observed_feature_vector) |
| + observed_score = self.WeightsAsNumPyArray().dot( |
| + self._observed_feature_vector) |
| return observed_score - observed_zeta |
| def LogLikelihoodGradient(self): |
| @@ -142,7 +174,7 @@ class TrainableLogLinearModel(LogLinearModel): |
| Returns: |
| Nothing, but has the side effect of mutating the stored weights. |
| """ |
| - initial_weights = self.weights |
| + initial_weights = self.WeightsAsNumPyArray() |
| # We want to minimize the number of times we reset the weights since |
| # that clears our memos. One might think we could do that in the |
| @@ -158,7 +190,7 @@ class TrainableLogLinearModel(LogLinearModel): |
| def objective_function_gradient(new_weights): |
| self.weights = new_weights |
| - return -self.LogLikelihoodGradient() + l2_penalty * self.weights |
| + return -self.LogLikelihoodGradient() + l2_penalty * new_weights |
|
wrengr
2017/01/11 20:38:31
I don't think that's any cleaner than the old code
Sharu Jiang
2017/01/12 01:41:38
This is because we need np_array here instead of a
wrengr
2017/01/12 18:16:16
Ah, right <chagrin>
|
| result = spo.minimize( |
| objective_function, |