{"id":617105,"date":"2023-03-12T09:09:23","date_gmt":"2023-03-12T14:09:23","guid":{"rendered":"https:\/\/news.sellorbuyhomefast.com\/index.php\/2023\/03\/12\/with-hundreds-of-platforms-around-information-gives-fx-traders-an-edge\/"},"modified":"2023-03-12T09:09:23","modified_gmt":"2023-03-12T14:09:23","slug":"with-hundreds-of-platforms-around-information-gives-fx-traders-an-edge","status":"publish","type":"post","link":"https:\/\/newsycanuse.com\/index.php\/2023\/03\/12\/with-hundreds-of-platforms-around-information-gives-fx-traders-an-edge\/","title":{"rendered":"With Hundreds of Platforms Around, Information Gives FX Traders an Edge"},"content":{"rendered":"<div data-v-19e82b9c>\n<p data-v-19e82b9c>Analytics has recently been in the news from a retail and institutional trader perspective. <a href=\"https:\/\/www.financemagnates.com\/forex\/tradefeedr-launches-algo-forecasting-suite\/\" target=\"_blank\" rel=\"follow noopener\" data-v-19e82b9c>Tradefeedr launching an FX algo forecasting suite<\/a> enables retail clients to access accurate and independent data to inform their algo execution strategies better, while institutions are investing heavily in technology to improve their <a href=\"https:\/\/www.financemagnates.com\/institutional-forex\/positive-indicators-market-volatility-accelerate-auto-trading\/\" target=\"_blank\" rel=\"follow noopener\" data-v-19e82b9c>trading process and data analysis<\/a>.<\/p>\n<h2 data-v-19e82b9c>No central source<\/h2>\n<p data-v-19e82b9c>So, how can retail FX traders best use data to give themselves a trading edge in a highly fragmented market with hundreds of platforms, venues, and liquidity providers generating market data in real-time, 24 hours a day?<\/p>\n<p data-v-19e82b9c>Unlike listed markets, there is no consolidated tape or central source of data, and the availability of executable prices differs across market participants. While fundamental and sentiment analysis are essential tools for traders to optimize decision-making, using technical analysis based on statistical time series analytics is still the standard in retail <a href=\"https:\/\/www.financemagnates.com\/tag\/fx-trading\/\" target=\"_blank\" rel=\"follow noopener\" data-v-19e82b9c>FX trading<\/a>.<\/p>\n<p data-v-19e82b9c>\u201cTime series data which focuses on mining historical and real-time data to analyze trends in search of the repetition of well-known chart patterns and other technical factors are the lifeblood of technical analysis,\u201d explains Rich Kiel, the Global Head of <a href=\"https:\/\/www.financemagnates.com\/tag\/forex\/\" target=\"_blank\" rel=\"follow noopener\" data-v-19e82b9c>FX<\/a> solutions at data analytics specialist <a href=\"https:\/\/www.financemagnates.com\/tag\/kx\/\" target=\"_blank\" rel=\"follow noopener\" data-v-19e82b9c>KX<\/a>.<\/p>\n<h2 data-v-19e82b9c>The Entrance of AI<\/h2>\n<p data-v-19e82b9c>As we have <a href=\"https:\/\/www.financemagnates.com\/cryptocurrency\/crypto-and-ai-contrasts-and-compatibility\/\" target=\"_blank\" rel=\"follow noopener\" data-v-19e82b9c>previously reported<\/a>, ChatGPT (an artificial intelligence chatbot developed by OpenAI) has recently garnered positive coverage. AI technologies such as machine learning have already had a considerable impact in trading data analysis observes Will Carter, the Head of Trading and Analytics at trading solutions developer MahiMarkets.<\/p>\n<figure data-media-id=\"31a47027-da70-45f6-b191-c1cf8c0dccf7\" data-v-19e82b9c>\n<p><img decoding=\"async\" alt=\"Will Carter, Head of Trading and Analytics at MahiMarkets\" src=\"https:\/\/images.financemagnates.com\/images\/Will%20Carter%2C%20Head%20of%20Trading%20and%20Analytics%20at%20MahiMarkets_id_31a47027-da70-45f6-b191-c1cf8c0dccf7_size260.jpg\" aspect-ratio=\"1\" width=\"260\" height=\"260\" loading=\"lazy\"><\/p><figcaption data-v-19e82b9c>\n<p>Will Carter, Head of Trading and Analytics at MahiMarkets<\/p>\n<\/figcaption><\/figure>\n<p data-v-19e82b9c>\u201cTechnical analysis has been around for a long time to assist traders in identifying patterns, but machine learning has been the most significant innovation in data analysis in recent times,\u201d he says.