70,694 research outputs found
Neural Collaborative Subspace Clustering
We introduce the Neural Collaborative Subspace Clustering, a neural model
that discovers clusters of data points drawn from a union of low-dimensional
subspaces. In contrast to previous attempts, our model runs without the aid of
spectral clustering. This makes our algorithm one of the kinds that can
gracefully scale to large datasets. At its heart, our neural model benefits
from a classifier which determines whether a pair of points lies on the same
subspace or not. Essential to our model is the construction of two affinity
matrices, one from the classifier and the other from a notion of subspace
self-expressiveness, to supervise training in a collaborative scheme. We
thoroughly assess and contrast the performance of our model against various
state-of-the-art clustering algorithms including deep subspace-based ones.Comment: Accepted to ICML 201
Low-Rank Discriminative Least Squares Regression for Image Classification
Latest least squares regression (LSR) methods mainly try to learn slack
regression targets to replace strict zero-one labels. However, the difference
of intra-class targets can also be highlighted when enlarging the distance
between different classes, and roughly persuing relaxed targets may lead to the
problem of overfitting. To solve above problems, we propose a low-rank
discriminative least squares regression model (LRDLSR) for multi-class image
classification. Specifically, LRDLSR class-wisely imposes low-rank constraint
on the intra-class regression targets to encourage its compactness and
similarity. Moreover, LRDLSR introduces an additional regularization term on
the learned targets to avoid the problem of overfitting. These two improvements
are helpful to learn a more discriminative projection for regression and thus
achieving better classification performance. Experimental results over a range
of image databases demonstrate the effectiveness of the proposed LRDLSR method
Collaborative Feature Learning from Social Media
Image feature representation plays an essential role in image recognition and
related tasks. The current state-of-the-art feature learning paradigm is
supervised learning from labeled data. However, this paradigm requires
large-scale category labels, which limits its applicability to domains where
labels are hard to obtain. In this paper, we propose a new data-driven feature
learning paradigm which does not rely on category labels. Instead, we learn
from user behavior data collected on social media. Concretely, we use the image
relationship discovered in the latent space from the user behavior data to
guide the image feature learning. We collect a large-scale image and user
behavior dataset from Behance.net. The dataset consists of 1.9 million images
and over 300 million view records from 1.9 million users. We validate our
feature learning paradigm on this dataset and find that the learned feature
significantly outperforms the state-of-the-art image features in learning
better image similarities. We also show that the learned feature performs
competitively on various recognition benchmarks
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