Getting relevant information from search engines has been the heart of research works in information retrieval. Query expansion is a retrieval technique that has been studied and proved to yield positive results in relevance. Users are required to express their queries as a shortlist of words, sentences, or questions. With this short format, a huge amount of information is lost in the process of translating the information need from the actual query size since the user cannot convey all his thoughts in a few words. This mostly leads to poor query representation which contributes to undesired retrieval effectiveness. This loss of information has made the study of query expansion technique a strong area of study. This research work focuses on two methods of retrieval for both tweet-length queries and sentence-length queries. Two algorithms have been proposed and the implementation is expected to produce a better relevance retrieval model than most state-the-art relevance models.
翻译:从搜索引擎获取相关信息一直是信息检索研究工作的核心。查询扩展是一种检索技术,已经研究过,并证明具有积极意义。用户必须将其询问作为文字、句子或问题的短名单来表达。使用这种简短的格式,在从实际查询规模翻译信息需求的过程中丢失了大量信息,因为用户无法用几个字表达他的所有想法。这主要导致查询描述不力,从而导致不理想的检索效力。信息丢失使得查询扩展技术研究成为了强有力的研究领域。这项研究工作侧重于两种方法,即推特长询问和句长查询的检索方法。提出了两种算法,预计实施这些算法将产生比大多数州最先进的相关模型更好的相关检索模式。