<\/p>\n<p data-v-19e82b9c>\u201cApplying machine learning to data has now become plausible for the sophisticated segment of the retail community.\u201d<\/p>\n<p data-v-19e82b9c>Given that the direction of travel in retail is high-frequency trading and that <span data-ref=\"term-wrapper\" data-v-4a993a20 data-v-19e82b9c><span data-v-4a993a20><span data-v-4a993a20>machine learning<\/span><\/span> <\/span> consumes vast amounts of data, traders first need to ensure they have access to data at high frequencies.<\/p>\n<p data-v-19e82b9c>Affordable access to data is a key consideration for retail traders. Kiel observes that not only is data readily available, but it also comes in all flavors with everything from APIs delivering ultra-low latency real-time information to varied degrees of delayed market data as well as the availability of historical market replay streams and data downloads.<\/p>\n<p data-v-19e82b9c>\u201cEmerging technologies such as cloud computing facilitate the storage of huge data sets at lower cost, making this data available to a wider range of market participants,\u201d he says. \u201cAdditionally, platform operators and technology providers are in an arms race to provide the broadest set of capabilities to remain competitive. Access to market data systematically through retail brokers and platform providers has now become standard.\u201d<\/p>\n<figure data-media-id=\"d88a5c7a-ff43-418e-aff6-84f6559a8399\" data-v-19e82b9c>\n<p><img decoding=\"async\" alt=\"Global FX market\" src=\"https:\/\/images.financemagnates.com\/images\/Global%20FX%20market_id_d88a5c7a-ff43-418e-aff6-84f6559a8399_original.jpg\" aspect-ratio=\"0\" width=\"2000\" loading=\"lazy\"><\/p>\n<\/figure>\n<h2 data-v-19e82b9c>Data Hungry<\/h2>\n<p data-v-19e82b9c> Public sites such as Yahoo Finance offer decimated data buckets\/bars in many assets going back a long way. However, according to Carter, machine learning is very data-hungry, and data at a 100-millisecond granularity level or more is crucial for a research environment.<\/p>\n<p data-v-19e82b9c>\u201cPublic data resources are not currently good enough \u2013 traders need to capture, cleanse and store the data themselves,\u201d he adds.<\/p>\n<p data-v-19e82b9c>While <span data-ref=\"term-wrapper\" data-v-4a993a20 data-v-19e82b9c><span data-v-4a993a20><span data-v-4a993a20>quantitative trading<\/span><\/span> <\/span> based on time series data has long been the domain of FX trade decision-making, many institutional investors have also employed decision trees, including fundamental and even sentimental analysis, to form a more holistic trading strategy now often referred to as quanta mental trading.<\/p>\n<p data-v-19e82b9c><a href=\"https:\/\/www.financemagnates.com\/thought-leadership\/how-fundamental-analysis-differs-from-technical-analysis\/\" target=\"_blank\" rel=\"follow noopener\" data-v-19e82b9c>Fundamental data<\/a>, such as interest rates and commodities prices, is well suited to quantitative prediction of FX movements and is combined with other market data, such as primary market indices and currency rates, to learn and create a forecast for FX, explains Yaron Golgher, the CEO &#038; Co-Founder of I Know First, a developer of AI-based algorithmic forecasting solutions.