Sequential modelling entails making sense of sequential data, which naturally occurs in a wide array of domains. One example is systems that interact with users, log user actions and behaviour, and make recommendations of items of potential interest to users on the basis of their previous interactions. In such cases, the sequential order of user interactions is often indicative of what the user is interested in next. Similarly, for systems that automatically infer the semantics of text, capturing the sequential order of words in a sentence is essential, as even a slight re-ordering could significantly alter its original meaning. This thesis makes methodological contributions and new investigations of sequential modelling for the specific application areas of systems that recommend music tracks to listeners and systems that process text semantics in order to automatically fact-check claims, or "speed read" text for efficient further classification. (Rest of abstract omitted due to arXiv abstract limit)
翻译:序列建模意味着对顺序数据的理解,这自然发生在一系列广泛的领域。一个例子是与用户互动的系统、日志用户行动和行为,以及根据用户以前的互动情况,就用户可能感兴趣的项目提出建议。在这种情况下,用户互动的顺序往往表明用户对下一步感兴趣的内容。同样,对于自动推断文本的语义的系统来说,在句子中记录顺序文字顺序至关重要,因为即使是轻微的重新排序也会大大改变其原始含义。这个理论对向听众推荐音乐轨道的系统的具体应用领域以及处理文字语义以便自动进行事实校验的系统或“快速读”文本以便有效进一步分类的系统,提出了方法上的贡献和对顺序建模的新调查。 (由于arXiv抽象限制,抽象省略了)