158,613 research outputs found
How to Turn from Language Back to Things in Themselves
Although many philosophers today have turned away slightly from the linguistic turn, their methods, e.g. conceptual analysis, are still linguistic. These methods lead to false results. The right method in philosophy, like in other disciplines, is to try to perceive the object and to collect and weigh evidence. We must turn back to things in themselves
The Social World of Content Abusers in Community Question Answering
Community-based question answering platforms can be rich sources of
information on a variety of specialized topics, from finance to cooking. The
usefulness of such platforms depends heavily on user contributions (questions
and answers), but also on respecting the community rules. As a crowd-sourced
service, such platforms rely on their users for monitoring and flagging content
that violates community rules.
Common wisdom is to eliminate the users who receive many flags. Our analysis
of a year of traces from a mature Q&A site shows that the number of flags does
not tell the full story: on one hand, users with many flags may still
contribute positively to the community. On the other hand, users who never get
flagged are found to violate community rules and get their accounts suspended.
This analysis, however, also shows that abusive users are betrayed by their
network properties: we find strong evidence of homophilous behavior and use
this finding to detect abusive users who go under the community radar. Based on
our empirical observations, we build a classifier that is able to detect
abusive users with an accuracy as high as 83%.Comment: Published in the proceedings of the 24th International World Wide Web
Conference (WWW 2015
Modeling Task Effects in Human Reading with Neural Attention
Humans read by making a sequence of fixations and saccades. They often skip
words, without apparent detriment to understanding. We offer a novel
explanation for skipping: readers optimize a tradeoff between performing a
language-related task and fixating as few words as possible. We propose a
neural architecture that combines an attention module (deciding whether to skip
words) and a task module (memorizing the input). We show that our model
predicts human skipping behavior, while also modeling reading times well, even
though it skips 40% of the input. A key prediction of our model is that
different reading tasks should result in different skipping behaviors. We
confirm this prediction in an eye-tracking experiment in which participants
answers questions about a text. We are able to capture these experimental
results using the our model, replacing the memorization module with a task
module that performs neural question answering
Person Search with Natural Language Description
Searching persons in large-scale image databases with the query of natural
language description has important applications in video surveillance. Existing
methods mainly focused on searching persons with image-based or attribute-based
queries, which have major limitations for a practical usage. In this paper, we
study the problem of person search with natural language description. Given the
textual description of a person, the algorithm of the person search is required
to rank all the samples in the person database then retrieve the most relevant
sample corresponding to the queried description. Since there is no person
dataset or benchmark with textual description available, we collect a
large-scale person description dataset with detailed natural language
annotations and person samples from various sources, termed as CUHK Person
Description Dataset (CUHK-PEDES). A wide range of possible models and baselines
have been evaluated and compared on the person search benchmark. An Recurrent
Neural Network with Gated Neural Attention mechanism (GNA-RNN) is proposed to
establish the state-of-the art performance on person search
Finding Relevant Answers in Software Forums
AbstractāOnline software forums provide a huge amount of valuable content. Developers and users often ask questions and receive answers from such forums. The availability of a vast amount of thread discussions in forums provides ample opportunities for knowledge acquisition and summarization. For a given search query, current search engines use traditional information retrieval approach to extract webpages containin
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