<\/p>\n<figure data-media-id=\"e5169e7c-0197-4e47-9ad1-a7ea5915c312\" data-v-19e82b9c>\n<p><img decoding=\"async\" alt=\"Yaron Golgher, CEO &#038; Co-Founder of I Know First\" src=\"https:\/\/images.financemagnates.com\/images\/Yaron%20Golgher%2C%20CEO%20%26%20Co-Founder%20of%20I%20Know%20First_id_e5169e7c-0197-4e47-9ad1-a7ea5915c312_size260.jpg\" aspect-ratio=\"1\" width=\"260\" height=\"260\" loading=\"lazy\"><\/p><figcaption data-v-19e82b9c>\n<p>Yaron Golgher, CEO &#038; Co-Founder of I Know First<\/p>\n<\/figcaption><\/figure>\n<p data-v-19e82b9c>\u201cThe AI algorithm generates the forecast signal value,\u201d he adds. \u201cAt each time horizon, we measure the price deviation from what the system considered fair \u2013 that is the signal. A positive signal is up, negative is a down signal.\u201d <\/p>\n<p data-v-19e82b9c>More than 20-time forecast points are used to map the trajectory of the forecast price. These are compressed by averaging into six-time horizons \u2013 three days, seven days, 14 days, one month, three months, and one year.<\/p>\n<p data-v-19e82b9c>For each point, the system generates predictability, reflecting (inversely) the level of unpredictable noise. The higher the predictability, the higher the confidence in the forecast.<\/p>\n<p data-v-19e82b9c>\u201cEach forecast point is a weighted average of tens or even hundreds of independent predictors and each predictor module is comprised of several inputs,\u201d says Golgher. \u201cThus, every module provides an independent forecast because it is based on a different set of market data.\u201d<\/p>\n<p data-v-19e82b9c>To undertake quanta mental analysis effectively requires both computing power and sophistication using traditional big data analysis combined with emerging capabilities such as machine learning.<\/p>\n<p data-v-19e82b9c>\u201cThis isn\u2019t in the domain of most retail traders, but as brokers and investment managers continue to expand the availability of trading algorithms to their clients, <a href=\"https:\/\/www.financemagnates.com\/thought-leadership\/why-fx-algo-execution-is-the-future\/\" target=\"_blank\" rel=\"follow noopener\" data-v-19e82b9c>systematic execution<\/a> based on quanta mental principals will continue to become more prevalent and accessible going forward,\u201d says Kiel.<\/p>\n<p data-v-19e82b9c>Carter agrees that the barrier to entry for traders creating a quanta mental research environment is lower than ever before and that implementation comes down to a number of factors including breadth of research and basic technical skills as well as data access. <\/p>\n<p data-v-19e82b9c>\u201cIt also raises questions about how brokers manage the new alpha-seeking community of retail traders using these sophisticated technologies,\u201d he says, adding that brokers can no longer operate under the assumption that the retail trader will permanently lose and continue to take the opposite of the trade (known as \u2018<a href=\"https:\/\/www.financemagnates.com\/forex\/technology\/to-a-book-or-b-book-the-review-of-the-two-decades\/\" target=\"_blank\" rel=\"follow noopener\" data-v-19e82b9c>B-Book execution<\/a>\u2019).<\/p>\n<p data-v-19e82b9c>\u201cAssuming you have a broker facing a successful quanta mental trader who is consistently extracting alpha, if the broker always B Books that flow the alpha comes from the B book,\u201d concludes Carter. \u201cInstead, it needs to go through a more actively managed portfolio so that the alpha comes from the market.\u201d<\/p>\n<\/div>\n<div data-v-19e82b9c>\n<p data-v-19e82b9c>Analytics has recently been in the news from a retail and institutional trader perspective. <a href=\"https:\/\/www.financemagnates.com\/forex\/tradefeedr-launches-algo-forecasting-suite\/\" target=\"_blank\" rel=\"follow noopener\" data-v-19e82b9c>Tradefeedr launching an FX algo forecasting suite<\/a> enables retail clients to access accurate and independent data to inform their algo execution strategies better, while institutions are investing heavily in technology to improve their <a href=\"https:\/\/www.financemagnates.com\/institutional-forex\/positive-indicators-market-volatility-accelerate-auto-trading\/\" target=\"_blank\" rel=\"follow noopener\" data-v-19e82b9c>trading process and data analysis<\/a>.