This study presents an efficient framework of deriving lemma from an inflected Bangla word considering its parts-of-speech as context. Bangla is a morphologically rich Indo-Aryan language where around 70% words are inflected, and some words have around 90 different inflected forms making it one of the most challenging languages for lemmatization. The unavailability of a sufficiently large appropriate dataset in Bangla makes the task even more strenuous. A reliable robust Bangla lemmatizer will create new possibilities for other dependent fields like automatic language translation and grammatical correction to flourish in Bangla. In this paper, we have described a new larger Bangla dataset for lemmatization and an encoder-decoder-based sequence_to_sequence framework for it. After tuning the hyper-parameters, the proposed framework yielded 95.75% character accuracy and 91.81% exact match on the testing split of the prepared dataset which is significantly higher than existing other approaches in Bangla for lemmatization.
Article Highlights
This article:
Discusses lemmatization task in Bangla and demonstrates difference with stemming
Presents an artificial neural network based efficient model for lemmatization that yields comparatively better performance than existing ones
Describes a new large dataset for lemmatization in Bangla language
Interconnected systems such as power systems and chemical processes are often required to satisfy safety properties in the presence of faults and attacks. Verifying safety of these systems, however, is computationally challenging due to nonlinear dynamics, high dimensionality, and combinatorial number of possible faults and attacks that can be incurred by the subsystems interconnected within the network. In this paper, we develop a compositional resilience index to verify safety properties of interconnected systems under faults and attacks. The resilience index is a tuple serving the following two purposes. First, it quantifies how a safety property is impacted when a subsystem is compromised by faults and attacks. Second, the resilience index characterizes the needed behavior of a subsystem during normal operations to ensure safety violations will not occur when future adverse events occur. We develop a set of sufficient conditions on the dynamics of each subsystem to satisfy its safety constraint, and leverage these conditions to formulate an optimization program to compute the resilience index. When multiple subsystems are interconnected and their resilience indices are given, we show that the safety constraints of the interconnected system can be efficiently verified by solving a system of linear inequalities. We demonstrate our developed resilience index using a numerical case study on chemical reactors connected in series.
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