Questions tagged [attention-model]

Questions regarding attention model mechanism in deep learning

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8 views

How to take the Dot product of two BiLSTM Sequential Models in Keras as an Attention Mechanism

I'm trying to adapt the code here: https://github.com/sujitpal/dl-models-for-qa/blob/master/src/qa-lstm-story.py implemented in Keras 1.x for Keras 2.2.4, specifically regarding the now deprecated ...
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23 views

Implementing self attention

I am trying to implement self attention in Pytorch. I need to calculate the following expressions. Similarity function S (2 dimensional), P(2 dimensional), C' S[i][j] = W1 * inp[i] + W2 * inp[j] + ...
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1answer
11 views

Getting alignment/attention during translation in OpenNMT-py

Does anyone know how to get the alignments weights when translating in Opennmt-py? Usually the only output are the resulting sentences and I have tried to find a debugging flag or similar for the ...
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0answers
30 views

How to make lstm/rnn focus more on certain parts of time series while less on other parts using tensorflow?

I have a time series prediction problem where most of the observed values (95%) are 0s while remaining values are non-zeros. How can I make use of RNN for this problem. I want to predict surface flow ...
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75 views

PyTorch runtime error: expected argument to have type long, but got CPUType instead

I'm new to PyTorch and going through this tutorial on the transformer model. I'm using PyCharm on Win10. For now, I've basically just copy-pasted the example code, but I'm getting the following error: ...
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23 views

Converting Attention positional-encoding from PyTorch to Keras

I'm trying to implement positional-encoding from Attention Is All You Need, following this repository. There are two specific code blocks that I will need to add in my model, where both are in this ...
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0answers
20 views

Value error while predicting result using Convlstm2d with attention layer?

I am integrating Attention mechanism with convlstm2d. I can build and fit the model but getting value error while predicting the result. I am using attention layer implementation of from: https://www....
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1answer
41 views

How to makeup FSNS dataset with my own image for attention OCR tensorflow model

I want to apply attention-ocr to detect all digits on number board of cars. I've read your README.md of attention_ocr on github(https://github.com/tensorflow/models/tree/master/research/attention_ocr),...
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17 views

Attention scores for padded tokens in variable input sequence length

When using RNNs (LSTM/GRU), we pass input sequence length to restrict unrolling of sequence. So, for examples if actual sequence length is 8 and padded with 2 extra tokens, hidden state of 8th token ...
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15 views

How to make attention efficiently with long sequence use Keras

In this problem, I have a RNA sequence with 1k+ length, and want to predict a same(1k+) length char-based sequence as secondry structure. Train set have 10k+ sequence. Test set have 16 sequence. I use ...
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1answer
46 views

Some parameters are not getting saved when saving a model in pytorch

I have built an encoder-decoder model with attention for morph inflection generation. I am able to train the model and predict on test data but I am getting wrong predicting after loading a saved ...
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1answer
80 views

Luong Attention and Bahdanau. Which one is better and Why? [closed]

i'm kind new with machine learning concept, especially machine translation. I've read about the Luong's Attention and Bahdanau's Attention. Luong is said to be “multiplicative” while Bahdanau is “...
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21 views

How to assign values to a variable without breaking the computation graph

I'm trying to implement the basic attention mechanism applied to graphs. In order to speed up the process I constructed from the adjacency matrix two new matrices L and R. L and R are of shape (...
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65 views

Different `grad_fn` for similar looking operations in Pytorch (1.0)

I am working on an attention model, and before running the final model, I was going through the tensor shapes which flow through the code. I have an operation where I need to reshape the tensor. The ...
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29 views

Attention layer output shape issue

I have been using BiLSTMs to classify each word in sentences and my input is n_sentences, max_sequence_length, classes. Recently, I have been trying to use this attention layer: https://www.kaggle.com/...
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23 views

How to deal with longer tokens than encoder in NMT model

In NMT model(such as seq2seq or attention-model), how can I translate long sentences with longer tokens than the encoder?? Should I remake the neural network(with longer input size) or may I have some ...
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26 views

In tensorflow, how can I get the weighted sum from a attention mechanism

Now I have to build a multi-modal attention model, so I need to get the weighted sum from the attention model. I want to ask how can I get it in tensorflow? which is in paper always presented as C=...
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62 views

'GRU' object has no attribute 'outbound_nodes'

i want to add an attention mechanism to a sequence to sequence model. i have used this tutorial: https://medium.com/@dev.elect.iitd/neural-machine-translation-using-word-level-seq2seq-model-...
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1answer
18 views

How are parameters set for the config in attention-based models?