<\/p>\n<h2 data-v-19e82b9c>No central source<\/h2>\n<p data-v-19e82b9c>So, how can retail FX traders best use data to give themselves a trading edge in a highly fragmented market with hundreds of platforms, venues, and liquidity providers generating market data in real-time, 24 hours a day?<\/p>\n<p data-v-19e82b9c>Unlike listed markets, there is no consolidated tape or central source of data, and the availability of executable prices differs across market participants. While fundamental and sentiment analysis are essential tools for traders to optimize decision-making, using technical analysis based on statistical time series analytics is still the standard in retail <a href=\"https:\/\/www.financemagnates.com\/tag\/fx-trading\/\" target=\"_blank\" rel=\"follow noopener\" data-v-19e82b9c>FX trading<\/a>.<\/p>\n<p data-v-19e82b9c>\u201cTime series data which focuses on mining historical and real-time data to analyze trends in search of the repetition of well-known chart patterns and other technical factors are the lifeblood of technical analysis,\u201d explains Rich Kiel, the Global Head of <a href=\"https:\/\/www.financemagnates.com\/tag\/forex\/\" target=\"_blank\" rel=\"follow noopener\" data-v-19e82b9c>FX<\/a> solutions at data analytics specialist <a href=\"https:\/\/www.financemagnates.com\/tag\/kx\/\" target=\"_blank\" rel=\"follow noopener\" data-v-19e82b9c>KX<\/a>.<\/p>\n<h2 data-v-19e82b9c>The Entrance of AI<\/h2>\n<p data-v-19e82b9c>As we have <a href=\"https:\/\/www.financemagnates.com\/cryptocurrency\/crypto-and-ai-contrasts-and-compatibility\/\" target=\"_blank\" rel=\"follow noopener\" data-v-19e82b9c>previously reported<\/a>, ChatGPT (an artificial intelligence chatbot developed by OpenAI) has recently garnered positive coverage. AI technologies such as machine learning have already had a considerable impact in trading data analysis observes Will Carter, the Head of Trading and Analytics at trading solutions developer MahiMarkets.<\/p>\n<figure data-media-id=\"31a47027-da70-45f6-b191-c1cf8c0dccf7\" data-v-19e82b9c>\n<p><img decoding=\"async\" alt=\"Will Carter, Head of Trading and Analytics at MahiMarkets\" src=\"https:\/\/images.financemagnates.com\/images\/Will%20Carter%2C%20Head%20of%20Trading%20and%20Analytics%20at%20MahiMarkets_id_31a47027-da70-45f6-b191-c1cf8c0dccf7_size260.jpg\" aspect-ratio=\"1\" width=\"260\" height=\"260\" loading=\"lazy\"><\/p><figcaption data-v-19e82b9c>\n<p>Will Carter, Head of Trading and Analytics at MahiMarkets<\/p>\n<\/figcaption><\/figure>\n<p data-v-19e82b9c>\u201cTechnical analysis has been around for a long time to assist traders in identifying patterns, but machine learning has been the most significant innovation in data analysis in recent times,\u201d he says.<\/p>\n<p data-v-19e82b9c>\u201cApplying machine learning to data has now become plausible for the sophisticated segment of the retail community.\u201d<\/p>\n<p data-v-19e82b9c>Given that the direction of travel in retail is high-frequency trading and that <span data-ref=\"term-wrapper\" data-v-4a993a20 data-v-19e82b9c><span data-v-4a993a20><span data-v-4a993a20>machine learning<\/span><\/span> <\/span> consumes vast amounts of data, traders first need to ensure they have access to data at high frequencies.<\/p>\n<p data-v-19e82b9c>Affordable access to data is a key consideration for retail traders. Kiel observes that not only is data readily available, but it also comes in all flavors with everything from APIs delivering ultra-low latency real-time information to varied degrees of delayed market data as well as the availability of historical market replay streams and data downloads.<\/p>\n<p data-v-19e82b9c>\u201cEmerging technologies such as cloud computing facilitate the storage of huge data sets at lower cost, making this data available to a wider range of market participants,\u201d he says. \u201cAdditionally, platform operators and technology providers are in an arms race to provide the broadest set of capabilities to remain competitive. Access to market data systematically through retail brokers and platform providers has now become standard.