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Dataset Description
The Twitter Financial News dataset is an English-language dataset containing an annotated corpus of finance-related tweets. This dataset is used to classify finance-related tweets for their sentiment.
The dataset holds 11,932 documents annotated with 3 labels:
sentiments = { "LABEL_0": "Bearish", "LABEL_1": "Bullish", "LABEL_2": "Neutral" }
The data was collected using the Twitter API. The current dataset supports the multi-class classification… See the full description on the dataset page: https://huggingface.co/datasets/zeroshot/twitter-financial-news-sentiment.
The Comprehensive Annual Financial Reports are presented in three main sections; the Introductory Section, the Financial Section, and the Statistical Section. The Introductory Section includes a financial overview, discussion of Iowa's economy and an organizational chart for State government. The Financial Section includes the state auditor's report, management's discussion and analysis, audited basic financial statements and notes thereto, and the underlying combining and individual fund financial statements and supporting schedules. The Statistical Section sets forth selected unaudited economic, financial trend and demographic information for the state on a multi-year basis. Reports for multiple fiscal years are available.
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Market Size statistics on the Financial Data Service Providers industry in the US
Extract of data from financial transaction system to enable detailed financial reporting across all business units in the Civil Service
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Graph and download economic data for Domestic Financial Sectors; Total Liabilities and Equity, Level (FBLIEQQ027S) from Q4 1945 to Q2 2025 about finance companies, IMA, companies, equity, finance, liabilities, financial, and USA.
According to our latest research, the global Financial Data Feeds market size reached USD 8.3 billion in 2024, driven by rapid digital transformation and increasing reliance on real-time analytics across financial sectors. The market is projected to expand at a robust CAGR of 8.7% from 2025 to 2033, culminating in a forecasted value of USD 17.3 billion by 2033. This strong growth trajectory is underpinned by the surging demand for accurate, timely, and comprehensive data to support trading, risk management, and regulatory compliance activities worldwide. As per our latest research, the proliferation of algorithmic trading, increasing regulatory requirements, and the rise of cloud-based solutions are significant growth drivers for the Financial Data Feeds market.
One of the primary growth factors fueling the Financial Data Feeds market is the exponential rise in algorithmic and high-frequency trading. Financial institutions, asset managers, and hedge funds are increasingly leveraging sophisticated trading algorithms that require ultra-low latency, real-time data feeds to make split-second decisions. The competitive edge in today’s trading landscape is often determined by the speed and accuracy of data acquisition, analysis, and execution. This has led to a greater reliance on real-time and historical data feeds, compelling vendors to innovate and offer solutions that can handle vast data volumes with minimal latency. Additionally, the growing adoption of machine learning and artificial intelligence in trading strategies further amplifies the need for high-quality, granular data feeds, making this segment a cornerstone of market expansion.
Another significant growth driver is the tightening regulatory environment across global financial markets. Regulatory bodies such as the SEC, ESMA, and MAS are enforcing stringent compliance and reporting standards, necessitating robust data management and transparency. Financial institutions must now source, process, and report vast amounts of reference and transactional data accurately and promptly to meet these mandates. This has led to increased investment in advanced financial data feed solutions that support compliance and regulatory reporting. Furthermore, the complexity of cross-border transactions and the emergence of new asset classes, including cryptocurrencies, have escalated the demand for diverse and comprehensive data feeds, propelling market growth.
The ongoing digital transformation within the financial sector is also a pivotal factor driving the Financial Data Feeds market. As financial institutions migrate to cloud-based infrastructures and embrace digital-first strategies, the demand for flexible, scalable, and cost-efficient data delivery models has surged. Cloud-based data feeds offer significant advantages in terms of scalability, accessibility, and integration with other digital tools and platforms, enabling organizations to respond quickly to market shifts and customer needs. The integration of data feeds with advanced analytics, portfolio management, and risk assessment platforms is enabling financial firms to derive actionable insights, optimize decision-making, and enhance overall operational efficiency. This digital evolution is expected to further accelerate market growth in the coming years.
From a regional perspective, North America continues to dominate the Financial Data Feeds market, accounting for the largest share in 2024, followed closely by Europe and Asia Pacific. The region’s leadership is attributed to the presence of major financial hubs, advanced technological infrastructure, and a high concentration of market participants. However, Asia Pacific is emerging as the fastest-growing region, with a notable CAGR driven by rapid financial sector development, regulatory modernization, and increasing adoption of digital trading platforms. Meanwhile, Europe is witnessing steady growth due to evolving regulatory frameworks and the rising importance of sustainable finance and ESG reporting. Latin America and the Middle East & Africa are also experiencing gradual growth, spurred by ongoing financial sector reforms and increased foreign investment.
