Difference between revisions of "F21-STAT 940-Proposal"
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Project # Group members
Revision as of 05:46, 1 November 2020
Use this format (Don’t remove Project 0)
Project # 0 Group members:
Last name, First name
Last name, First name
Last name, First name
Last name, First name
Title: Making a String Telephone
Description: We use paper cups to make a string phone and talk with friends while learning about sound waves with this science project. (Explain your project in one or two paragraphs).
Project # 1 Group members:
Hussein Salamah, Ahmed
Title: Dense Retrieval for Conversational Information Seeking
Description: One of the recognized problems in Information Retrieval (IR) is the conversational search that attracts much attention in form of Conversational Assistants such as Alexa, Siri and Cortana. The users’ needs are the ultimate goal of conversational search systems, in this context the questions are asked sequentially imposing a multi-turn format as the Conversational Information Seeking (CIS) task. TREC Conversational Assistance Track (CAsT)  is a multi-turn conversational search task as it contains a large-scale reusable test collection for sequences of conversational queries. The response of this conversational model is not a list of relevant documents, but it is limited to brief response passages with a length of 1 to 3 sentences in length.
In , the authors focus on improving open domain question answering by including dense representations for retrieval instead of the traditional methods. They have adopted a simple dual-encoder framework to construct a learnable retriever on large collections. We want to adopt this dense representation for the conversational model in the CAsT task and compare it with the performance of the other approaches in literature. The performance will be indicated by using graded relevance on five point, which are Fails to meet, Slightly meets, Moderately meets, Highly meets, and Fully meets.
We aim to further improve our system performance by integrating the following techniques:
• Paragraph-level pre-training tasks: ICT, BFS, and WLP 
• ANCE training: periodically using checkpoints to encode documents, from which the strong negatives close to the relevant document would be used as next training negatives 
In summary, this project is exploratory in nature as we will be trying to use state-of-art Dense Passage Retrieval techniques (based on BERT) [4, 6], in a question answering (QA) problem. Current first-stage-retrieval approaches mainly rely on bag-of-words models. In this project, we hope to explore the feasibility of using state-of-art methods such as BERT. We will first compare how these perform on the TREC CAsT datasets  against the results retrieved using BM25. After these first points of comparison we will next explore methods of improving DPR by exploring one or more techniques that are made to improve the performance of DPR. [1, 5].
 Wei-Cheng Chang et al. Pre-training Tasks for Embedding-based Large-scale Retrieval. 2020. arXiv: 2002.03932 [cs.LG].
 Zhuyun Dai and Jamie Callan. Context-Aware Sentence/Passage Term Importance Estimation For First Stage Retrieval. 2019. arXiv: 1910.10687 [cs.IR].
 Jeffrey Dalton, Chenyan Xiong, and Jamie Callan. TREC CAsT 2019: The Conversational Assistance Track Overview. 2020. arXiv: 2003.13624 [cs.IR].
 Vladimir Karpukhin et al. Dense Passage Retrieval for Open-Domain Ques- tion Answering. 2020. arXiv: 2004.04906 [cs.CL].
 Lee Xiong et al. Approximate Nearest Neighbor Negative Contrastive Learn- ing for Dense Text Retrieval. 2020. arXiv: 2007.00808 [cs.IR].
 Jingtao Zhan et al. RepBERT: Contextualized Text Embeddings for First- Stage Retrieval. 2020. arXiv: 2006.15498 [cs.IR].
Project # 2 Group members:
Title: Quick Text Description using Headline Generation and Text To Image Conversion
Description: An automatic tool to generate short description based on long textual data is a useful mechanism to share quick information. Most of the current approaches involve summarizing the text using varied deep learning approaches from Transformers to different RNNs. For this project, instead of building a standard text summarizer, we aim to provide two separate utilities for generating a quick description of the text. First, we plan to develop a model that produces a headline for the long textual data, and second, we are intending to generate an image describing the text.
Headline Generation - Headline generation is a specific case of text summarization where the output is generally a combination of few words that gives an overall outcome from the text. In most cases, text summarization is an unsupervised learning problem. But, for the headline generation, we have the original headlines available in our training dataset that makes it a supervised learning task. We plan to experiment with different Recurrent Neural Networks like LSTMs and GRUs with varied architectures. For model evaluation, we are considering BERTScore using which we can compare the reference headline with the automatically generated headline from the model. We also aim to explore Attention and Transformer Networks for the text (headline) generation. We will make use of the currently available techniques mentioned in the various research papers but also try to develop our own architecture if the previous methods don't reveal reliable results on our dataset. Therefore, this task would primarily fit under the category of application of deep learning to a particular domain, but could also include some components of new algorithm design.
