4 research outputs found

    MORSE: Semantic-ally Drive-n MORpheme SEgment-er

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    We present in this paper a novel framework for morpheme segmentation which uses the morpho-syntactic regularities preserved by word representations, in addition to orthographic features, to segment words into morphemes. This framework is the first to consider vocabulary-wide syntactico-semantic information for this task. We also analyze the deficiencies of available benchmarking datasets and introduce our own dataset that was created on the basis of compositionality. We validate our algorithm across datasets and present state-of-the-art results

    Knowledge base integration in biomedical natural language processing applications

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    With the progress of natural language processing in the biomedical field, the lack of annotated data due to regulations and expensive labor remains an issue. In this work, we study the potential of knowledge bases for biomedical language processing to compensate for the shortage of annotated data. Accordingly, we experiment with the integration of a rigorous biomedical knowledge base, the Unified Medical Language System, in three different biomedical natural language processing applications: text simplification, conversational agents for medication adherence, and automatic evaluation of medical students' chart notes. In the first task, we take as a use case simplifying medication instructions to enhance medication adherence among patients. Given the lack of an appropriate parallel corpus, the Unified Medical Language System provided simpler synonyms for an unsupervised system we devise, and we show a positive impact on comprehension through a human subjects study. As for the second task, we devise an unsupervised system to automatically evaluate chart notes written by medical students. The purpose of the system is to speed up the feedback process and enhance the educational experience. With the lack of training corpora, utilizing the Unified Medical Language System proved to enhance the accuracy of evaluation after integration into the baseline system. For the final task, the Unified Medical Language System was used to augment the training data of a conversational agent that educates patients on their medications. As part of the educational procedure, the agent needed to assess the comprehension of the patients by evaluating their answers to predefined questions. Starting with a small seed set of paraphrases of acceptable answers, the Unified Medical Language System was used to artificially augment the original small seed set via synonymy. Results did not show an increase in quality of system output after knowledge base integration due to the majority of errors resulting from mishandling of counts and negations. We later demonstrate the importance of a (lacking) entity linking system to perform optimal integration of biomedical knowledge bases, and we offer a first stride towards solving that problem, along with conclusions on proper training setup and processes for automatic collection of an annotated dataset for biomedical word sense disambiguation

    Automatic generation of tunable analogy benchmarks for word representations

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    We present a method to automatically generate syntactic analogy datasets for the evaluation of word representations in an unsupervised manner. The automatic generation also allows for customization in terms of word-frequencies, syntactic rules, part-of-speech tags and size of the dataset. We show the ability of our method to generate cross-lingual analogy task datasets for languages other than English, where evaluation datasets are limited if not nonexistent, by constructing datasets for French, German, Spanish, Arabic and Hebrew. Our method clusters pairs of words into morphological rules in an unsupervised manner, using which we generate analogy questions for different rules. We show the quality of an automatically generated dataset by checking the correlation of the performance of different word representations on it with the performance of the same representations on the Google analogy dataset. The values exhibited a high correlation of 95%. Moreover, we showcase the benefits of customization through studying the performance of different word representations when varying the frequency of words in the dataset
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