We present a novel approach for learning to predict sets using deep learning. In recent years, deep neural networks have shown remarkable results in computer vision, natural language processing and other related problems. Despite their success, traditional architectures suffer from a serious limitation in that they are built to deal with structured input and output data, i.e. vectors or matrices. Many real-world problems, however, are naturally described as sets, rather than vectors. Existing techniques that allow for sequential data, such as recurrent neural networks, typically heavily depend on the input and output order and do not guarantee a valid solution. Here, we derive in a principled way, a mathematical formulation for set predicti...
Traditional set prediction models can struggle with simple datasets due to an issue we call the resp...
Transformers can generate predictions auto-regressively by conditioning each sequence element on the...
Neural networks can leverage self-supervision to learn integrated representations across multiple da...
We present a novel approach for learning to predict sets using deep learning. In recent years, deep ...
This paper addresses the task of set prediction using deep learning. This is important because the o...
Current approaches for predicting sets from feature vectors ignore the unordered nature of sets and ...
Consider a general machine learning setting where the output is a set of labels or sequences. This o...
We describe a new deep learning approach to cardinality estimation. MSCN is a multi-set convolutiona...
Multi-label classification is the task of predicting a set of labels for a given input instance. C...
Representations of sets are challenging to learn because operations on sets should be permutation-in...
Distance-based nearest neighbours (dNN) queries and aggregations over their answer sets are importan...
Recent advances in deep learning from probability distributions successfully achieve classification ...
Distance-based nearest neighbours (dNN) queries and aggregations over their answer sets are importan...
In recent years the performance of deep learning algorithms has been demon-strated in a variety of a...
Set-valued prediction is a well-known concept in multi-class classification. When a classifier is un...
Traditional set prediction models can struggle with simple datasets due to an issue we call the resp...
Transformers can generate predictions auto-regressively by conditioning each sequence element on the...
Neural networks can leverage self-supervision to learn integrated representations across multiple da...
We present a novel approach for learning to predict sets using deep learning. In recent years, deep ...
This paper addresses the task of set prediction using deep learning. This is important because the o...
Current approaches for predicting sets from feature vectors ignore the unordered nature of sets and ...
Consider a general machine learning setting where the output is a set of labels or sequences. This o...
We describe a new deep learning approach to cardinality estimation. MSCN is a multi-set convolutiona...
Multi-label classification is the task of predicting a set of labels for a given input instance. C...
Representations of sets are challenging to learn because operations on sets should be permutation-in...
Distance-based nearest neighbours (dNN) queries and aggregations over their answer sets are importan...
Recent advances in deep learning from probability distributions successfully achieve classification ...
Distance-based nearest neighbours (dNN) queries and aggregations over their answer sets are importan...
In recent years the performance of deep learning algorithms has been demon-strated in a variety of a...
Set-valued prediction is a well-known concept in multi-class classification. When a classifier is un...
Traditional set prediction models can struggle with simple datasets due to an issue we call the resp...
Transformers can generate predictions auto-regressively by conditioning each sequence element on the...
Neural networks can leverage self-supervision to learn integrated representations across multiple da...