\u201d<\/p>\n<figure data-media-id=\"d88a5c7a-ff43-418e-aff6-84f6559a8399\" data-v-19e82b9c>\n<p><img decoding=\"async\" alt=\"Global FX market\" src=\"https:\/\/images.financemagnates.com\/images\/Global%20FX%20market_id_d88a5c7a-ff43-418e-aff6-84f6559a8399_original.jpg\" aspect-ratio=\"0\" width=\"2000\" loading=\"lazy\"><\/p>\n<\/figure>\n<h2 data-v-19e82b9c>Data Hungry<\/h2>\n<p data-v-19e82b9c> Public sites such as Yahoo Finance offer decimated data buckets\/bars in many assets going back a long way. However, according to Carter, machine learning is very data-hungry, and data at a 100-millisecond granularity level or more is crucial for a research environment.<\/p>\n<p data-v-19e82b9c>\u201cPublic data resources are not currently good enough \u2013 traders need to capture, cleanse and store the data themselves,\u201d he adds.<\/p>\n<p data-v-19e82b9c>While <span data-ref=\"term-wrapper\" data-v-4a993a20 data-v-19e82b9c><span data-v-4a993a20><span data-v-4a993a20>quantitative trading<\/span><\/span> <\/span> based on time series data has long been the domain of FX trade decision-making, many institutional investors have also employed decision trees, including fundamental and even sentimental analysis, to form a more holistic trading strategy now often referred to as quanta mental trading.<\/p>\n<p data-v-19e82b9c><a href=\"https:\/\/www.financemagnates.com\/thought-leadership\/how-fundamental-analysis-differs-from-technical-analysis\/\" target=\"_blank\" rel=\"follow noopener\" data-v-19e82b9c>Fundamental data<\/a>, such as interest rates and commodities prices, is well suited to quantitative prediction of FX movements and is combined with other market data, such as primary market indices and currency rates, to learn and create a forecast for FX, explains Yaron Golgher, the CEO &#038; Co-Founder of I Know First, a developer of AI-based algorithmic forecasting solutions.<\/p>\n<figure data-media-id=\"e5169e7c-0197-4e47-9ad1-a7ea5915c312\" data-v-19e82b9c>\n<p><img decoding=\"async\" alt=\"Yaron Golgher, CEO &#038; Co-Founder of I Know First\" src=\"https:\/\/images.financemagnates.com\/images\/Yaron%20Golgher%2C%20CEO%20%26%20Co-Founder%20of%20I%20Know%20First_id_e5169e7c-0197-4e47-9ad1-a7ea5915c312_size260.jpg\" aspect-ratio=\"1\" width=\"260\" height=\"260\" loading=\"lazy\"><\/p><figcaption data-v-19e82b9c>\n<p>Yaron Golgher, CEO &#038; Co-Founder of I Know First<\/p>\n<\/figcaption><\/figure>\n<p data-v-19e82b9c>\u201cThe AI algorithm generates the forecast signal value,\u201d he adds. \u201cAt each time horizon, we measure the price deviation from what the system considered fair \u2013 that is the signal. A positive signal is up, negative is a down signal.\u201d <\/p>\n<p data-v-19e82b9c>More than 20-time forecast points are used to map the trajectory of the forecast price. These are compressed by averaging into six-time horizons \u2013 three days, seven days, 14 days, one month, three months, and one year.<\/p>\n<p data-v-19e82b9c>For each point, the system generates predictability, reflecting (inversely) the level of unpredictable noise. The higher the predictability, the higher the confidence in the forecast.<\/p>\n<p data-v-19e82b9c>\u201cEach forecast point is a weighted average of tens or even hundreds of independent predictors and each predictor module is comprised of several inputs,\u201d says Golgher. \u201cThus, every module provides an independent forecast because it is based on a different set of market data.\u201d<\/p>\n<p data-v-19e82b9c>To undertake quanta mental analysis effectively requires both computing power and sophistication using traditional big data analysis combined with emerging capabilities such as machine learning.