Text to Image Conversion - Generation or synthesis of images from a short text description is another very interesting application domain in deep learning. One approach for image generation is based on mapping image pixels to specific features as described by the discriminative feature representation of the text. Recurrent Neural Networks have been successfully used in learning such feature representations of text. This approach is difficult to generalize because the recognition of discriminative features for texts in different domains is not an easy task and it requires domain expertise. Different generative methods have been used including Variational Recurrent Auto-Encoders and its extension in Deep Recurrent Attention Writer (DRAW). We plan to experiment with Generative Adversarial Networks (GAN). Application of GANs on domain-specific datasets has been done but we aim to apply different variants of GANs on the Microsoft COCO dataset which has been used in other architectures. The analysis will be focusing on how well GANs are able to generalize when compared to other alternatives on the given dataset.
Scope - The above models will be trained independently on different datasets. Therefore, for a particular text, only one of the two functionalities will be available.
Project # 3 Group members:
Title: Not decided yet (Placeholder)
Description: Not decided yet :)
Project # 4 Group members:
Title: Binary Deep Neural Network for the domain of Pathology
Description: The binary neural network, largely saving the storage and computation, serves as a promising technique for deploying deep models on resource-limited devices. However, the binarization inevitably causes severe information loss, and even worse, its discontinuity brings difficulty to the optimization of the deep network. We want to investigate the possibility of using these types of networks in the domain of histopathology as it has gigapixels images which make the use of them very useful.
Project # 5 Group members:
Description: Autonomous vehicles (AVs) are expected to dramatically redefine the future of transportation. However, there are still significant engineering challenges to be solved before one can fully realize the benefits of self-driving cars. One such challenge is building models that reliably predict the movement of traffic agents around the AV, such as cars, cyclists, and pedestrians.
Comments: We are more inclined towards a 3-D object detection project. We are in the process of finding the right problem statement for it and if we are not successful, we will continue with the above Kaggle competition.
Project # 6 Group members:
Title: Deep Learning Models in Volatility Forecasting
Description: Price forecasting has become a very hot topic in the financial industry in recent years. We are however very interested in the volatility of such financial instruments. We propose a new deep learning architecture or model to predict volatility and apply our model to real life datasets of various financial products. We will analyze our results and compare them to more traditional methods.
Project # 7 Group members:
Title: Through the Lens of Probability Theory: A Comparison Study of Bayesian Deep Learning Methods
Description: Deep neural networks have been known as black box models, but they can be made less mysterious when adopting a Bayesian approach. From a Bayesian perspective, one is able to assign uncertainty on the weights instead of having single point estimates, which allows for a better interpretability of deep learning models. However, Bayesian deep learning methods are often intractable due an increase amount of parameters and often times don't have as good performance. In this project, we will study different BDL methods such as Bayesian CNN using variational inference and Laplace approximation, with applications on image classification, and we will try to propose improvements where possible.
Project # 8 Group members:
Title: A functional universal approximation theorem
Description: In the seminal paper "Approximation by superpositions of a sigmoidal function", Cybenko gave a simple proof using elementary functional analysis that a certain class of functions, called discriminatory functions, serve as valid activation functions for universal neural approximators. The objective of our project is three-fold:
1) Prove a converse of Cybenko's Universal Approximation Theorem by means of the Stone-Weierstrass theorem
2) Provide examples and non-examples of Cybenko's discriminatory functions
3) Construct a neural network for functional data (i.e. data arising in function spaces) and prove a universal approximation theorem for Lp spaces.
 Cybenko, G. (1989). Approximation by superpositions of a sigmoidal function. Mathematics of control, signals and systems, 2(4), 303-314.
 Folland, Gerald B. Real analysis: modern techniques and their applications. Vol. 40. John Wiley & Sons, 1999.
 Ramsay, J. O. (2004). Functional data analysis. Encyclopedia of Statistical Sciences, 4.
Project # 9 Group members:
Ashrafi Fashi, Parsa
Title: Domain Generalization with Model-Agnostic Semantic Features in Histopathology Images
Description: The performance of conventional deep neural networks tends to degrade in the presence of a domain shift, such as gathering of data from different centers. In this study for the first time we are going to introduce different anatomical sites as a domain shift to see if we can generalize a low-shot anatomical site by means of rich in terms of quantity but from different anatomical site. The hypothesis is that the statistics of retrieval for model trained using episodic domain generalization will not degrade as much as the baseline when there is a domain shift. We also hypothesize that the episodic domain generalization would perform even better than the pure Meta-learning in the presence of domain shift.
