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@viveksck
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{"source": "grammatical_error_correction", "target": "statistical_machine_translation"}, {"source": "grammatical_error_correction", "target": "machine_translation"}, {"source": "grammatical_error_correction", "target": "shared_task"}, {"source": "lr_parsing", "target": "parsing"}, {"source": "cyc", "target": "wordnet"}, {"source": "sequence_labeling", "target": "neural_networks"}, {"source": "inference_rules", "target": "semantic"}, {"source": "hierarchical_recurrent", "target": "neural_networks"}, {"source": "error_propagation", "target": "joint_model"}, {"source": "error_propagation", "target": "parsing"}, {"source": "error_propagation", "target": "dependency_parsing"}, {"source": "error_propagation", "target": "pos_tagging"}, {"source": "error_propagation", "target": "chinese"}, {"source": "monolingual_corpus", "target": "translation"}, {"source": "monolingual_corpus", "target": "parallel_corpus"}, {"source": "monolingual_corpus", "target": "machine_translation"}, {"source": "ibm", "target": "alignment_models"}, {"source": "ibm", "target": "word-based"}, {"source": "ibm", "target": "statistical_machine_translation"}, {"source": "ibm", "target": "word_alignment"}, {"source": "ibm", "target": "grammar"}, {"source": "ibm", "target": "syntactic"}, {"source": "ibm", "target": "japanese"}, {"source": "ibm", "target": "translation"}, {"source": "ibm", "target": "french"}, {"source": "ibm", "target": "bleu_scores"}, {"source": "ontologies", "target": "semantic"}, {"source": "ontologies", "target": "wordnet"}, {"source": "ontologies", "target": "ontology"}, {"source": "ontologies", "target": "natural_language"}, {"source": "ontologies", "target": "domain-specific"}, {"source": "lexical_acquisition", "target": "semantic"}, {"source": "reordering_model", "target": "translation"}, {"source": "reordering_model", "target": "statistical_machine_translation"}, {"source": "reordering_model", "target": "arabic"}, {"source": "reordering_model", "target": "machine_translation"}, {"source": "reordering_model", "target": "nist"}, {"source": "reordering_model", "target": "chinese"}, {"source": "learning_word_embeddings", "target": "word_embeddings"}, {"source": "english_language", "target": "linguistic"}, {"source": "english_language", "target": "syntactic"}, {"source": "distributional_information", "target": "word_embeddings"}, {"source": "tagging_accuracy", "target": "part-of-speech_tagging"}, {"source": "tagging_accuracy", "target": "part-of-speech"}, {"source": "tagging_accuracy", "target": "pos_tagging"}, {"source": "metadata", "target": "real-world"}, {"source": "metadata", "target": "machine_translation"}, {"source": "metadata", "target": "social_media"}, {"source": "metadata", "target": "topic_models"}, {"source": "metadata", "target": "linguistic"}, {"source": "metadata", "target": "news"}, {"source": "ner_systems", "target": "named_entity_recognition"}, {"source": "semantically_annotated", "target": "semantic"}, {"source": "support_vector_machines", "target": "machine_learning"}, {"source": "support_vector_machines", "target": "naive_bayes"}, {"source": "support_vector_machines", "target": "svm"}, {"source": "support_vector_machines", "target": "syntactic"}, {"source": "support_vector_machines", "target": "japanese"}, {"source": "support_vector_machines", "target": "conditional_random_fields"}, {"source": "support_vector_machines", "target": "semantic"}, {"source": "support_vector_machines", "target": "f1"}, {"source": "support_vector_machines", "target": "maximum_entropy"}, {"source": "support_vector_machines", "target": "classification_task"}, {"source": "textual_entailment", "target": "natural_language"}, {"source": "textual_entailment", "target": "semantic"}, {"source": "textual_entailment", "target": "question_answering"}, {"source": "textual_entailment", "target": "rte"}, {"source": "textual_entailment", "target": "linguistic"}, {"source": "textual_entailment", "target": "recognizing_textual_entailment"}, {"source": 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