scholarly journals Taking the Fed at its Word: A New Approach to Estimating Central Bank Objectives Using Text Analysis

2019 ◽  
pp. 01-74 ◽  
Author(s):  
Adam H. Shapiro ◽  
◽  
Daniel J. Wilson ◽  
1991 ◽  
Vol 30 (04) ◽  
pp. 275-283 ◽  
Author(s):  
P. M. Pietrzyk

Abstract:Much information about patients is stored in free text. Hence, the computerized processing of medical language data has been a well-known goal of medical informatics resulting in different paradigms. In Gottingen, a Medical Text Analysis System for German (abbr. MediTAS) has been under development for some time, trying to combine and to extend these paradigms. This article concentrates on the automated syntax analysis of German medical utterances. The investigated text material consists of 8,790 distinct utterances extracted from the summary sections of about 18,400 cytopathological findings reports. The parsing is based upon a new approach called Left-Associative Grammar (LAG) developed by Hausser. By extending considerably the LAG approach, most of the grammatical constructions occurring in the text material could be covered.


Author(s):  
ELSAYED ATLAM

Conventional approaches to text analysis and information retrieval which measured document similarity by considering all information in texts are relatively inefficiency for processing large text collections in heterogeneous subject areas. Previous researches showed that evidence from passage can improve retrieval results. But it also raised questions about how passage is defined, how they can be ranked efficiently, and what is their proper rule in long structure documents. Moreover, the frequency of "the" with important sentence is efficiently to summarize the text by dexterity way. We previously proposed an approach for extracting sentences which including article "the" by some restrict rules to carry out effectiveness passages. Based on previous approaches, this paper presents a new Passage SIMilarity (P-SIM) measurements between documents based on effectiveness passages after extracting them using article "the". Moreover, our new approach showing that this method is more efficient than traditional methods. Also, Recall and Precision are achieved by 92.6% and 97.5% respectively, depending on extracted passages. Furthermore, Recall and Precision significantly improved by 38.3% and 44.2% over the traditional method. The proposed methods are applied to 3,990 articles from the large tagged corpus.


Author(s):  
MERYEM ERRAITEB

The purpose of this study is evaluating the effectiveness of monetary policy in Morocco. The results suggest that the monetary authorities must get out of the narrowness of logic monetarist by adopting a new approach which explicitly privileges the targeting of inflation as the ultimate goal, while referring to a multitude of indicators likely to guide the Central Bank in the conduct of its monetary policy as the exchange rate and interest rate next to the M3 aggregate growth rule. Thus, monetary authorities should out of the narrow sense monetarist by adopting a new approach that focuses explicitly targeting inflation as the ultimate goal, while referring to a multitude of indicators to guide the central bank in the conduct of monetary policy as exchange rate and Interest rate ET and this, alongside the growth rule M3.  


Author(s):  
Sushila Sonare ◽  
Megha Kamble

Now-a-days, it is very common that the customers share their thoughts about any product, brand and their experience in social media. The analysts collect these reviews and process it, to extract meaningful information about the product. The beauty of social media is, it’s involved in all the domains. So the analysts got reviews from different social media and platforms for almost all kind of thing. The Sentiment Analysis is applied to predict outcomes for getting useful information, for ex.; like predict the blockbuster for a movie, rating for any new launches and many more. This type of prediction is really helpful for the customer to buy any goods or take any services in this competitive world. This paper is focused on e-commerce website reviews which are normally in text form with some special characters and some symbols (emojis). Each word in this text set got some meaning in terms of context, emotion and prior experience. These characteristics contribute to some of the features of text data for prediction. The objective of this paper is to compile existing research works on text analysis and emotion based analysis. The open issues and challenges of document based sentiment analysis are also discussed. The paper concluded with proposing a new approach of multi class classification. Ternary classification for classes positive, negative and neutral is suggested primarily for product based text and emoji reviews on Twitter social media.


Subject Corporate lending in Russia. Significance Corporate credit remained low in 2019. Government officials say the banks should be lending more to corporates to boost investment and hence growth, and reduce excessive lending to consumers who are liable to get into distress. The recent lowering of the key interest rate to 6.5% is intended to encourage corporate borrowing generally, and the Central Bank of Russia (CBR) is adopting more nuanced regulatory policies to encourage corporate lending to potentially risky but economically desirable customers such as smaller businesses and farms. Impacts Slower-than-expected corporate credit growth could endanger the six-year plan's target of an investment-to-GDP ratio of 25% in 2024. The CBR's new approach to prudential regulation will alter banks' lending strategies. Credit demand from small and medium-sized enterprises and the agricultural sector will be helped by loan subsidies from the state.


2015 ◽  
Vol 36 ◽  
pp. 25-34 ◽  
Author(s):  
Catherine Porter ◽  
Paul Atkinson ◽  
Ian Gregory

Author(s):  
Sushila Sonare ◽  
◽  
Dr. Megha Kamble ◽  

Now-a-days, it is very common that the customers share their thoughts about any product, brand and their experience in social media. The analysts collect these reviews and process it, to extract meaningful information about the product. The beauty of social media is, it’s involved in all the domains. So the analysts got reviews from different social media and platforms for almost all kind of thing. The Sentiment Analysis is applied to predict outcomes for getting useful information, for ex.; like predict the blockbuster for a movie, rating for any new launches and many more. This type of prediction is really helpful for the customer to buy any goods or take any services in this competitive world. This paper is focused on e-commerce website reviews which are normally in text form with some special characters and some symbols (emojis). Each word in this text set got some meaning in terms of context, emotion and prior experience. These characteristics contribute to some of the features of text data for prediction. The objective of this paper is to compile existing research works on text analysis and emotion based analysis. The open issues and challenges of document based sentiment analysis are also discussed. The paper concluded with proposing a new approach of multi class classification. Ternary classification for classes positive, negative and neutral is suggested primarily for product based text and emoji reviews on Twitter social media.


2018 ◽  
Vol 8 (1) ◽  
pp. 106-122 ◽  
Author(s):  
Nicole Baerg ◽  
Will Lowe

AbstractScholars often use voting data to estimate central bankers’ policy preferences but consensus voting is commonplace. To get around this, we combine topic-based text analysis and scaling methods to generate theoretically motivated comparative measures of central bank preferences on the US Federal Open Market Committee (FOMC) leading up to the financial crisis in a way that does not depend on voting behavior. We apply these measures to a number of applications in the literature. For example, we find that FOMC members that are Federal Reserve Bank Presidents from districts experiencing higher unemployment are also more likely to emphasize unemployment in their speech. We also confirm that committee members on schedule to vote are more likely to express consensus opinion than their off schedule voting counterparts.


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