Financial inclusion is critical in reducing poverty and achieving inclusive economic growth. When people can participate in the financial system, they are better able to start and expand businesses, invest in their children’s education, and absorb financial shocks. Yet prior to 2011, little was known about the extent of financial inclusion and the degree to which such groups as the poor, women, and rural residents were excluded from formal financial systems.
By collecting detailed indicators about how adults around the world manage their day-to-day finances, the Global Findex allows policy makers, researchers, businesses, and development practitioners to track how the use of financial services has changed over time. The database can also be used to identify gaps in access to the formal financial system and design policies to expand financial inclusion.
Landline random-digit-dial sample excludes 12 municipalities near the nuclear power plant in Fukushima, representing less than 1% of the population.
Individuals
The target population is the civilian, non-institutionalized population 15 years and above.
Observation data/ratings [obs]
The indicators in the 2017 Global Findex database are drawn from survey data covering almost 150,000 people in 144 economies-representing more than 97 percent of the world’s population (see table A.1 of the Global Findex Database 2017 Report for a list of the economies included). The survey was carried out over the 2017 calendar year by Gallup, Inc., as part of its Gallup World Poll, which since 2005 has annually conducted surveys of approximately 1,000 people in each of more than 160 economies and in over 150 languages, using randomly selected, nationally representative samples. The target population is the entire civilian, noninstitutionalized population age 15 and above. Interview procedure Surveys are conducted face to face in economies where telephone coverage represents less than 80 percent of the population or where this is the customary methodology. In most economies the fieldwork is completed in two to four weeks.
In economies where face-to-face surveys are conducted, the first stage of sampling is the identification of primary sampling units. These units are stratified by population size, geography, or both, and clustering is achieved through one or more stages of sampling. Where population information is available, sample selection is based on probabilities proportional to population size; otherwise, simple random sampling is used. Random route procedures are used to select sampled households. Unless an outright refusal occurs, interviewers make up to three attempts to survey the sampled household. To increase the probability of contact and completion, attempts are made at different times of the day and, where possible, on different days. If an interview cannot be obtained at the initial sampled household, a simple substitution method is used.
Respondents are randomly selected within the selected households. Each eligible household member is listed and the handheld survey device randomly selects the household member to be interviewed. For paper surveys, the Kish grid method is used to select the respondent. In economies where cultural restrictions dictate gender matching, respondents are randomly selected from among all eligible adults of the interviewer’s gender.
In economies where telephone interviewing is employed, random digit dialing or a nationally representative list of phone numbers is used. In most economies where cell phone penetration is high, a dual sampling frame is used. Random selection of respondents is achieved by using either the latest birthday or household enumeration method. At least three attempts are made to reach a person in each household, spread over different days and times of day.
The sample size was 1005.
Landline and Cellular Telephone
The questionnaire was designed by the World Bank, in conjunction with a Technical Advisory Board composed of leading academics, practitioners, and policy makers in the field of financial inclusion. The Bill and Melinda Gates Foundation and Gallup Inc. also provided valuable input. The questionnaire was piloted in multiple countries, using focus groups, cognitive interviews, and field testing. The questionnaire is available in more than 140 languages upon request.
Questions on cash on delivery, saving using an informal savings club or person outside the family, domestic remittances, and agricultural payments are only asked in developing economies and few other selected countries. The question on mobile money accounts was only asked in economies that were part of the Mobile Money for the Unbanked (MMU) database of the GSMA at the time the interviews were being held.
Estimates of standard errors (which account for sampling error) vary by country and indicator. For country-specific margins of error, please refer to the Methodology section and corresponding table in Demirgüç-Kunt, Asli, Leora Klapper, Dorothe Singer, Saniya Ansar, and Jake Hess. 2018. The Global Findex Database 2017: Measuring Financial Inclusion and the Fintech Revolution. Washington, DC: World Bank
The statistic presents the leading financial data service companies in the United States in 2015, by revenue. In that year, Visa was ranked second with the revenue of approximately 13.88 billion U.S. dollars.