There are a few parameters in the config, particularly when I change the max_len, hidden_size or embedding_size. config = { "max_len": 64, "hidden_size": 64, "vocab_size": vocab_size, ...
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79 views

Attention layer on top of LSTM Autoencoder getting incompatibility error

I am deploying a Bidirectional LSTM Autoencoder, and am adding attention layer on top of that. Before adding attention layer it is working fine. I got the idea from this post for adding attention ...
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1answer
87 views

Attention in Keras : How to add different attention mechanism in keras Dense layer?

I am new in Keras and I am trying to build a simple autoencoder in keras with attention layers : Here what I tried : data = Input(shape=(w,), dtype=np.float32, name='input_da') noisy_data = Dropout(...
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1answer
32 views

model size too big with my attention model implementation?

I am implementing Minh-Thang Luong's attention model to build a english to chinese translater.And the model i trained has abnormally big size(980 MB).Minh-Thang Luong's original paper this is ...
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2answers
45 views

What do input layers represent in a Hierarchical Attention Network

I'm trying to grasp the idea of a Hierarchical Attention Network (HAN), most of the code i find online is more or less similar to the one here: https://medium.com/jatana/report-on-text-classification-...
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25 views

Keras repeat elements throwing ValueError List argument 'indices' to 'SparseConcat' Op with length 0 shorter than minimum length 2

I am trying to implement the code for Unsupervised Aspect Extraction from the code available here. Link to the paper While implementing Attention class in ml_layers.py, i am getting error in call ...
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14 views

in nmt_with_attention,the gru layer in decoder confuse me

Tensorflow have an example of seq2seq translate model using attention, in github link In the Decoder class, the gru layer is defined ,and it is used in call() function, the code is: output, state = ...
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0answers
109 views

Implementing a simple attention mechanism in Keras

I want to implement a simple attention mechanism to ensemble the results of a CNN model. Concretely, each example of my input is a sequences of images, so each example has shape [None, img_width, ...
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0answers
51 views

Graph disconnect in inference in Keras RNN + Encoder/Decoder + Attention

I've successfully trained a model in Keras using an encoder/decoder structure + attention + glove following several examples, most notably this one and this one. It's based on a modification of ...
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1answer
32 views

Why no word embeddings (Glove, word2vecetc) used in first attention paper?

In the paper Neural Machine Translation by Jointly Learning to Align and Translate Bahdanau et. al. why are there no word embeddings such as Glove or word2vec used? I understand that this was a 2014 ...
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0answers
142 views

Cannot parse GraphDef file in function 'ReadTFNetParamsFromTextFileOrDie' in OpenCV-DNN TensorFlow

I want to wrap the attention-OCR model with OpenCV-DNN to increase inference time. I am using the TF code from the official TF models repo. For wrapping TF model with OpenCV-DNN, I am referring to ...
4
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1answer
172 views

Hierarchical Attention Network - model.fit generates error 'ValueError: Input dimension mis-match'

For background, I am referring to the Hierarchical Attention Network used for sentiment classification. For code: my full code is posted below, but it is just simple revision of the original code ...
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2answers
38 views

Is attention mechanism really attention or just looking back at memory again?

