350 research outputs found
Finding Structured and Unstructured Features to Improve the Search Result of Complex Question
-Recently, search engine got challenge deal with such a natural language questions.
Sometimes, these questions are complex questions. A complex question is a question that
consists several clauses, several intentions or need long answer.
In this work we proposed that finding structured features and unstructured features of
questions and using structured data and unstructured data could improve the search result
of complex questions. According to those, we will use two approaches, IR approach and
structured retrieval, QA template.
Our framework consists of three parts. Question analysis, Resource Discovery and
Analysis The Relevant Answer. In Question Analysis we used a few assumptions, and
tried to find structured and unstructured features of the questions. Structured feature
refers to Structured data and unstructured feature refers to unstructured data. In the
resource discovery we integrated structured data (relational database) and unstructured
data (webpage) to take the advantaged of two kinds of data to improve and reach the
relevant answer. We will find the best top fragments from context of the webpage In the
Relevant Answer part, we made a score matching between the result from structured data
and unstructured data, then finally used QA template to reformulate the question.
In the experiment result, it shows that using structured feature and unstructured
feature and using both structured and unstructured data, using approach IR and QA
template could improve the search result of complex questions
Dublin City University at QA@CLEF 2008
We describe our participation in Multilingual Question Answering at CLEF 2008 using German and English as our source and target languages respectively. The system was built using UIMA (Unstructured Information Management Architecture) as underlying framework
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ANSWER SIMILARITY GROUPING AND DIVERSIFICATION IN QUESTION ANSWERING SYSTEMS
The rise in popularity of mobile and voice search has led to a shift in IR from document to passage retrieval for non-factoid questions. Various datasets such as MSMarco, as well as efficient retrieval models have been developed to identify single best answer passages for this task. However, such models do not specifically address questions which could have multiple or alternative answers. In this dissertation, we focus on this new research area that involves studying answer passage relationships and how this could be applied to passage retrieval tasks.
We first create a high quality dataset for the answer passage similarity task in the context of question answering. Manual annotation of passage pairs is performed to set the similarity labels, from which answer group information is automatically generated. We next investigate different types of representations, which could be used to create effective clusters. We experiment with various unsupervised representations and show that distributional representations outperform term based representations for this task. Next, weak supervision is leveraged to further improve the cluster modeling performance. We use BERT as the underlying model for training and show the relative performance of various weak signals such as GloVe and term-based Language Modeling for this task. In order to apply these clusters to the answer passage retrieval task for multi-answer questions, we use a modified version of the Maximal Marginal Relevance (MMR) diversification model. We demonstrate that answers retrieved using this model are more diverse i.e, cover more answer types with low redundancy as well as maximize relevance, with respect to the baselines. So far, we used passage clustering as a means to identify answer groups corresponding to a question and apply them in a question answering task. We extend this a step further by looking at related questions within a conversation. For this purpose, we expand the definition of Reciprocal Rank Fusion (RRF) and use this to identify pertinent history passages for such questions. Updated question rewrites generated using these passages are then used to improve the conversational search task. In addition to being the first work that looks at answer relationships, our specific contributions can be summarized as follows: (1) Creation of new datasets with passage similarity and answer type information; (2) Effective passage similarity clustering models using unsupervised representations and weak supervision methods; (3) Applying the passage similarity/clustering information to diversification framework; (4) Identifying good response history candidates using answer passage clustering for the conversational search task
Question Answering over Curated and Open Web Sources
The last few years have seen an explosion of research on the topic of automated question answering (QA), spanning the communities of information retrieval, natural language processing, and artificial intelligence. This tutorial would cover the highlights of this really active period of growth for QA to give the audience a grasp over the families of algorithms that are currently being used. We partition research contributions by the underlying source from where answers are retrieved: curated knowledge graphs, unstructured text, or hybrid corpora. We choose this dimension of partitioning as it is the most discriminative when it comes to algorithm design. Other key dimensions are covered within each sub-topic: like the complexity of questions addressed, and degrees of explainability and interactivity introduced in the systems. We would conclude the tutorial with the most promising emerging trends in the expanse of QA, that would help new entrants into this field make the best decisions to take the community forward. Much has changed in the community since the last tutorial on QA in SIGIR 2016, and we believe that this timely overview will indeed benefit a large number of conference participants
On the voice-activated question answering
[EN] Question answering (QA) is probably one of the most challenging tasks in the field of natural language processing. It requires search engines that are capable of extracting concise, precise fragments of text that contain an answer to a question posed by the user. The incorporation of voice interfaces to the QA systems adds a more natural and very appealing perspective for these systems. This paper provides a comprehensive description of current state-of-the-art voice-activated QA systems. Finally, the scenarios that will emerge from the introduction of speech recognition in QA will be discussed. © 2006 IEEE.This work was supported in part by Research Projects TIN2009-13391-C04-03 and TIN2008-06856-C05-02. This paper was recommended by Associate Editor V. Marik.Rosso, P.; Hurtado Oliver, LF.; Segarra Soriano, E.; Sanchís Arnal, E. (2012). On the voice-activated question answering. IEEE Transactions on Systems, Man, and Cybernetics, Part C: Applications and Reviews. 42(1):75-85. https://doi.org/10.1109/TSMCC.2010.2089620S758542
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