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The Finance sector's operating environment was previously characterised by record-low interest rates. Nonetheless, high inflation prompted the Reserve Bank of Australia (RBA) to hike the cash rate from May 2022 onwards. This shift allowed financial institutions to impose higher loan charges, propelling their revenue. Banks raised interest rates quicker than funding costs in the first half of 2022-23, boosting net interest margins. However, sophisticated competition and digital disruption have reshaped the sector and nibbled at the Big Four's dominance, weighing on ADIs' performance. In the first half of 2025, the fierce competition has forced ADIs to trim lending rates even ahead of RBA moves to protect their slice of the mortgage market. Higher cash rates initially widened net interest margins, but the expiry of cheap TFF funding and a fierce mortgage war are now compressing spreads, weighing on ADIs' profitability. Although ANZ's 2024 Suncorp Bank takeover highlights some consolidation, the real contest is unfolding in tech. Larger financial institutions are combatting intensified competition from neobanks and fintechs by upscaling their technology investments, strengthening their strategic partnerships with cloud providers and technology consulting firms and augmenting their digital offerings. Notable examples include the launch of ANZ Plus by ANZ and Commonwealth Bank's Unloan. Meanwhile, investor demand for rental properties, elevated residential housing prices and sizable state-infrastructure pipelines have continued to underpin loan growth, offsetting the drag from weaker mortgage affordability and volatile business sentiment. Overall, subdivision revenue is expected to rise at an annualised 8.3% over the five years through 2024-25, to $524.6 billion. This growth trajectory includes an estimated 4.8% decline in 2024-25 driven by rate cuts in 2025, which will weigh on income from interest-bearing assets. The Big Four banks will double down on technology investments and partnerships to counter threats from fintech startups and neobanks. As cybersecurity risks and APRA regulations evolve, financial institutions will gear up to strengthen their focus on shielding sensitive customer data and preserving trust, lifting compliance and operational costs. In the face of fierce competition, evolving regulations and shifting customer preferences, consolidation through M&As is poised to be a viable trend for survival and growth, especially among smaller financial institutions like credit unions. While rate cuts will challenge profitability within the sector, expansionary economic policies are poised to stimulate business and mortgage lending activity, presenting opportunities for strategic growth in a dynamic market. These trends are why Finance subdivision revenue is forecast to rise by an annualised 1.1% over the five years through the end of 2029-30, to $554.9 billion
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CN: Industrial Enterprise: Private: Sales Tax & Surcharge: ytd data was reported at 258.990 RMB bn in Dec 2015. This records an increase from the previous number of 226.420 RMB bn for Nov 2015. CN: Industrial Enterprise: Private: Sales Tax & Surcharge: ytd data is updated monthly, averaging 24.843 RMB bn from Jan 2001 (Median) to Dec 2015, with 156 observations. The data reached an all-time high of 258.990 RMB bn in Dec 2015 and a record low of 0.693 RMB bn in Feb 2001. CN: Industrial Enterprise: Private: Sales Tax & Surcharge: ytd data remains active status in CEIC and is reported by National Bureau of Statistics. The data is categorized under China Premium Database’s Industrial Sector – Table CN.BF: Industrial Financial Data: Private Enterprise.
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Graph and download economic data for Domestic Financial Sectors; Money Market Fund Shares; Asset, Level (FBMFSEA027N) from 1945 to 2024 about MMMF, finance companies, IMA, companies, finance, financial, assets, and USA.
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CN: CE: Foreign Funded: Current Assets: Inventories data was reported at 1.364 RMB bn in 2018. This records an increase from the previous number of 1.289 RMB bn for 2017. CN: CE: Foreign Funded: Current Assets: Inventories data is updated yearly, averaging 1.326 RMB bn from Dec 2000 (Median) to 2018, with 16 observations. The data reached an all-time high of 3.489 RMB bn in 2014 and a record low of 0.370 RMB bn in 2000. CN: CE: Foreign Funded: Current Assets: Inventories data remains active status in CEIC and is reported by National Bureau of Statistics. The data is categorized under China Premium Database’s Wholesale, Retail and Catering Sector – Table CN.RJB: Catering Enterprise: Financial Data: Foreign Funded.
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Comprehensive dataset containing 32 verified Financial institution businesses in LI with complete contact information, ratings, reviews, and location data.
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United States Index: NYSE Financial data was reported at 7,713.770 31Dec2002=5000 in Nov 2018. This records an increase from the previous number of 7,543.040 31Dec2002=5000 for Oct 2018. United States Index: NYSE Financial data is updated monthly, averaging 6,396.895 31Dec2002=5000 from Dec 2002 (Median) to Nov 2018, with 192 observations. The data reached an all-time high of 9,933.900 31Dec2002=5000 in May 2007 and a record low of 2,518.780 31Dec2002=5000 in Feb 2009. United States Index: NYSE Financial data remains active status in CEIC and is reported by New York Stock Exchange. The data is categorized under Global Database’s United States – Table US.Z001: NYSE: Indexes.
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Graph and download economic data for People 15 Years and Over Saving at a Financial Institution in the Past Year for Lithuania (DDAI06LTA156NWDB) from 2011 to 2021 about Lithuania, adult, savings, finance companies, companies, finance, and financial.
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Indonesia: Financial markets development, depth: The latest value from 2021 is 0.241 index points, a decline from 0.258 index points in 2020. In comparison, the world average is 0.255 index points, based on data from 157 countries. Historically, the average for Indonesia from 1980 to 2021 is 0.189 index points. The minimum value, 0.084 index points, was reached in 1980 while the maximum of 0.367 index points was recorded in 1998.
