2,678 research outputs found
Representation Learning on Graphs: A Reinforcement Learning Application
In this work, we study value function approximation in reinforcement learning
(RL) problems with high dimensional state or action spaces via a generalized
version of representation policy iteration (RPI). We consider the limitations
of proto-value functions (PVFs) at accurately approximating the value function
in low dimensions and we highlight the importance of features learning for an
improved low-dimensional value function approximation. Then, we adopt different
representation learning algorithm on graphs to learn the basis functions that
best represent the value function. We empirically show that node2vec, an
algorithm for scalable feature learning in networks, and the Variational Graph
Auto-Encoder constantly outperform the commonly used smooth proto-value
functions in low-dimensional feature space
Prioritized Random MAC Optimization via Graph-based Analysis
Motivated by the analogy between successive interference cancellation and
iterative belief-propagation on erasure channels, irregular repetition slotted
ALOHA (IRSA) strategies have received a lot of attention in the design of
medium access control protocols. The IRSA schemes have been mostly analyzed for
theoretical scenarios for homogenous sources, where they are shown to
substantially improve the system performance compared to classical slotted
ALOHA protocols. In this work, we consider generic systems where sources in
different importance classes compete for a common channel. We propose a new
prioritized IRSA algorithm and derive the probability to correctly resolve
collisions for data from each source class. We then make use of our theoretical
analysis to formulate a new optimization problem for selecting the transmission
strategies of heterogenous sources. We optimize both the replication
probability per class and the source rate per class, in such a way that the
overall system utility is maximized. We then propose a heuristic-based
algorithm for the selection of the transmission strategy, which is built on
intrinsic characteristics of the iterative decoding methods adopted for
recovering from collisions. Experimental results validate the accuracy of the
theoretical study and show the gain of well-chosen prioritized transmission
strategies for transmission of data from heterogenous classes over shared
wireless channels
In-Network View Synthesis for Interactive Multiview Video Systems
To enable Interactive multiview video systems with a minimum view-switching
delay, multiple camera views are sent to the users, which are used as reference
images to synthesize additional virtual views via depth-image-based rendering.
In practice, bandwidth constraints may however restrict the number of reference
views sent to clients per time unit, which may in turn limit the quality of the
synthesized viewpoints. We argue that the reference view selection should
ideally be performed close to the users, and we study the problem of in-network
reference view synthesis such that the navigation quality is maximized at the
clients. We consider a distributed cloud network architecture where data stored
in a main cloud is delivered to end users with the help of cloudlets, i.e.,
resource-rich proxies close to the users. In order to satisfy last-hop
bandwidth constraints from the cloudlet to the users, a cloudlet re-samples
viewpoints of the 3D scene into a discrete set of views (combination of
received camera views and virtual views synthesized) to be used as reference
for the synthesis of additional virtual views at the client. This in-network
synthesis leads to better viewpoint sampling given a bandwidth constraint
compared to simple selection of camera views, but it may however carry a
distortion penalty in the cloudlet-synthesized reference views. We therefore
cast a new reference view selection problem where the best subset of views is
defined as the one minimizing the distortion over a view navigation window
defined by the user under some transmission bandwidth constraints. We show that
the view selection problem is NP-hard, and propose an effective polynomial time
algorithm using dynamic programming to solve the optimization problem.
Simulation results finally confirm the performance gain offered by virtual view
synthesis in the network
Multi-View Video Packet Scheduling
In multiview applications, multiple cameras acquire the same scene from
different viewpoints and generally produce correlated video streams. This
results in large amounts of highly redundant data. In order to save resources,
it is critical to handle properly this correlation during encoding and
transmission of the multiview data. In this work, we propose a
correlation-aware packet scheduling algorithm for multi-camera networks, where
information from all cameras are transmitted over a bottleneck channel to
clients that reconstruct the multiview images. The scheduling algorithm relies
on a new rate-distortion model that captures the importance of each view in the
scene reconstruction. We propose a problem formulation for the optimization of
the packet scheduling policies, which adapt to variations in the scene content.
