Yasuhide Miura
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Featured researches published by Yasuhide Miura.
international conference on computational linguistics | 2014
Yasuhide Miura; Shigeyuki Sakaki; Keigo Hattori; Tomoko Ohkuma
This paper describes the system that has been used by TeamX in SemEval-2014 Task 9 Subtask B. The system is a sentiment analyzer based on a supervised text categorization approach designed with following two concepts. Firstly, since lexicon features were shown to be effective in SemEval-2013 Task 2, various lexicons and pre-processors for them are introduced to enhance lexical information. Secondly, since a distribution of sentiment on tweets is known to be unbalanced, an weighting scheme is introduced to bias an output of a machine learner. For the test run, the system was tuned towards Twitter texts and successfully achieved high scoring results on Twitter data, average F1 70.96 on Twitter2014 and average F1 56.50 on Twitter2014Sarcasm.
north american chapter of the association for computational linguistics | 2009
Eiji Aramaki; Yasuhide Miura; Masatsugu Tonoike; Tomoko Ohkuma; Hiroshi Mashuichi; Kazuhiko Ohe
With the rapidly growing use of electronic health records, the possibility of large-scale clinical information extraction has drawn much attention. It is not, however, easy to extract information because these reports are written in natural language. To address this problem, this paper presents a system that converts a medical text into a table structure. This systems core technologies are (1) medical event recognition modules and (2) a negative event identification module that judges whether an event actually occurred or not. Regarding the latter module, this paper also proposes an SVM-based classifier using syntactic information. Experimental results demonstrate empirically that syntactic information can contribute to the methods accuracy.
acm multimedia | 2014
Francine Chen; Dhiraj Joshi; Yasuhide Miura; Tomoko Ohkuma
We present a method for profiling businesses at specific locations that is based on mining information from social media. The method matches geo-tagged tweets from Twitter against venues from Foursquare to identify the specific business mentioned in a tweet. By linking geo-coordinates to places, the tweets associated with a business, such as a store, can then be used to profile that business. We used a sentiment estimator developed for tweets to create sentiment profiles of the stores in a chain, computing the average sentiment of tweets associated with each store. We present the results as heatmaps which show how sentiment differs across stores in the same chain and how some chains have more positive sentiment than other chains. We also created profiles of social group size for businesses and show sample heatmaps illustrating how the size of a social group can vary.
international conference on computational linguistics | 2014
Shigeyuki Sakaki; Yasuhide Miura; Xiaojun Ma; Keigo Hattori; Tomoko Ohkuma
Profile inference of SNS users is valuable for marketing, target advertisement, and opinion polls. Several studies examining profile inference have been reported to date. Although information of various types is included in SNS, most such studies only use text information. It is expected that incorporating information of other types into text classifiers can provide more accurate profile inference. As described in this paper, we propose combined method of text processing and image processing to improve gender inference accuracy. By applying the simple formula to combine two results derived from a text processor and an image processor, significantly increased accuracy was confirmed.
meeting of the association for computational linguistics | 2017
Yasuhide Miura; Motoki Taniguchi; Tomoki Taniguchi; Tomoko Ohkuma
We propose a novel geolocation prediction model using a complex neural network. Geolocation prediction in social media has attracted many researchers to use information of various types. Our model unifies text, metadata, and user network representations with an attention mechanism to overcome previous ensemble approaches. In an evaluation using two open datasets, the proposed model exhibited a maximum 3.8% increase in accuracy and a maximum of 6.6% increase in accuracy@161 against previous models. We further analyzed several intermediate layers of our model, which revealed that their states capture some statistical characteristics of the datasets.
Studies in health technology and informatics | 2010
Eiji Aramaki; Yasuhide Miura; Masatsugu Tonoike; Tomoko Ohkuma; Hiroshi Masuichi; Kayo Waki; Kazuhiko Ohe
international conference on computational linguistics | 2016
Yasuhide Miura; Motoki Taniguchi; Tomoki Taniguchi; Tomoko Ohkuma
Proceedings of the Second Workshop on NLP Challenges in the Information Explosion Era (NLPIX 2010) | 2010
Yasuhide Miura; Eiji Aramaki; Tomoko Ohkuma; Masatsugu Tonoike; Daigo Sugihara; Hiroshi Masuichi; Kazuhiko Ohe
Archive | 2009
Hiroshi Masuichi; Yasuhide Miura; Tomoko Okuma; 康秀 三浦; 博 増市; 智子 大熊
Archive | 2007
Hiroshi Masuichi; Yasuhide Miura; Motoyuki Takaai; 康秀 三浦; 博 増市; 基行 鷹合