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Concept: The Financial derivatives (assets and liabilities) account registers financial flows related to the liquidation of obligations stemming from operations of swap, options, and futures; and the flows related to options’ premium. The account does not include guarantee margins deposits linked to future exchanges operations, which are allocated in other assets and other short-term liabilities. Source: Central Bank of Brazil – Department of Economics 22968-financial-derivatives---net-incurrence-of-liabilities---monthly 22968-financial-derivatives---net-incurrence-of-liabilities---monthly
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Comprehensive financial and analytical metrics for Lybra Finance, including key performance indicators, market data, and ecosystem analytics.
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This dataset contains news headlines relevant to key forex pairs: AUDUSD, EURCHF, EURUSD, GBPUSD, and USDJPY. The data was extracted from reputable platforms Forex Live and FXstreet over a period of 86 days, from January to May 2023. The dataset comprises 2,291 unique news headlines. Each headline includes an associated forex pair, timestamp, source, author, URL, and the corresponding article text. Data was collected using web scraping techniques executed via a custom service on a virtual machine. This service periodically retrieves the latest news for a specified forex pair (ticker) from each platform, parsing all available information. The collected data is then processed to extract details such as the article's timestamp, author, and URL. The URL is further used to retrieve the full text of each article. This data acquisition process repeats approximately every 15 minutes.
To ensure the reliability of the dataset, we manually annotated each headline for sentiment. Instead of solely focusing on the textual content, we ascertained sentiment based on the potential short-term impact of the headline on its corresponding forex pair. This method recognizes the currency market's acute sensitivity to economic news, which significantly influences many trading strategies. As such, this dataset could serve as an invaluable resource for fine-tuning sentiment analysis models in the financial realm.
We used three categories for annotation: 'positive', 'negative', and 'neutral', which correspond to bullish, bearish, and hold sentiments, respectively, for the forex pair linked to each headline. The following Table provides examples of annotated headlines along with brief explanations of the assigned sentiment.
Examples of Annotated Headlines
Forex Pair
Headline
Sentiment
Explanation
GBPUSD
Diminishing bets for a move to 12400
Neutral
Lack of strong sentiment in either direction
GBPUSD
No reasons to dislike Cable in the very near term as long as the Dollar momentum remains soft
Positive
Positive sentiment towards GBPUSD (Cable) in the near term
GBPUSD
When are the UK jobs and how could they affect GBPUSD
Neutral
Poses a question and does not express a clear sentiment
JPYUSD
Appropriate to continue monetary easing to achieve 2% inflation target with wage growth
Positive
Monetary easing from Bank of Japan (BoJ) could lead to a weaker JPY in the short term due to increased money supply
USDJPY
Dollar rebounds despite US data. Yen gains amid lower yields
Neutral
Since both the USD and JPY are gaining, the effects on the USDJPY forex pair might offset each other
USDJPY
USDJPY to reach 124 by Q4 as the likelihood of a BoJ policy shift should accelerate Yen gains
Negative
USDJPY is expected to reach a lower value, with the USD losing value against the JPY
AUDUSD
<p>RBA Governor Lowe’s Testimony High inflation is damaging and corrosive </p>
Positive
Reserve Bank of Australia (RBA) expresses concerns about inflation. Typically, central banks combat high inflation with higher interest rates, which could strengthen AUD.
Moreover, the dataset includes two columns with the predicted sentiment class and score as predicted by the FinBERT model. Specifically, the FinBERT model outputs a set of probabilities for each sentiment class (positive, negative, and neutral), representing the model's confidence in associating the input headline with each sentiment category. These probabilities are used to determine the predicted class and a sentiment score for each headline. The sentiment score is computed by subtracting the negative class probability from the positive one.
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Financial inclusion is critical in reducing poverty and achieving inclusive economic growth. When people can participate in the financial system, they are better able to start and expand businesses, invest in their children’s education, and absorb financial shocks. Yet prior to 2011, little was known about the extent of financial inclusion and the degree to which such groups as the poor, women, and rural residents were excluded from formal financial systems. By collecting detailed indicators about how adults around the world manage their day-to-day finances, the Global Findex allows policy makers, researchers, businesses, and development practitioners to track how the use of financial services has changed over time. The database can also be used to identify gaps in access to the formal financial system and design policies to expand financial inclusion.
MIT Licensehttps://opensource.org/licenses/MIT
License information was derived automatically
Dataset Description
The Twitter Financial News dataset is an English-language dataset containing an annotated corpus of finance-related tweets. This dataset is used to classify finance-related tweets for their sentiment.
The dataset holds 11,932 documents annotated with 3 labels:
sentiments = { "LABEL_0": "Bearish", "LABEL_1": "Bullish", "LABEL_2": "Neutral" }
The data was collected using the Twitter API. The current dataset supports the multi-class classification… See the full description on the dataset page: https://huggingface.co/datasets/zeroshot/twitter-financial-news-sentiment.