Instead of supervised learning we are going to work in weakly-supervised learning way in which the whole-slide diagnosis labels are only used. The questions we are going to address are:
1. How is the performance of a neural network impacted by introducing domain shift (anatomical sites)?
2. How domain generalization would help for improving generalization performance in the presence of domain shift, while we are in lack of data for a given anatomical site as our target domain: a pure meta-learning approach, episodic domain generalization or training a classifier on pre-trained features?
Project # 10 Group members:
Ebrahimi Farsangi, Sina
Title: Meta-Learning Regularizers for Few-Shot Classification Models
Our project aims at exploring the effects of self-supervised pre-training on few-shot classification. We draw inspiration from the paper “When Does Self-supervision Improve Few-shot Learning?” where the authors analyse the effects of using the Jigsaw puzzle and rotation tasks as regularizers for training Prototypical Networks and Model-Agnostic Meta-Learning (MAML) networks.
The introduced paper analyzes the effects of regularizing meta-learning models using self-supervised loss, based on rotation and Jigsaw tasks. It is conventionally thought that one of the reasons MAML and other optimization based meta-learning algorithms work well is due to initializing a network into a task-generalizable state. In this project, we will be looking at the effects of self-supervised pre-training, as presumably it will initialize the network into a better state than random, and potentially improve subsequent meta-learning. We will compare the effects of using self-supervised methods as pre-training, as regularization, and the combination of both. The effects of other self-supervised learning tasks, such as discoloration and flipping, will be studied as well. We will also look at which combination of tasks, whether interlaced or applied sequentially, work better and complement one another. We will evaluate our final results on the Omniglot and Mini-Imagenet datasets. These improvements will later be compared with their application on other few-shot learning methods, including first-order MAML and Matching Networks.
Project # 11 Group Members:
Shikhar Sakhuja: firstname.lastname@example.org
Controller Area Network (CAN bus) is a vehicle bus standard that allows Electronic Control Units (ECU) within an automobile to communicate with each other without the need for a host computer. Modern automobiles might have up to 70 ECUs for various subsystems such as Engine, Transmission, Breaking, etc. The ECUs exchange messages on the CAN bus and allow for a lot of modern vehicle capabilities such as automatic start/stop, electric park brakes, lane detection, collision avoidance, and more. Each message exchanged on the bus is encoded as a 29-bit packet. These 29 bits consist of a combination of Parameter Group Number (PGN), message priority, and the source address of the message. Parameter groups can be, for example, engine temperature which could include coolant temperature, fuel temperature, etc. The PGN itself includes information such as priority, reserved status, data page, and PDU format. Lastly, the source address maps the message to the ECU it originates from.
(1) This project aims to use messages exchanged on the CAN bus of a Challenger Truck collected by the Embedded Systems Group at the University of Waterloo. The data exists in a temporal format with a new message exchanged periodically. The goals of this project are two folds:
(2) Predicting the PGN and source address of message N exchanged on the bus, given messages 1 to N-1. We might also explore predicting attributes within the PGN. Predicting the delay between messages N-1 and N, given the delay between each pair of consecutive messages leading up to message N-1.
For the first goal, we intend to experiment with RNN models along with Attention modules since they have shown promising results in text generation/prediction.
The second goal is more of an investigative problem where we intend to use regression techniques powered by Neural Networks to predict delays between messages N-1 and N.
Project # 12 Group members:
Title: Representation learning of gigapixel histopathology images using PointNet a permutation invariant neural network
In recent years, there has been a significant growth in the amount of information available in digital pathology archives. This data is valuable because of its potential uses in research, education, and pathologic diagnosis. As a result, representation learning of histopathology whole slide images (WSIs) has attracted significant attention and become an active area of research. Unfortunately, scientific progress with these data have been difficult because of challenges inherent to the data itself. These challenges include highly complex textures of different tissue types, color variations caused by different stainings, and most notably, the size of the images which are often larger than 50,000x50,000 pixels. Additionally, these images are multi-resolution meaning that each WSI may contain images from different zoom levels, primarily 5X, 10X, 20X, and 40X. With the advent of deep learning, there is optimism that these challenges can be overcome. The main challenge in this approach is that the sheer size of the images makes it infeasible (or impossible) to obtain a vector representation for a WSI, which is a necessary step in order to leverage deep learning algorithms. In practice, this is often bypassed by considering ‘patches’ of the WSI of smaller sizes, a set of which is meant to represent the full WSI. This approach lead to a set representation for a WSI. However, unlike traditional image or sequence models, deep networks that process and learn permutation invariant representations from sets is still a developing area of research. Recent attempts at this include Multi-instance Learning Schemes, Deep Set, and Set Transformers. A particularly successful attempt in developing a deep neural network for set representation in called PointNet which was developed for classification and segmentation of 3D objects and point clouds. In PointNet, each set is represented using a set of (x,y,z) coordinates, and the network is designed to learn a permutation invariant global representation for each set and then use this representation for classification or segmentation.
