Search Results for author: Emilio Monti

Found 7 papers, 2 papers with code

We Need to Talk About Classification Evaluation Metrics in NLP

no code implementations8 Jan 2024 Peter Vickers, Loïc Barrault, Emilio Monti, Nikolaos Aletras

In Natural Language Processing (NLP) classification tasks such as topic categorisation and sentiment analysis, model generalizability is generally measured with standard metrics such as Accuracy, F-Measure, or AUC-ROC.

Machine Translation Natural Language Understanding +2

Semantic Parsing for Conversational Question Answering over Knowledge Graphs

1 code implementation28 Jan 2023 Laura Perez-Beltrachini, Parag Jain, Emilio Monti, Mirella Lapata

In this paper, we are interested in developing semantic parsers which understand natural language questions embedded in a conversation with a user and ground them to formal queries over definitions in a general purpose knowledge graph (KG) with very large vocabularies (covering thousands of concept names and relations, and millions of entities).

Conversational Question Answering Knowledge Graphs +1

Multilingual Neural Semantic Parsing for Low-Resourced Languages

1 code implementation Joint Conference on Lexical and Computational Semantics 2021 Menglin Xia, Emilio Monti

To evaluate our multilingual models on human-written sentences as opposed to machine translated ones, we introduce a new multilingual semantic parsing dataset in English, Italian and Japanese based on the Facebook Task Oriented Parsing (TOP) dataset.

Machine Translation Semantic Parsing +3

Don't Parse, Generate! A Sequence to Sequence Architecture for Task-Oriented Semantic Parsing

no code implementations30 Jan 2020 Subendhu Rongali, Luca Soldaini, Emilio Monti, Wael Hamza

Virtual assistants such as Amazon Alexa, Apple Siri, and Google Assistant often rely on a semantic parsing component to understand which action(s) to execute for an utterance spoken by its users.

Semantic Parsing slot-filling +1

Transfer Learning for Neural Semantic Parsing

no code implementations WS 2017 Xing Fan, Emilio Monti, Lambert Mathias, Markus Dreyer

The goal of semantic parsing is to map natural language to a machine interpretable meaning representation language (MRL).

Semantic Parsing Transfer Learning

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