<\/p>\n<p data-v-19e82b9c>\u201cThis isn\u2019t in the domain of most retail traders, but as brokers and investment managers continue to expand the availability of trading algorithms to their clients, <a href=\"https:\/\/www.financemagnates.com\/thought-leadership\/why-fx-algo-execution-is-the-future\/\" target=\"_blank\" rel=\"follow noopener\" data-v-19e82b9c>systematic execution<\/a> based on quanta mental principals will continue to become more prevalent and accessible going forward,\u201d says Kiel.<\/p>\n<p data-v-19e82b9c>Carter agrees that the barrier to entry for traders creating a quanta mental research environment is lower than ever before and that implementation comes down to a number of factors including breadth of research and basic technical skills as well as data access. <\/p>\n<p data-v-19e82b9c>\u201cIt also raises questions about how brokers manage the new alpha-seeking community of retail traders using these sophisticated technologies,\u201d he says, adding that brokers can no longer operate under the assumption that the retail trader will permanently lose and continue to take the opposite of the trade (known as \u2018<a href=\"https:\/\/www.financemagnates.com\/forex\/technology\/to-a-book-or-b-book-the-review-of-the-two-decades\/\" target=\"_blank\" rel=\"follow noopener\" data-v-19e82b9c>B-Book execution<\/a>\u2019).<\/p>\n<p data-v-19e82b9c>\u201cAssuming you have a broker facing a successful quanta mental trader who is consistently extracting alpha, if the broker always B Books that flow the alpha comes from the B book,\u201d concludes Carter. \u201cInstead, it needs to go through a more actively managed portfolio so that the alpha comes from the market.\u201d<\/p>\n<\/div>\n<p><a href=\"https:\/\/www.financemagnates.com\/\/forex\/with-hundreds-of-platforms-around-information-gives-fx-traders-an-edge\/\" class=\"button purchase\" rel=\"nofollow noopener\" target=\"_blank\">Read More<\/a><br \/>\n Paul Golden<\/p>\n","protected":false},"excerpt":{"rendered":"<p>Analytics has recently been in the news from a retail and institutional trader perspective. Tradefeedr launching an FX algo forecasting suite enables retail clients to access accurate and independent data to inform their algo execution strategies better, while institutions are investing heavily in technology to improve their trading process and data analysis.No central sourceSo, how<\/p>\n","protected":false},"author":1,"featured_media":617106,"comment_status":"closed","ping_status":"closed","sticky":false,"template":"","format":"standard","meta":{"footnotes":""},"categories":[967,37766],"tags":[],"class_list":{"0":"post-617105","1":"post","2":"type-post","3":"status-publish","4":"format-standard","5":"has-post-thumbnail","7":"category-hundreds","8":"category-platforms"},"aioseo_notices":[],"_links":{"self":[{"href":"https:\/\/newsycanuse.com\/index.php\/wp-json\/wp\/v2\/posts\/617105","targetHints":{"allow":["GET"]}}],"collection":[{"href":"https:\/\/newsycanuse.com\/index.php\/wp-json\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/newsycanuse.com\/index.php\/wp-json\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/newsycanuse.com\/index.php\/wp-json\/wp\/v2\/users\/1"}],"replies":[{"embeddable":true,"href":"https:\/\/newsycanuse.com\/index.php\/wp-json\/wp\/v2\/comments?post=617105"}],"version-history":[{"count":0,"href":"https:\/\/newsycanuse.com\/index.php\/wp-json\/wp\/v2\/posts\/617105\/revisions"}],"wp:featuredmedia":[{"embeddable":true,"href":"https:\/\/newsycanuse.com\/index.php\/wp-json\/wp\/v2\/media\/617106"}],"wp:attachment":[{"href":"https:\/\/newsycanuse.com\/index.php\/wp-json\/wp\/v2\/media?parent=617105"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/newsycanuse.com\/index.php\/wp-json\/wp\/v2\/categories?post=617105"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/newsycanuse.com\/index.php\/wp-json\/wp\/v2\/tags?post=617105"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}