In this project, we attempt to first extend the PointNet network to a convolutional PointNet network such that it uses a set of image patches rather than (x,y,z) coordinates to learn the universal permutation invariant representation. Then, we attempt improve the representational power of PointNet as a permutation invariant neural network. For the first part, the main challenge is that while PointNet has been designed for processing of sets with the same size, in WSIs, the size of the image and therefore number of patches is not fixed. For this reason, we will need to develop an idea which enables CNN-PointNet to process sets with different sizes. One possible solution is to use fake members to standardize the set size and then remove the effect of these fake members in backpropagation using a masking scheme. For the second part, the PointNet network can be improved in many ways. For example, the rotation matrix used is not a real rotation matrix as the orthogonality is incorporated using a regularization term. However, using a projected gradient technique and the existence of a closed form solution for obtaining nearest orthogonal matrix to a given matrix (Orthogonal Procrustes Problem) we can keep the exact orthogonality constraint and obtain a real rotation matrix. This exact orthogonality is geometrically important as, otherwise, this transformation will likely corrupt the neighborhood structure of the points in each set. Furthermore, PointNet uses very simple symmetric function (max pooling) as a set approximator, however there more powerful symmetric functions like statistical moments, power-sum with a trainable parameter, and other set approximators can be used. It would be interesting to see how more complicated symmetric functions can improve the representational power of PointNet to achieve more discriminative permutation invariant representations for each set (in this case WSIs).
Project # 13 Group Members:
Syed Saad Naseem email@example.com
Title: Text classification of topics related to COVID-19 on social media using deep learning The COVID-19 pandemic has become a public health emergency and a critical socioeconomic issue worldwide. It is changing the way we live and do business. Social media is a rich source of data about public opinion on different types of topics including topics about COVID-19. I plan on using Reddit to get a dataset of posts and comments from users related to COVID-19 and since Reddit is divided into communities so the posts and comments are also clustered by the topic of the community, for example, posts from the political subreddit will have posts about politics.
I plan to make a classifier that will take a given text and will tell what the text of talking about for example it can be talking about politics, studies, relationships, etc. The goals of this project are to:
• Scrape a dataset from Reddit from different communities
• Train a deep learning model (CNN or RNN model) to classify a given text into the possible categories
• Test the model on posts from social talking about COVID-19
Project # 14 Group members
Title: Modified LeicaGAN On COCO Image Data Set
In  the authors present a novel text-to-image method called LeicaGAN. This model is trained and evaluated using the CUB bird  and Oxford-102 flower  data sets and reported favourable performance when compared to benchmark models.
I envision two possible deliverables for my project:
First,to re-create the LeicaGan model described in  and train it using the Common Objects in Context (COCO) data set . The purpose behind this is to evaluate how LeicaGan will preform in a more diverse domain of images. LeicaGan's source code utilises pyTorch and is publicly available at <https://github.com/qiaott/LeicaGAN>. I would attempt to recreate it using TensorFlow.
Second, to make modifications to the models architecture in an attempt to improve its performance.One possible modification would be to change their aggregation method for merging the text and visual embedding. Specifically within the discussions section of their paper  they suggest the continued exploration of efficient and diverse modules for this process.Additionally their embedding networks are trained separate from the other model components. The authors believe they could alternatively be trained end-to-end to improve performance.
I foresee the first deliverable of rebuilding their network in TensorFlow taking a large majority of our available time.If after attempting this proves to be unmanageable then I will opt to build off their existing public code base in their PyTorch implementation and focus on implementing a wider breadth of modifications to their network architecture.Where I will compare the modified models performances against the original model.
 Qiao, Ting-ting et al. “Learn, Imagine and Create: Text-to-Image Generation from Prior Knowledge.” NeurIPS (2019).
 C. Wah, S. Branson, P. Welinder, P. Perona, and S. Belongie. The caltech-ucsd birds-200-2011 dataset. In California Institute of Technology, 2011.
M.-E. Nilsback and A. Zisserman. Automated flower classification over a large number of classes. In Computer Vision, Graphics & Image Processing(ICVGIP), 2008.
 Lin, Tsung-Yi et al. “Microsoft COCO: Common Objects in Context.” ArXiv abs/1405.0312 (2014)