about
The geospatial characteristics of a social movement communication networkThe expression of emotions in 20th century booksBooks average previous decade of economic miseryPersonality, gender, and age in the language of social media: the open-vocabulary approachEarly prediction of movie box office success based on Wikipedia activity big dataThe digital evolution of occupy wall streetThe unlikely encounter between von Foerster and Snowden: When second-order cybernetics sheds light on societal impacts of Big DataQuantifying Wikipedia Usage Patterns Before Stock Market MovesWeb search queries can predict stock market volumesMeasuring Emotion in Parliamentary Debates with Automated Textual AnalysisSearching Choices: Quantifying Decision-Making Processes Using Search Engine DataSocial Media Meets Big Urban Data: A Case Study of Urban Waterlogging AnalysisPredicting Fluctuations in Cryptocurrency Transactions Based on User Comments and Replies"Anyone Know What Species This Is?" - Twitter Conversations as Embryonic Citizen Science CommunitiesTracking Protests Using Geotagged Flickr PhotographsQuantifying the Search Behaviour of Different Demographics Using Google CorrelateEthical issues in using Twitter for population-level depression monitoring: a qualitative studySocial signals and algorithmic trading of BitcoinAccurate estimation of influenza epidemics using Google search data via ARGOIntrinsic Multi-Scale Dynamic Behaviors of Complex Financial SystemsQuantifying the Impact of Scenic Environments on HealthPublic Trauma after the Sewol Ferry Disaster: The Role of Social Media in Understanding the Public MoodThe Effects of Twitter Sentiment on Stock Price ReturnsThe advantage of short paper titles.Collective attention and stock prices: evidence from Google Trends data on Standard and Poor's 100Adaptive nowcasting of influenza outbreaks using Google searchesQuantifying International Travel Flows Using FlickrpvsR: An Open Source Interface to Big Data on the American Political SpherePublic mood and consumption choices: evidence from sales of Sony cameras on TaobaoQuantifying regional differences in the length of Twitter messagesComputational models of consumer confidence from large-scale online attention data: crowd-sourcing econometricsStructure of local interactions in complex financial dynamicsStock market returns and clinical trial results of investigational compounds: an event study analysis of large biopharmaceutical companiesQuantifying collective attention from tweet streamQuantifying the effect of sentiment on information diffusion in social mediaMachine Learning, Sentiment Analysis, and Tweets: An Examination of Alzheimer’s Disease Stigma on TwitterNeural Cognition and Affective Computing on Cyber Language.When can social media lead financial markets?Stock portfolio structure of individual investors infers future trading behavior.Quantifying the effect of investors' attention on stock market.
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P2860
description
2011 nî lūn-bûn
@nan
2011年の論文
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2011年学术文章
@wuu
2011年学术文章
@zh
2011年学术文章
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2011年学术文章
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2011年学术文章
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@zh-hant
name
Twitter mood predicts the stock market
@en
Twitter mood predicts the stock market
@nl
type
label
Twitter mood predicts the stock market
@en
Twitter mood predicts the stock market
@nl
prefLabel
Twitter mood predicts the stock market
@en
Twitter mood predicts the stock market
@nl
P1476
Twitter mood predicts the stock market
@en
P2093
Xiaojun Zeng
P356
10.1016/J.JOCS.2010.12.007
P50
P577
2011-03-01T00:00:00Z