When reading attention mechanism, I am confusing about the term attention. Is it the same with our attention nature as described in it usual definition?
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0answers
47 views

Type Error caused by using AttentionCellWrapper: Tensors cannot be iterated

System information - OS Platform and Distribution: Linux Manjaro Illyria 18.0.3 - Mobile device:if the issue happens on mobile device:no mobile device related - TensorFlow installed from: binary - ...
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1answer
159 views

weighted mask / adjusting weights in keras

I want to provide a mask, the same size as the input image and adjust the weights learned from the image according to this mask (similar to attention, but pre-computed for each image input). How can I ...
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1answer
47 views

why softmax get small gradient when the value is large in paper 'Attention is all you need'

This is the screen of the original paper: the screen of the paper. I understand the meaning of the paper is that when the value of dot-product is large, the gradient of softmax will get very small. ...
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1answer
20 views

Backpropagation in Attention Model

I am trying to figure out how to do backpropagation through the scaled dot product attention model. The scaled dot production attention takes Q(Queries),K(Keys),V(Values) as inputs and performs the ...
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42 views

Tensorflow LSTM test accuracy will not budge

I've been having problems with an LSTM in Tensorflow for weeks now and I'm out of ideas how to fix my situation. My data is a bunch of groups of texts. Each group has 3 texts in it and I'm trying to ...
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25 views

Get context vectors from AttentionWrapper

I need to extract the context vectors from the attention mechanism applied to a Seq2Seq model. My first guess was that I could find them in the output of the dynamic_decode decoder_cell = tf.nn....
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0answers
72 views

Transformer - Attention is all you need - encoder decoder cross attention

It is my understanding that each encoder block takes the output from the previous encoder, and that the output is the attended representation (Z) of the sequence (aka sentence). My question is, how ...
1
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1answer
222 views

Pytorch softmax along different masks without for loop

Say I have a vector a , with an index vector b of the same length. The indexs are in range 0~N-1, corresponding to N groups. How can I do softmax for every group without for loop? I'm doing some sort ...
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0answers
30 views

Unable to run AttnGan model from taoxugit's repository

I am trying to run AttnGan by following the documentation. I tried following the above suggestions in the docs, but I am still getting an assertion error. Can someone post the directory structure ...
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1answer
166 views

How to model RNN with Attention Mechanism for Non-Text Classification?

Recurrent Neural Networks (RNN) With Attention Mechanism is generally used for Machine Translation and Natural Language Processing. In Python, implementation of RNN With Attention Mechanism is ...
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74 views

How to manipulate encoder state in a multi-layer bidirectional with Attention Mechanism

I am implementing a Seq2Seq model with multi-layer bidirectional rnn and attention mechanism and while following this tutorial https://github.com/tensorflow/nmt I got confused about how to manipulate ...
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0answers
68 views

Exhaustive Concatenation between the tensors

I am trying to do the exhaustive concatenation between the tensors. So, for example, I have tensor: a = torch.randn(3, 512) I want to concatenate like concat(t1,t1),concat(t1,t2), concat(t1,t3), ...
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0answers
21 views

incorporate lda vectors in decomposable attention model in NLP

https://github.com/explosion/spaCy/blob/master/examples/keras_parikh_entailment/keras_decomposable_attention.py Suppose we have access to LDA vectors for our corpus. How can we modify the above model ...
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0answers
18 views

What should be the correct dimension of output of attention layer?

I building a LSTM+attention layer model. According to my understanding attention layer assigns weights to each word of the input sequence. Therefore, the output of attention layer should be (None,280)....
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70 views

ValueError: Dimensions must be equal, but are 49152 and 64 for ‘Attention_0/add' (op: 'Add')

I want to try to replace the contents of the encode and decoder in this github code (i.e.,in dcrnn_model.py line 83) with the encoder and attention decoder. These are the code before the encoder-...
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0answers
31 views

Why attention layer only works for train data but not test data in bi-directional LSTM machine translation model

I added an attention layer in my machine translation model model.add(AttentionDecoder(tar_timesteps, tar_vocab)) I applied the model to 144K (135K train + 9K test), 30-epoch Portuguese and Chinese ...
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0answers
26 views

Is there a bug in tensorflows attention nmt example?

I am just building a model based on the tensorflow nmt with attention example and I am wondering if I found a bug in the documentation or missunderstand something. My model was not behaving as ...
2
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1answer
1k views

How to visualize attention weights?

Using this implementation I have included attention to my RNN (which classify the input sequences into two classes) as follows. visible = Input(shape=(250,)) embed=Embedding(vocab_size,100)(visible) ...
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364 views

Custom Attention layer in Keras

I am working on a problem where there are pairs of question and answer, and a label(0,1) denoting whether the answer is relevant to the question. For each question I have 9 answers with label 0 and ...