Then, we design a low complexity scheduling algorithm based on a trellis search
that selects the subset of candidate packets to be transmitted towards
effective multiview reconstruction at clients. Extensive simulation results
confirm the gain of our scheduling algorithm when inter-source correlation
information is used in the scheduler, compared to scheduling policies with no
information about the correlation or non-adaptive scheduling policies. We
finally show that increasing the optimization horizon in the packet scheduling
algorithm improves the transmission performance, especially in scenarios where
the level of correlation rapidly varies with time
Caring for the carer: home design and modification for carers of young people with disability
This HMinfo Occasional Research Paper focuses on carers, that is those who deliver informal (unpaid) care to young people with disability, and particularly those carers who share their home with the person they are caring for, as well as the housing design considerations that may support carers in their caring role. In this report, paid carers are referred to as support workers, and their role is clearly differentiated from that of carers, who are unpaid. It should also be noted that many people with disability are themselves the carer for a partner or family member. Both carers, who are usually family members or partners, and support workers, who are paid to provide care to a person with disability, need supportive and safe environments in which to care for people with disability. The definition of a carer is:
âA person of any age who provides any informal assistance, in terms of help or supervision, to persons with disabilities or long-term conditions, or older persons (i.e. aged 60 years and over). This assistance has to be ongoing, or likely to be ongoing, for at least six months.â.
This research adopts a definition of disability that understands it as the product of interaction between an individual and their environment. Whether or not a particular physical condition is experienced as disabling depends on the natural and built environment, social, political and cultural structures, and interpersonal processes of the individual concerned. In addition, Eley et al highlight that both people with intellectual disability and their carers are ageing, and the concurrent ageing of these groups poses specific challenges in providing suitable housing.
For the purpose of this research, the concept of âcareâ is defined as the provision of assistance to a person with disability or chronic health condition or frail older person, to ensure their health, safety and wellbeing. Care is generally triaged into:
âą formal care delivered by waged staff or trained volunteers
âą informal care delivered by unpaid carers, usually family members; or
âą self-care, a newly evolving conceptual category that will be referenced in this report insofar as it impacts on the degree of care provided by carers. The ABS describes self-care as the capacity to undertake tasks associated with: showering or bathing; dressing; eating; toileting; and bladder or bowel control.
This HMinfo Occasional Research Paper will focus on the unpaid (informal) carers of young people with disability (<65 years) only, and from the following perspectives:
1. What tensions, if any, may exist between a carerâs needs and the needs of the person with disability in home design?
2. What design features of the physical home environment would enable carers t
Spherical clustering of users navigating 360{\deg} content
In Virtual Reality (VR) applications, understanding how users explore the
omnidirectional content is important to optimize content creation, to develop
user-centric services, or even to detect disorders in medical applications.
Clustering users based on their common navigation patterns is a first direction
to understand users behaviour. However, classical clustering techniques fail in
identifying these common paths, since they are usually focused on minimizing a
simple distance metric. In this paper, we argue that minimizing the distance
metric does not necessarily guarantee to identify users that experience similar
navigation path in the VR domain. Therefore, we propose a graph-based method to
identify clusters of users who are attending the same portion of the spherical
content over time. The proposed solution takes into account the spherical
geometry of the content and aims at clustering users based on the actual
overlap of displayed content among users. Our method is tested on real VR user
navigation patterns. Results show that our solution leads to clusters in which
at least 85% of the content displayed by one user is shared among the other
users belonging to the same cluster.Comment: 5 pages, conference (Published in: ICASSP 2019 - 2019 IEEE
International Conference on Acoustics, Speech and Signal Processing (ICASSP)
Regularities
The neoclassical q-theory is a good start to understand the cross section of returns. Under constant return to scale, stock returns equal levered investment returns that are tied directly with characteristics. This equation generates the relations of average returns with book-to-market, investment, and earnings surprises. We estimate the model by minimizing the differences between average stock returns and average levered investment returns via GMM. Our model captures well the average returns of portfolios sorted on capital investment and on size and book-to-market, including the small-stock value premium. Our model is also partially successful in capturing the post-earnings-announcement drift and its higher magnitude in small firms.
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